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Mid-IR cosmological spectrophotometric surveys from space: Measuring AGN and star formation at the cosmic noon with a SPICA-like mission

Published online by Cambridge University Press:  23 April 2021

Luigi Spinoglio*
Affiliation:
Istituto di Astrofisica e Planetologia Spaziali (INAF–IAPS), Via Fosso del Cavaliere 100, Roma I-00133, Italy
Sabrina Mordini
Affiliation:
Istituto di Astrofisica e Planetologia Spaziali (INAF–IAPS), Via Fosso del Cavaliere 100, Roma I-00133, Italy Dipartimento di Fisica, Universitá di Roma La Sapienza, P.le A. Moro 2, Roma I-00185, Italy
Juan Antonio Fernández-Ontiveros
Affiliation:
Istituto di Astrofisica e Planetologia Spaziali (INAF–IAPS), Via Fosso del Cavaliere 100, Roma I-00133, Italy
Almudena Alonso-Herrero
Affiliation:
Centro de Astrobiología (CAB, CSIC-INTA), ESAC Campus, Villanueva de la Cañada, Madrid 28692, Spain
Lee Armus
Affiliation:
Spitzer Science Center, California Institute of Technology, Pasadena, CA 91125, USA
Laura Bisigello
Affiliation:
Osservatorio di Astrofisica e Scienza dello Spazio (INAF–OAS), via Gobetti 93/3, Bologna I-40129, Italy
Francesco Calura
Affiliation:
Osservatorio di Astrofisica e Scienza dello Spazio (INAF–OAS), via Gobetti 93/3, Bologna I-40129, Italy
Francisco J. Carrera
Affiliation:
Instituto de Física de Cantabria (CSIC-Universidad de Cantabria), Santander E-39005, Spain
Asantha Cooray
Affiliation:
Department of Physics and Astronomy, University of California, Irvine, CA 92697, USA
Helmut Dannerbauer
Affiliation:
Instituto de Astrofísica de Canarias (IAC), E-38205 La Laguna, Tenerife, Spain Universidad de La Laguna (ULL), Dept. de Astrofísica, Avd. Astrofísico Fco. Sánchez s/n, La Laguna E–38206, Spain
Roberto Decarli
Affiliation:
Osservatorio di Astrofisica e Scienza dello Spazio (INAF–OAS), via Gobetti 93/3, Bologna I-40129, Italy
Eiichi Egami
Affiliation:
Steward Observatory, University of Arizona, 933 North Cherry Avenue, Tucson, AZ 85721, USA
David Elbaz
Affiliation:
Laboratoire AIM-Paris-Saclay, CEA/DRF/Irfu, CNRS, Université Paris Diderot, CEA-Saclay, Gif-sur-Yvette F-91191, France
Alberto Franceschini
Affiliation:
Dipartimento di Fisica e Astronomia, Universitá di Padova, vicolo dell’Osservatorio 3, Padova I-35122, Italy
Eduardo González Alfonso
Affiliation:
Universidad de Alcalá, Departamento de Fśica y Matemáticas, Campus Universitario, Alcalá de Henares, Madrid 28871, Spain
Luca Graziani
Affiliation:
Dipartimento di Fisica, Universitá di Roma La Sapienza, P.le A. Moro 2, Roma I-00185, Italy
Carlotta Gruppioni
Affiliation:
Osservatorio di Astrofisica e Scienza dello Spazio (INAF–OAS), via Gobetti 93/3, Bologna I-40129, Italy
Evanthia Hatziminaoglou
Affiliation:
European Southern Observatory, Karl-Schwarzschild-Strasse 2, Garching, Germany
Hidehiro Kaneda
Affiliation:
Graduate School of Science, Nagoya University, Furo-cho, Chikusa-ku, Nagoya 464-8602, Japan
Kotaro Kohno
Affiliation:
Institute of Astronomy, Graduate School of Science, The University of Tokyo, 2-21-1 Osawa, Mitaka, Tokyo 181-0015, Japan
Álvaro Labiano
Affiliation:
Centro de Astrobiología (CAB, CSIC-INTA), ESAC Campus, Villanueva de la Cañada, Madrid 28692, Spain
Georgios Magdis
Affiliation:
Dark Cosmology Centre, Niels Bohr Institute, University of Copenhagen, Juliane Mariesvej 30, Copenhagen 2100, Denmark
Matthew A. Malkan
Affiliation:
Department of Physics and Astronomy, UCLA, 430 Portola Plaza, Los Angeles, CA 90095, USA
Hideo Matsuhara
Affiliation:
Institute of Space and Astronautical Science, Japan Aerospace Exploration Agency (JAXA), Sagamihara, Kanagawa 252-5210, Japan
Tohru Nagao
Affiliation:
Research Center for Space and Cosmic Evolution, Ehime University, Matsuyama 790-8577, Japan
David Naylor
Affiliation:
Department of Physics & Astronomy, Institute for Space Imaging Science, University of Lethbridge, Lethbridge, Alberta T1K 3M4, Canada
Miguel Pereira-Santaella
Affiliation:
Centro de Astrobiología (CSIC-INTA), Ctra. de Ajalvir, Km 4, Torrejón de Ardoz, Madrid 28850, Spain
Francesca Pozzi
Affiliation:
Osservatorio di Astrofisica e Scienza dello Spazio (INAF–OAS), via Gobetti 93/3, Bologna I-40129, Italy Dipartimento di Fisica e Astronomia, Universitá degli Studi di Bologna, Via P. Gobetti 93/2, Bologna I-40129, Italy
Giulia Rodighiero
Affiliation:
Dipartimento di Fisica e Astronomia, Universitá di Padova, vicolo dell’Osservatorio 3, Padova I-35122, Italy
Peter Roelfsema
Affiliation:
SRON Netherlands Institute for Space Research, Verlengde Hereweg 140A, Groningen 9722 AK, Netherlands University of Groningen, Kapteyn Astronomical Inst., PO Box 800, Landleven 12, Groningen 9700 AV, Netherlands
Stephen Serjeant
Affiliation:
School of Physical Sciences, The Open University, Walton Hall, Milton Keynes MK7 6AA, UK
Cristian Vignali
Affiliation:
Osservatorio di Astrofisica e Scienza dello Spazio (INAF–OAS), via Gobetti 93/3, Bologna I-40129, Italy Dipartimento di Fisica e Astronomia, Universitá degli Studi di Bologna, Via P. Gobetti 93/2, Bologna I-40129, Italy
Lingyu Wang
Affiliation:
SRON Netherlands Institute for Space Research, Verlengde Hereweg 140A, Groningen 9722 AK, Netherlands
Toru Yamada
Affiliation:
Institute of Space and Astronautical Science, Japan Aerospace Exploration Agency (JAXA), Sagamihara, Kanagawa 252-5210, Japan Astronomical Institute, Tohoku University, 6-3 Aramaki, Aoba-ku, Sendai, Miyagi 980-8578, Japan
*
Author for correspondence: Luigi Spinoglio, E-mail: luigi.spinoglio@inaf.it
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Abstract

We use the SPace Infrared telescope for Cosmology and Astrophysics (SPICA) project as a template to demonstrate how deep spectrophotometric surveys covering large cosmological volumes over extended fields (1– $15\, \rm{deg^2}$ ) with a mid-IR imaging spectrometer (17– $36\, \rm{\rm{\upmu m}}$ ) in conjunction with deep $70\, \rm{\rm{\upmu m}}$ photometry with a far-IR camera, at wavelengths which are not affected by dust extinction can answer the most crucial questions in current galaxy evolution studies. A SPICA-like mission will be able for the first time to provide an unobscured three-dimensional (3D, i.e. x, y, and redshift z) view of galaxy evolution back to an age of the universe of less than $\sim$ 2 Gyrs, in the mid-IR rest frame. This survey strategy will produce a full census of the Star Formation Rate (SFR) in the universe, using polycyclic aromatic hydrocarbons (PAH) bands and fine-structure ionic lines, reaching the characteristic knee of the galaxy luminosity function, where the bulk of the population is distributed, at any redshift up to $z \sim 3.5$ . Deep follow-up pointed spectroscopic observations with grating spectrometers onboard the satellite, across the full IR spectral range (17– $210\, \rm{\rm{\upmu m}}$ ), would simultaneously measure Black Hole Accretion Rate (BHAR), from high-ionisation fine-structure lines, and SFR, from PAH and low- to mid-ionisation lines in thousands of galaxies from solar to low metallicities, down to the knee of their luminosity functions. The analysis of the resulting atlas of IR spectra will reveal the physical processes at play in evolving galaxies across cosmic time, especially its heavily dust-embedded phase during the activity peak at the cosmic noon ( $z \sim 1$ –3), through IR emission lines and features that are insensitive to the dust obscuration.

Type
Research Article
Copyright
© The Author(s), 2021. Published by Cambridge University Press on behalf of the Astronomical Society of Australia

Preface

The articles of this special issue focus on some of the major scientific questions that a future IR observatory will be able to address. We adopt the SPace Infrared telescope for Cosmology and Astrophysics (SPICA) design as a baseline to demonstrate how to achieve the major scientific goals in the fields of galaxy evolution, Galactic star formation and protoplanetary disks formation and evolution. The studies developed for the SPICA mission serve as a reference for future work in the field, even though the mission proposal has been cancelled by ESA from its M5 competition.

The mission concept of SPICA employs a 2.5 m telescope, actively cooled to below $\sim$ 8 K, and a suite of mid- to far-IR spectrometers and photometric cameras, equipped with state-of-the-art detectors (Roelfsema et al. Reference Roelfsema2018). In particular, the SPICA Far-Infrared Instrument (SAFARI) is a grating spectrograph with low (R $\sim200$ –300) and medium(R $\sim3\,000$ $11\,000$ )-resolution observing modes instantaneously covering the 35– $210\, \rm{\rm{\upmu m}}$ wavelength range. The SPICA Mid-Infrared Instrument (SMI) has three operating modes: a large field of view ( $10' \times 12'$ ) low-resolution 17– $36\, \rm{\rm{\upmu m}}$ imaging spectroscopic (R $\sim50$ –120) mode and photometric camera at $34\, \rm{\rm{\upmu m}}$ (SMI-LR), a medium-resolution (R $\sim1\,300$ $2\,300$ ) grating spectrometer covering wavelengths of 18– $36\, \rm{\rm{\upmu m}}$ (SMI-MR), and a high-resolution echelle module (R $\sim29\,000$ ) for the 10– $18\, \rm{\rm{\upmu m}}$ domain (SMI-HR). Finally, B-BOP, a large field of view ( $2'.6 \times 2'.6$ ), three-channel, (70, 200 and $350\, \rm{\rm{\upmu m}}$ ) polarimetric camera complements the science payload.

1. Introduction

In the context of current standard, cosmological models (e.g. $\Lambda$ CDM) the evolution of the large-scale structure in the universe is governed by dark matter, which forms a cosmic network of filaments that connect gravitationally bound regions, known as dark matter halos (e.g. White & Rees Reference White and Rees1978; Bond, Kofman, & Pogosyan Reference Bond, Kofman and Pogosyan1996). The gas density follows, under the effect of gravity, the filamentary large-scale structure (filaments contain $\gtrsim 60\%$ of the gas mass at $z \sim 3$ ; Vogelsberger et al. Reference Vogelsberger2014; Umehata et al. Reference Umehata2019), while baryonic physics regulate the formation and growth of both supermassive black holes (SMBHs) and galaxies inside the halos of this cosmic web (Springel et al. Reference Springel2005; Somerville & Davé Reference Somerville and Davé2015). The overall efficiency to produce stars from the available baryonic matter is very low and depends strongly on the mass of the halo, reaching a maximum value of 20–30% for halos of $\sim10^{12}\, \rm{M_\odot}$ , typical of Milky Way-like galaxies, with a significant drop towards lower- and higher mass galaxies (Behroozi et al. Reference Behroozi, Wechsler, Hearin and Conroy2019; Wechsler & Tinker Reference Wechsler and Tinker2018). Thus, the morphology and characteristics of galaxies are tightly linked to the environment where they formed (Blanton & Berlind Reference Blanton and Berlind2007). In the present-day universe, massive ellipticals reside preferentially in the innermost parts of galaxy clusters, whereas star-forming galaxies are preferentially found in the clusters outskirts or in the field. This diversity arises from the different formation histories of low and high mass galaxies.

The extensive photometric surveys in the X-rays, UV, optical, and IR ranges performed over the last two decades have shown a common evolution of the two main energetic processes inside galaxies, i.e. star formation (SF) and black hole accretion (BHA), with a peak between $z\sim1$ and $z\sim3$ , in an epoch known as the ‘Cosmic Noon’ (Madau & Dickinson Reference Madau and Dickinson2014; Heckman & Best Reference Heckman and Best2014). By the end of this epoch, massive elliptical galaxies and the bulges of Milky Way-like progenitors were already in place (Pérez-González et al. Reference Pérez-González2008), while the global SF and BHA activity started a steep decline towards the present time. The bulk of galaxies at any epoch show a correlation between their stellar mass and star formation rate. This relation, evolving with redshift, is called ‘main sequence’ (Noeske et al. Reference Noeske2007; Daddi et al. Reference Daddi2007; Elbaz et al. Reference Elbaz2007; Rodighiero et al. Reference Rodighiero2011), which is abandoned by massive galaxies in less than $\sim1\, \rm{Gyr}$ , reducing their SFR by a factor of 10 to become members of the ‘red and dead’ sequence. In this scenario, energetic feedback from massive stars though stellar winds and supernovae (SNe), and active galactic nuclei (AGN) are required to quench the SF and explain the low efficiency of transforming baryons into stars (Behroozi et al. Reference Behroozi, Wechsler, Hearin and Conroy2019). In particular, current simulations require a strong contribution of feedback from accreting BHs to reconcile the galaxy mass function with that of dark matter halos (Silk & Mamon Reference Silk and Mamon2012), and to explain the local scaling relations between the BH masses and host galaxy properties (Kormendy & Ho Reference Kormendy and Ho2013). This feedback is mainly ascribed to quasar outflows and jets in AGN, however, robust observational evidence probing such scenario at high-z is still missing.

A complete study of galaxy evolution that includes the history of massive galaxies has to account for the environment where they originated and thus has to incorporate the large-scale structure, which requires the mapping of large cosmological volumes. This requires deep spectroscopic surveys to locate in space and in time the presence of star-forming galaxies and AGN and to assess their activity. During the peak epoch of SF in galaxies, the UV and optical light is absorbed by dust grains and re-emitted in the IR and therefore nearly 90% of the energy emitted by young stars emerges in the infrared (e.g. Madau & Dickinson Reference Madau and Dickinson2014, and references therein). Observation of the UV rest-frame continuum associated with young massive stars ( $1\,400$ $1\,700$ Å), in spite of being one of the most popular methods to measure the SFR density (Lilly et al. Reference Lilly, Tresse, Hammer, Crampton and Le Fevre1995; Madau et al. Reference Madau, Ferguson, Dickinson, Giavalisco, Steidel and Fruchter1996; Cucciati et al. Reference Cucciati2012; Bouwens et al. Reference Bouwens2015), is highly unreliable in obscured environments such as those at the cosmic noon. Therefore, rest-frame ultraviolet (UV) and optical observations cannot access these crucial dust-obscured regions where these massive stars form. Alternative methods based on massive star tracers such as gamma-ray bursts (GRBs; e.g. Greiner et al. Reference Greiner2015) show a strong bias towards sub-solar metallicity low-mass galaxies at redshift $z<1$ ( $Z \lesssim 0.5\,{\rm Z}_{\odot}$ and $M_{\star} < 10^{10}\, \rm{M_\odot}$ ; Vergani et al. Reference Vergani2015) and miss the dust obscured fraction of the starburst population at redshift $z > 2$ (Gatkine, Vogel, & Veilleux Reference Gatkine, Vogel and Veilleux2020). Similarly, the derivation of the black hole accretion rate (BHAR) in galaxies from X-ray observations is affected by large uncertainties, due to the large bolometric corrections (factors of tens to hundreds) and the large dispersion in their determinations, required to derive the accretion luminosity from the observed X-ray luminosity (e.g. Vasudevan & Fabian Reference Vasudevan and Fabian2009; Lusso et al. Reference Lusso2012; Ueda et al. Reference Ueda, Akiyama, Hasinger, Miyaji and Watson2014; Duras et al. Reference Duras2020). Moreover, even hard-X-rays surveys, which directly probe the hot gas around the accreting BHs, have limitations in sensitivity that often miss faint, Compton-thick AGN, whose population constitutes $\sim40\%$ of the AGNs in the local universe, or underestimating their luminosities (Georgantopoulos & Akylas Reference Georgantopoulos and Akylas2019; Lambrides et al. Reference Lambrides, Chiaberge, Heckman, Gilli, Vito and Norman2020).

An alternative determination of the SFR and BHAR densities that does not suffer from the above-cited limitations was derived from the mid- to far-IR photometric observations of Spitzer (Werner et al. Reference Werner2004) and Herschel (Pilbratt et al. Reference Pilbratt2010) of deep cosmological fields (Schreiber et al. Reference Schreiber2015; Delvecchio et al. Reference Delvecchio2014), based on the bolometric luminosities of galaxies (Le Floc’h et al. Reference Le Floc’h2005, Gruppioni et al. Reference Gruppioni2013). However, infrared photometric surveys are not immune to limitations or assumptions about the intrinsic spectra, since the measured light is usually reprocessed emission from dust heated by a central power source. Indeed, Spitzer- and Herschel-based studies have been successful in estimating number counts and galaxy luminosity functions (LF) (Le Floc’h et al. Reference Le Floc’h2005; Pérez-González et al. Reference Pérez-González2005; Rodighiero et al. Reference Rodighiero2010a; Oliver et al. Reference Oliver2012; Gruppioni et al. Reference Gruppioni2013; Magnelli et al. Reference Magnelli2013; Reference LapiLapi et al. 2011), but only through statistical techniques applied to the bulk of the galaxy population as a function of redshift. Here, we refer to the assumptions that are necessarily made to derive from the observed number counts at some specific wavelength (e.g. 24 $\upmu$ m for Spitzer, 100 and 160 $\upmu$ m for Herschel) to give two examples a well-defined luminosity. This in turn is determined by the assumed spectral energy distribution of galaxies and the measure of the galaxy redshift. The luminosities associated to a galaxy population are then used to build up the luminosity functions, well defined only for complete statistical samples, and therefore the LFs still suffer quite significant uncertainties.

Only wide-area spectroscopic surveys, immune to dust, are the key to advancing the field. The mid- to far-IR spectral range contains a great variety of ionic, atomic, molecular lines, as well as continuum features that can be used as spectral diagnostic tools in dust-obscured environments (Spinoglio & Malkan Reference Spinoglio and Malkan1992; Armus et al. Reference Armus2007; Nardini et al. Reference Nardini, Risaliti, Watabe, Salvati and Sani2010; Imanishi et al. Reference Imanishi, Ichikawa, Takeuchi, Kawakatu, Oi and Imase2011). In particular, the mid- to far-IR ionic fine-structure lines, besides being significantly less affected by extinction than UV, optical or near-IR lines, are characterised by having their emissivities only weakly dependent on the electron temperature, making them very good tracers of the gas phase physical conditions. This is a consequence of the atomic level energies involved in the IR fine-structure transitions, which are much closer to the ground state with respect to optical and UV transitions. For instance, the emissivity of IR lines such as [Ne $\;$ ii] $\,{\rm 12.8 \,\upmu m}$ , [Ne $\;$ iii] ${\rm 15.6\, \upmu m}$ , [O $\;$ iii] ${\rm 52,88\,\upmu m}$ , [O $\;$ iv] ${\rm 25.9\, \upmu m}$ , or [N $\;$ ii] ${\rm 122,205\, \upmu m}$ changes at most by a factor $\lesssim 2.7$ in the $3\,000 < T_{\rm e} < 50\,000\, \rm{K}$ and $10 < n_{\rm e} < 1\,000\, \rm{cm^{-3}}$ ranges, where $T_{\rm e}$ and $n_{\rm e}$ are the electron temperature and density (based on pyneb estimates; Luridiana, Morisset, & Shaw Reference Luridiana, Morisset and Shaw2015), while the intensities of optical transitions such as [N $\;$ ii] ${\rm \lambda \lambda\, 6\,548,6\,584}$ or [O $\;$ iii] ${\rm \lambda \lambda\, 4\,959,5\,007}$ show variations of a factor 270 and 2 800, respectively, that is 100– $1\,000$ times larger for the same temperature and density ranges. The strong dependence of the optical emissivities with the temperature becomes a major source of uncertainties when the nebula shows temperature stratification or inhomogeneties that are not spatially resolved (e.g. Vermeij & van der Hulst Reference Vermeij and van der Hulst2002; Dors et al. Reference Dors2013), which is typically the case in galaxies observed at high-z.

Using IR spectroscopy of these lines, we can therefore physically separate the processes due to stellar formation and evolution from those due to AGN accretion, because of the different energies involved in line ionisation and excitation processes (Ho & Keto Reference Ho and Keto2007; Tommasin et al. Reference Tommasin, Spinoglio, Malkan and Fazio2010; Zhuang, Ho, & Shangguan Reference Zhuang, Ho and Shangguan2019; Xie & Ho Reference Xie and Ho2019 for SFR and Rigby, Diamond-Stanic, & Aniano Reference Rigby, Diamond-Stanic and Aniano2009; Tommasin et al. Reference Tommasin, Spinoglio, Malkan and Fazio2010; Diamond-Stanic & Rieke Reference Diamond-Stanic and Rieke2012 for BHAR). An IR spectroscopic investigation will lead to a complete census of SF and obscured BHA in galaxies from low-mass/low-metallicity galaxies to heavily obscured high-mass starburst galaxies. This will establish a new reference point for cosmological models providing access to obscured star formation, i.e. the most fundamental key for galaxy formation theories. Indeed, the rest-frame mid- to far-IR spectrum of each observed galaxy will allow us to measure directly redshifts, SFRs, BHARs, metallicities, and physical properties of gas and dust in galaxies, thus changing our current knowledge of galaxy evolution and, in particular, metallicity evolution, which could be heavily biased from the available observations of only the UV and visible lines, as well as optical and UV photometry.

A description of the power of rest-frame mid-IR spectroscopy for galaxy evolution studies with the SPICA project can be found in Spinoglio et al. (Reference Spinoglio2017), while a study of the SPICA mid-IR photometric surveys can be found in Gruppioni et al. (Reference Gruppioni2017). In this paper, we present the assessment of the mid-IR cosmological spectrophotometric surveys that has been prepared for the SPICA mission. Because the SPICA proposal has been cancelled by ESA from the Cosmic Vision 2015–2025 M5 competition, we consider in this article the SPICA mission as a template case that in the future could be accomplished by a new IR observatory project, such as the Origins Space Telescope (OST), currently under study by NASA (Meixner et al. Reference Meixner2019). In this paper, we follow-up on the work presented in Kaneda et al. (Reference Kaneda2017) and Gruppioni et al. (Reference Gruppioni2017), which describe deep and ultra-deep SPICA spectrophotometric and photometric surveys, respectively, with the SPICA Mid-IR Instrument SMI (Kaneda et al. Reference Kaneda2016). These papers are focused on the detection of the mid-IR features from the polycyclic aromatic hydrocarbons (PAHs) in SF galaxies and on the rest-frame mid-IR continuum in AGN, respectively. Besides the bright PAH features, here we also consider the detection of the mid-IR rest-frame ionic fine-structure lines in both solar and low-metallicity SF-dominated galaxies and AGN, adopting the same two surveys approach presented in Kaneda et al. (Reference Kaneda2017). Moreover, we assess the feasibility of pointed observations with SMI ( $17 < \lambda < 37\, \rm{\rm{\upmu m}}$ ) using the medium-resolution mode (R $\sim\,1\,300$ $2\,300$ ) and SAFARI at longer wavelengths ( $35 < \lambda < 210\, \rm{\rm{\upmu m}}$ ) in the low-resolution mode. We also include in this paper a new calibration for both the PAH features and the ionic fine-structure lines to the total IR luminosity, which is derived from observations of samples of active, starburst and dwarf low-metallicity galaxies in the local universe.

Throughout this paper, we adopt the following cosmological parameters: $H_{0} = 67.8\, \rm{km\,s^{-1}\,Mpc^{-1}}$ , $\Omega_{M} = 0.3$ , and $\Omega_{\Lambda} = 0.7$ (Planck Collaboration et al. Reference Planck2016).

2. SPICA cosmological surveys

Through its SMI spectrophotometric surveys, SPICA would have uniquely supplied for the first time a full census of the hidden SF and BHA over 90% of cosmic time in all environments from voids to cluster cores. In order to reach this goal, the SPICA observing strategy of cosmological fields would have adopted the following sequence of observations and sample definition:

  1. 1. Deep and ultra-deep spectrophotometric surveys with SMI at wavelengths of 17–36 $\upmu$ m and photometric surveys with the SPICA B-BOP photopolarimetric camera (André et al. Reference André2019) at $\lambda=70$ $\upmu$ m, over large cosmological volumes of 1 and 15 deg $^2$ , respectively.

  2. 2. Definition of a sample of galaxies based on the outcome of the above surveys. From the detected spectral features and lines in the low-resolution SMI spectra, we would have been able to measure the redshifts and SFRs for tens to hundreds thousand galaxies (see Kaneda et al. Reference Kaneda2017) at the cosmic noon. Thanks to the coming extragalactic surveys, the new ancillary multi-frequency data at shorter (near-IR), and longer (submillimetre and millimetre) wavelengths would be used to fully characterise them in terms of stellar and dust masses and bolometric luminosities.

  3. 3. Pointed spectroscopic follow-up observations with SAFARI and SMI at medium- to high spectral resolution ( $R\sim 300$ $11\,000$ ) of thousands of galaxies, drawn from the sample defined above, would allow a complete characterisation of the physical processes driving the evolution of these galaxies.

In this paper, we describe the SPICA observing strategy by: (1) assessing the potential of the low-resolution spectroscopic SMI surveys with the predicted detections of solar and low-metallicity SF and AGN in galaxies (see Sections 3.1 and 3.2); (2) outlining how a sample, suitable to study galaxy evolution at its cosmic noon, can be defined (see Section 3.3) and (3) assessing how the SAFARI and SMI follow-up pointed observations (see Section 3.4) would be able to measure SFR and BHAR of galaxies of lower luminosities, reaching the knee of the luminosity and mass functions, at various redshifts. Reaching the knee of the luminosity function includes 50% or more of the total IR light of galaxies up to a redshift of z = 2.5 and slightly less above (at z=3: 48% and at z=4: 46%), while going to $+1\, \rm{dex}$ above the knee means losing 55–60% of the light and, conversely, going $-1\, \rm{dex}$ fainter would add 60–70% of the remaining total luminosity. Because the SFR is proportional to the total IR luminosity, these numbers can also be applied to the SFR fractions. For what concerns the mass function, if we limit the study to the Main Sequence (MS) galaxies, the same proportions will be maintained.

In order to proceed with the above assessment, first of all, we have revised, by recomputing them with the available observations in the local universe, the calibrations, with respect to their total IR luminosities, of a number of mid-IR fine-structure emission lines as well as a few bright PAH spectral features (see Section 2.1).

Then, we have used the photometric IR catalogue which includes the deepest Herschel observations of galaxies, the Herschel Extragalactic Legacy Project (HELP; Vaccari Reference Vaccari2016; Małek et al. Reference Małek, Buat, Burgarella, Roehlly, Shirley and Team2020; Shirley et al. Reference Shirley2019) as input catalog to count how many galaxies, which have been detected photometrically with Herschel, would be detected spectroscopically with the SMI deep and ultra-deep spectrophotometric surveys (see Section 2.2), using the calibrations of Section 2.1.

Finally, we have made predictions of the expected number of galaxies that SPICA would be able to detect with the SMI spectrophotometric surveys at different redshifts from the IR luminosity functions derived from the Herschel far-IR surveys (see Section 2.3), using again the line calibrations presented in Section 2.1.

2.1. Calibrations of the IR lines to the total IR luminosities

Following the calibration of the IR lines presented in Spinoglio et al. (Reference Spinoglio, Dasyra, Franceschini, Gruppioni, Valiante and Isaak2012, Reference Spinoglio, Dasyra, Franceschini, Gruppioni, Valiante and Isaak2014), we have chosen the fine-structure lines discussed in this paper, but limited to the rest-frame spectral range from 10 to $35\, \rm{\rm{\upmu m}}$ , and added to these the [Ne $\;$ vi] line at $7.7\, \rm{\rm{\upmu m}}$ . We limited to this particular spectral range because it is the most suitable to study the behaviour of galaxies at the cosmic noon, i.e. at redshift of $z = 1$ –3, and it is the best range where we can easily discriminate the different ionising continua from AGN and SF galaxies, from solar to sub-solar metallicities, and thus quantify the proportions of each emission line produced by each mechanism (see, e.g. the case of NGC 1068 in Spinoglio et al. Reference Spinoglio, Malkan, Smith, González-Alfonso and Fischer2005).

We include a new calibration for low-metallicity galaxies based on the Herschel Dwarf Galaxies Sample (DGS) catalogue (Madden et al. Reference Madden2013; Cormier et al. Reference Cormier2015), which includes galaxies with the largest range in metallicities achievable in the local universe ( $\sim$ 7 $\lesssim$ 12 + log O/H $\lesssim$ 8.5) to extend the parameter space including sub-solar metallicities. This is motivated by the detection of massive galaxies ( ${\sim}10^{10}\, \rm{M_\odot}$ ) in optical surveys with sub-solar metallicities during the cosmic noon, which apparently experience a fast chemical evolution above $z \gtrsim 2$ (Maiolino et al. Reference Maiolino2008; Mannucci et al. Reference Mannucci2009; Troncoso et al. Reference Troncoso2014; Onodera et al. Reference Onodera2016; Sanders et al. Reference Sanders2020a). These changes are expected to have an impact on the ISM structure of high-z galaxies, favouring stronger radiation fields (e.g. Steidel et al. Reference Steidel, Strom, Pettini, Rudie, Reddy and Trainor2016; Kashino et al. Reference Kashino2019; Sanders et al. Reference Sanders2020b) and a more porous medium similar to that observed in dwarf galaxies (Cormier et al. Reference Cormier2019).

A more general analysis of a revised calibration of all brightest fine-structure lines will be presented in a specific paper (Mordini Spinoglio & Fernàndez-Ontiveros, 2021, submitted to Astronomy & Astrophysics). In this work, which specifically addresses the observing feasibility with the SPICA spectrometers, we considered the fine-structure lines, in order of wavelength: [Ne $\;$ vi] at $7.7\, \rm{\rm{\upmu m}}$ , [S $\;$ iv] at $10.51\, \rm{\rm{\upmu m}}$ , [Ne $\;$ ii] at $12.81\, \rm{\rm{\upmu m}}$ , [Ne $\;$ v] at $14.32\, \rm{\rm{\upmu m}}$ , [Ne $\;$ iii] at $15.56\, \rm{\rm{\upmu m}}$ , [S $\;$ iii] at $18.71\, \rm{\rm{\upmu m}}$ , [Ne $\;$ v] $24.32\, \rm{\rm{\upmu m}}$ , [O $\;$ iv] at $25.89\, \rm{\rm{\upmu m}}$ , [S $\;$ iii] at $33.48\, \rm{\rm{\upmu m}}$ , [Si $\;$ ii] at $34.81\, \rm{\rm{\upmu m}}$ . For an early discussion of the power of the IR fine-structure lines to trace AGN and star-forming galaxies, we refer to the work of Spinoglio & Malkan (Reference Spinoglio and Malkan1992).

Moreover, we included five PAH (Puget & Leger Reference Puget and Leger1989) spectral features (at $6.2$ , $7.7$ , $8.6$ , $11.25$ , and $17\, \rm{\rm{\upmu m}}$ ) which are sensitive tracers of the star formation rate (Wu et al. Reference Wu, Cao, Hao, Liu, Wang, Xia, Deng and Young2005; Brandl et al. Reference Brandl2006; Smith et al. Reference Smith2007). These latter features are attributed to C-C stretching and C-H bending modes and are very luminous and very broad, with extended Lorentzian wings, as well as matching the spectral resolution of the SMI-LR ( $R \sim 50$ –120) spectrometer, thus allowing the detection of very faint distant galaxies, their classification, and measure of the redshift. Moreover, PAHs are characteristic of photodissociation regions (PDRs; Lutz et al. Reference Lutz2008; Shipley et al. Reference Shipley, Papovich, Rieke, Brown and Moustakas2016). Recent detailed models of PAH emission by Draine et al. (Reference Draine, Li, Hensley, Hunt, Sandstrom and Smith2020) explored the sensitivity of PAH emission spectra to the illuminating starlight, ranging from the bright far-UV starburst spectra to the red spectra of evolved stellar populations to the PAH size distribution, and to the PAH charge distribution. These studies will be essential for the correct interpretation of the future observations at high redshift. We notice here that PDRs by themselves are an important probe of the gas in galaxies, because all neutral atomic hydrogen gas and a large fraction of the molecular gas in the Milky Way and in external galaxies lie in these regions, which are the origin of most of the nonstellar infrared and the millimetre CO emission from a galaxy (Hollenbach & Tielens Reference Hollenbach and Tielens1997). The PAH features in star-forming galaxies also correlate with CO emission, so they can be used also as molecular gas tracers (Cortzen et al. Reference Cortzen2019). Furthermore, McKinney et al. (Reference McKinney, Pope, Armus, Chary, Díaz-Santos, Dickinson and Kirkpatrick2020) showed that the study of star formation at high redshift could benefit from the use of multiple tracers, such as the combination of the mid-IR PAH features, tracing photoelectric heating in PDR regions, and [CII]158 $\upmu$ m emission, a major ISM coolant, which can be detected with ALMA at redshift above $z\sim$ 1.2. Moreover, Kirkpatrick et al. (Reference Kirkpatrick2017) studied how to identify star-forming galaxies, AGN, and composite AGN+SF galaxies through JWST-MIRI colour selection techniques at z $\sim$ 1−2, covering the 6.2 and 7.7 $\upmu$ m PAH features and the 3–5 $\upmu$ m stellar minimum, which are robust tracers of star formation. They also show that the 7.7 $\upmu$ m feature needs to be corrected for AGN contamination, before converting to an SFR. We show in Figure 1 the average spectra, where the most relevant IR lines and features are indicated, of different galaxies types, from AGN to Starburst galaxies, showing a sequence of decreasing nuclear non-thermal activity (Tommasin et al. Reference Tommasin, Spinoglio, Malkan and Fazio2010).

Figure 1. Mid-IR rest-frame spectra of different galaxy types, in a sequence from high to zero nuclear activity from the AGN, from type 1 Seyfert galaxies, through Hidden Broad Line Region Galaxies (HBLR), AGN type 2, weak active galaxies (non Sy) to starburst galaxies as observed in the local universe from the Spitzer IRS high-resolution (R $\sim$ 600) spectrometer. The black line shows the average spectrum of the starburst galaxies (Bernard-Salas et al. Reference Bernard-Salas2009), showing the strong PAH features. The figure has been adapted from Tommasin et al. (Reference Tommasin, Spinoglio, Malkan and Fazio2010) and the positions of the brightest fine-structure lines (divided in low-, medium- and high-excitation) and features are indicated.

The calibration of the different IR fine-structure lines and features has been computed using mid-IR spectroscopic observations, mainly from the Infrared Spectrograph (IRS) (Houck et al. Reference Houck2004) onboard Spitzer, but also from the Infrared Space Observatory (ISO; Kessler et al. Reference Kessler1996) Short Wavelength Spectrometer (SWS; de Graauw et al. Reference de Graauw1996).

In particular, for SF galaxies, we have selected both the sample of ‘classical starburst galaxies’ observed by Brandl et al. (Reference Brandl2006) and Bernard-Salas et al. (Reference Bernard-Salas2009) from which we have used the PAH spectral features and the fine-structure lines, respectively, and the sample of star-forming galaxies contained in Goulding & Alexander (Reference Goulding and Alexander2009), which is based on the 60 $\upmu$ m Galaxy Sample (Sanders et al. Reference Sanders, Mazzarella, Kim, Surace and Soifer2003), limited to distances below 15 Mpc for the fine-structure lines. For AGN, we considered the complete 12 $\upmu$ m selected active galaxies sample (Rush, Malkan, & Spinoglio Reference Rush, Malkan and Spinoglio1993), which is the brightest sample of Seyfert galaxies in the local universe and was systematically observed by the Spitzer IRS spectrometer at low spectral resolution from Gallimore et al. (Reference Gallimore2010) from which we derived the PAH emission fluxes and at high spectral resolution from Tommasin et al. (Reference Tommasin, Spinoglio, Malkan, Smith and González-Alfonso2008, Reference Tommasin, Spinoglio, Malkan and Fazio2010) from which we have taken the fluxes of the fine-structure lines. Data from Sturm et al. (Reference Sturm, Lutz, Verma, Netzer, Sternberg, Moorwood, Oliva and Genzel2002) were considered only for the [Ne $\;$ vi] line at $7.65\, \rm{\rm{\upmu m}}$ . Lastly, to compute the calibrations of the fine-structure lines in low-metallicity galaxies, we have used the data from the DGS (Madden et al. Reference Madden2013), which have been published in Cormier et al. (Reference Cormier2015). The total IR luminosities ( $L_{8-1\,000\,\upmu {\rm m}}$ ) of the selected galaxies have been taken from the cited papers. For the objects without a given luminosity, we calculated $L_{IR}$ using the IRAS point source catalog fluxes (Neugebauer et al. Reference Neugebauer1984) and the formula by Sanders & Mirabel (Reference Sanders and Mirabel1996).

We have derived a linear correlation between the logarithms of the total IR luminosity of the galaxies and the luminosity of the lines using the least square method, adopting the following equation:

(1) \begin{equation}\log(L_{\rm line}) = (a \pm \delta a)\log(L_{IR}) + (b \pm \delta b).\end{equation}

In the following relations, the luminosities are expressed in units of $10^{41}\, \rm{erg\,s^{-1}}$ . We report the best-fit parameters for the revised line calibrations in Table 2, where for each linear relation, we give the number of objects N used to calculate the linear regression, and the regression coefficient r.

Table 1. SMI/B-BOP Spectrophotometric surveys parameters

Table 2. New calibration obtained for fine-structure lines and PAH features as a function of $L_{IR}$

Notes: For each class of objects, we reported the slope (a) and intercept (b) of the linear correlation with relative errors, the number of data from which the linear correlation was calculated (N), and the Pearson's correlation coefficient (r). Galaxies from Gallimore et al. (Reference Gallimore2010) are type 1 AGN (including those with hidden broad lines), in order to avoid the stronger star-formation activity in type 2 AGN contributing to the PAH emission. From Tommasin et al. (Reference Tommasin, Spinoglio, Malkan, Smith and González-Alfonso2008, Reference Tommasin, Spinoglio, Malkan and Fazio2010), we used galaxies dominated by the AGN component 90, as reported in these works. From Bernard-Salas et al. (2009) and Goulding & Alexander (2009) we adopted all star-forming galaxies without high-excitation emission lines from [Ne v]14.3,24.3 ${}_{\upmu\,m}$ which is indicative of AGN activity. References: (1) Gallimore et al. (Reference Gallimore2010), (2) Brandl et al. (Reference Brandl2006), (3) Sturm et al. (Reference Sturm, Lutz, Verma, Netzer, Sternberg, Moorwood, Oliva and Genzel2002), (4) Tommasin et al. (Reference Tommasin, Spinoglio, Malkan, Smith and González-Alfonso2008), (5) Tommasin et al. (Reference Tommasin, Spinoglio, Malkan and Fazio2010), (6) Bernard-Salas et al. (Reference Bernard-Salas2009), (7) Cormier et al. (Reference Cormier2015), (8) Goulding & Alexander (Reference Goulding and Alexander2009)

An analysis of the IR lines and features calibrations of Table 2 shows that:

  • By far the brightest features are PAH features, especially in star-forming galaxies (see, e.g. Wu et al. Reference Wu, Cao, Hao, Liu, Wang, Xia, Deng and Young2005). As shown by the normalisation constants in Table 2, their equivalent widths are typically 10 times higher than the strong fine-structure lines.

  • The mid-ionisation fine-structure lines in AGN are all of about the same brightness (and their luminosities increase linearly with the total IR luminosity) compared to solar-like star-forming galaxies, while the higher ionisation lines of [O $\;$ iv] $\rm 25.9\,\rm{\upmu m}$ and the [S $\;$ iv] $\rm 10.5\,\rm{\upmu m}$ lines are five times and more than one order of magnitude brighter, respectively. The mid-ionisation lines are significantly brighter, and more prominent with respect to the continuum, in low-metallicity galaxies due to: (i) the stronger ionisation spectrum from massive stars in the 30– $50\, \rm{eV}$ range at low metallicities (see discussion in Fernández-Ontiveros et al. Reference Fernández-Ontiveros, Spinoglio, Pereira-Santaella, Malkan, Andreani and Dasyra2016) and (ii) the lower dust content which results in a fainter continuum emission. The [Ne $\;$ vi] $\rm 7.65\,\rm{\upmu m}$ and the [Ne $\;$ v] $\rm 14.3\,\rm{\upmu m}$ and $\rm 24.3\,\rm{\upmu m}$ are only present in AGN, because of the harder ionising spectra of these objects.

  • A comparison of the AGN and low-metallicity galaxies (LMG) shows that the [S $\;$ iv] $\rm 10.5\,\rm{\upmu m}$ and the [Ne $\;$ iii] $\rm 15.6\,\rm{\upmu m}$ lines are more than one order of magnitude brighter in LMG compared to AGN.

The above comparisons show that the differences in the ionising spectra amongst the three classes of galaxies are very significant and therefore they can be easily discriminated by adequate line ratio diagrams, like those suggested in Fernández-Ontiveros et al. (Reference Fernández-Ontiveros, Spinoglio, Pereira-Santaella, Malkan, Andreani and Dasyra2016)—the so-called IR BPT diagrams.

2.2. Predictions of SMI spectroscopy of the deepest Herschel photometric fields

As anticipated in Section 2, we have exploited the IR photometric catalog of the Herschel Legacy Extragalactic Program (HELP, Vaccari Reference Vaccari2016), as input data to determine how many galaxies, which have been detected with the Herschel photometric surveys, would be detected with the SPICA SMI spectroscopic surveys at each redshift and luminosity.

In particular, we have used the data already analysed with the Code Investigating GALaxy Emission (CIGALE; Ciesla et al. Reference Ciesla2015), which are available on the HELPFootnote a service with estimated total IR luminosity, stellar mass, and SFR, for a total of about 15 000 objects selected in the whole COSMOS field (Scoville et al. Reference Scoville2007), covering an area in the sky of $2\, \rm{deg^2}$ . All the selected sources have 24 $\upmu$ m fluxes from MIPS (Rieke et al. Reference Rieke2004) onboard Spitzer, 100 and 160 $\upmu$ m fluxes from Herschel-PACS (Poglitsch et al. Reference Poglitsch2010), and 250 $\upmu$ m fluxes from Herschel-SPIRE (Griffin et al. Reference Griffin2010). Because the parent sample of our selection of HELP galaxies is the COSMOS field, the homogeneity completeness is ensured.

Starting from the total infrared luminosity, we determined the expected line luminosity for each of these objects through our calibrations and whether they would be detected in the ultra-deep and deep SMI surveys. We note here that the use of the HELP catalog has two limitations: first of all, the estimates will suffer the completeness limits of the HELP catalog, therefore they will be biased against the low luminosity galaxies that Herschel did not detect; second, there is a bias against high luminosity galaxies, which could have been missed because of the limited area of the considered Herschel surveys. Nevertheless, the use of the HELP catalog is valuable because it is based on the knowledge of the galaxies as a function of cosmic time that we do have now from Herschel and at the same time, we can demonstrate how many of the galaxies detected photometrically by Herschel could be detected spectroscopically by a SPICA-like observatory. The results of this analysis are presented in Section 3.1.

2.3. Predictions from the far-IR galaxy luminosity functions

In this section, we outline the method used to make the predictions of spectral lines and features from the luminosity functions. First, we compute the number of galaxies in a given sky area for each redshift interval we want to probe, namely from $z = 0.5$ to $z = 4$ , using the IR luminosity functions. Then, through the calibrations of the IR fine-structure lines and PAH features in the mid-IR (see Section 2.1), we compute the line emission luminosity functions from the IR continuum luminosity functions. The results about the line/feature detectability have been obtained from these derived line luminosity functions and assuming the sensitivity of the SMI spectrometer at the observed wavelength (Kaneda et al. Reference Kaneda2017). This approach follows the one already presented in Spinoglio et al. (Reference Spinoglio, Dasyra, Franceschini, Gruppioni, Valiante and Isaak2012) and Gruppioni et al. (Reference Gruppioni2016), but with the new calibration of the IR lines, updated galaxies luminosity functions, as well as updated characteristics of the SPICA focal plane instruments.

Following the work presented in Kaneda et al. (Reference Kaneda2017) and in Gruppioni et al. (Reference Gruppioni2017) our reference surveys, besides the two SMI/B-BOP spectrophotometric surveys presented there, include also a hyper-deep survey down to the confusion limit expected at 34 $\upmu$ m for a 2.5 m size telescope (in the range of 2–3 $\upmu$ Jy at 3 $\sigma$ ) (see Table 1 for the details):

  1. 1. a hyper-deep SMI survey over an SMI-LR field of 10’ $\times$ 12’ (= 120 arcmin $^2$ = 0.033 deg $^2$ ) down to the spectroscopic flux limit of $\sim\,4.6 \times 10^{-21}\, \rm{W\,m^{-2}}$ at 34 $\upmu$ m, corresponding to 0.5 $\upmu$ Jy in the continuum (at 5 $\sigma$ );

  2. 2. an ultra-deep SMI survey over a field of $1\, \rm{deg^2}$ down to the spectroscopic flux limit of $2.8 \times 10^{-20}\, \rm{W\,m^{-2}}$ at 34 $\upmu$ m, corresponding to 3 $\upmu$ Jy in the continuum (at 5 $\sigma$ ), complemented with a B-BOP photometric survey at $70\, \rm{\rm{\upmu m}}$ at a flux limit of $\sim60\,\rm{\upmu Jy}$ (at 5 $\sigma$ );

  3. 3. a wide-field deep survey over $15\, \rm{deg^2}$ to the spectroscopic flux limit of $1.2 \times 10^{-19}\, \rm{W\,m^{-2}}$ at 34 $\upmu$ m (at 5 $\sigma$ ), corresponding to 13 $\upmu$ Jy in the continuum (at 5 $\sigma$ ), complemented with the B-BOP observations at $70\, \rm{\rm{\upmu m}}$ at a flux limit of $\sim100\,\rm{\upmu Jy}$ (at 5 $\sigma$ ).

Predictions based on the Planck proto-clusters luminosity function evolutionary model (Negrello et al. Reference Negrello2017) indicate that proto-clusters (see for a definition, e.g. Sunyaev & Zeldovich Reference Sunyaev and Zeldovich1972), the rarest source population, would be detected in abundance in the SPICA ultra-deep survey over $1\, \rm{deg^2}$ with SMI, from hundreds to thousands of protocluster members. However, to be able to fully assess the effects of clustering and environment on galaxy evolution, we also planned the $15\, \rm{deg^2}$ survey, at a spectroscopic depth that will allow the determination of the redshifts through the strong PAH features.

The number of sources expected to be detected in the wide-field SMI spectral surveys, and their nature, has been estimated first in each $10^{\prime}\times 12^{\prime}$ field of view of the SMI instrument in low spectral resolution mode, as a function of redshift. We adopted the luminosity functions derived by Wang et al. (Reference Wang, Pearson, Cowley, Trayford, Béthermin, Gruppioni, Hurley and MichaŁowski2019b) from the Herschel far-IR surveys, in which the whole population of galaxies is considered and no attempt to classify the galaxies in terms of different populations is performed. From the luminosity function, we derived the expected number of objects per $\rm{Mpc^3}$ in every luminosity interval, for each redshift. Then, from each of the three different line calibrations (see Section 2.1) for AGN, star-forming galaxies and low-metallicity galaxies, we predicted the expected flux of each spectral line or feature for a given IR luminosity and redshift, and therefore the fraction of the total population of galaxies that we would be able to classify in the three classes of galaxies considered.

3. Results

3.1. SMI spectroscopic detections in the deepest Herschel fields

The approach used in this paper is to adopt a single luminosity distribution function without assuming a particular separation amongst the different types of galaxies. Then, we derive the fraction of sources recovered if the whole population consists of either SF galaxies, low-metallicity galaxies, or AGN. This simple method allows us to derive the extreme situations, without relying on model assumption of separation of different galaxy populations.

We first show graphically the results of the simulation of the deepest Herschel photometric fields (HELP) for the SMI-LR hyper-deep survey of 120 arcmin $^2$ (0.033 deg $^2$ ): in Figure 2(a) the detections of starburst galaxies through the PAH emission features show that the SMI-LR sensitivity of this survey is about two orders of magnitude below the knee of the luminosity function, as a function of redshift, which has been assumed for a $10^{10.7}\, \rm{M_\odot}$ galaxy residing in the Main Sequence (MS; Scoville et al. Reference Scoville2017). For the low-metallicity galaxies (LMG) presented in Figure 2(b), the detection threshold of SMI-LR is about one order of magnitude below the knee of the luminosity function, but only at redshift up to $z\sim$ 2.2. Finally, for the AGN population, as shown in Figure 2(c), SMI-LR can detect all objects at about 0.5–0.8 dex below the knee of the luminosity function up to redshift $z\sim$ 3.5.

Figure 2. Redshift-luminosity diagrams simulating the SMI 120 arcmin $^2$ (0.033 deg $^2$ ) hyper-deep survey using the HELP database. In all three panels, the grey dots represent the whole galaxy population as detected photometrically by Herschel, while each continuum coloured line represent the detection limit of SMI at the given line or feature, as indicated by the legend, which also gives the total number of detections in that particular line or feature. The green broken line shows the knee of the luminosity function, as a function of redshift for a $10^{10.7}\, \rm{M_\odot}$ galaxy in the Main Sequence (MS; Scoville et al. Reference Scoville2017). (a: left): SF galaxies detectable with SMI in the PAH features. On the right-hand y-axis, the SFR correspondent to the total $L_{IR}$ is also given, adopting the conversion factor from Kennicutt & Evans (Reference Kennicutt and Evans2012). (b: center): SF galaxies, adopting the line calibration of low-metallicity galaxies ( $\sim1/5\, \rm{Z_\odot}$ ), detectable with SMI in intermediate ionisation fine-structure lines. (c: right): AGN detectable with SMI in high-ionisation fine-structure lines.

The results of our simulations of the ultra-deep $1\, \rm{deg^2}$ SMI spectroscopic survey, using the HELP database, are shown in Figure 3(a) the detections of the expected PAH features in SF galaxies with solar metallicity, in Figure 3(b), the detections of fine-structure lines in low-metallicity galaxies, and in Figure 3(c), the detections of fine-structure lines typical of AGN. For solar-like metallicity galaxies, the PAH features cover almost the whole redshift interval up to $z \sim 3.0$ , at a luminosity level which about 0.5 dex or more below the knee of the luminosity function, up to redshift of $\sim$ 3.5, indicating that the bulk of the star-forming galaxies, which were detected photometrically by Herschel would be easily detected spectroscopically by a mid-IR camera such as SMI.

Figure 3. Redshift-luminosity diagrams simulating the SMI 1 deg $^2$ ultra-deep survey using the HELP database. We refer to Figure 2 for the lines coding and legends in each frame. (a: left): SF galaxies detectable with SMI in the PAH features. On the right-hand y-axis, the SFR correspondent to the total $L_{IR}$ is also given, adopting the conversion factor from Kennicutt & Evans (Reference Kennicutt and Evans2012). (b: center): SF galaxies, adopting the line calibration of low-metallicity galaxies ( $\sim1/5\, \rm{Z_\odot}$ ), detectable with SMI in intermediate ionisation fine-structure lines. (c: right): AGN detectable with SMI in high-ionisation fine-structure lines.

The situation is different for AGN, because of the lack of a tracer as bright as the PAH features, and Figure 3(c) shows that the various fine-structure lines can cover the redshift range up to $z\sim$ 2.5, however at luminosities which are about 0.5 dex or more above the knee of the luminosity function at each redshift above $z \sim 0.5$ . For redshift above $z \sim 1$ , the best tracer for AGN is the [Ne $\;$ vi]7.65 $\upmu$ m line, while at lower ( $0.5 < z < 1$ ) redshift, the best tracer is the [Ne $\;$ iii]15.6 $\upmu$ m, and at $z < 0.5$ , the [O $\;$ iv]25.9 $\upmu$ m line would be visible in the SMI spectral range. About the detection of the high-ionisation line of [Ne $\;$ vi]7.65 $\upmu$ m, we are aware that on one hand, in the co-existence in the host galaxy of strong starburst emission, at the low resolution of the SMI imaging spectrometer, this line can be overwhelmed by the strong PAH feature at 7.7 $\upmu$ m, however, on the other hand, it can be very bright in strong AGN, such as the prototypical Seyfert type 2 galaxy NGC1068 in the local universe, which does not show PAH emission features (Lutz et al. Reference Lutz, Sturm, Genzel, Moorwood, Alexander, Netzer and Sternberg2000).

For the low-metallicity galaxies, shown in Figure 3(b), the situation is somewhat intermediate to what we have found for the SF galaxies and the AGN: the SMI ultra-deep survey can go as deep as the knee of the galaxy luminosity function up to $z\sim1$ , about $0.3\, \rm{dex}$ above the knee at $1.0 < z < 1.5$ and about one order of magnitude above the knee for $1.5 < z < 2.2$ .

The simulation with the Herschel data allowed us to also analyse the stellar mass interval of the galaxies that can be detected, as shown in Figure 4(a) for the star-forming galaxies, in Figure 4(b) for low-metallicity galaxies, and in Figure 4(c) for AGN. The SF galaxies detected in the PAHs cover well the whole mass–luminosity interval analysed in the HELP project, the LMG, detected through fine-structure lines, show a narrower region of the plane stellar mass luminosity and the AGN, because of the lower detection rate, show only a sparse filling of highest masses and luminosities.

Figure 4. Stellar mass–luminosity diagrams of galaxies detectable in the SMI 1 deg $^2$ ultra-deep survey from the HELP database. (a: left) Star-forming galaxies. (b: center) Low-metalicity galaxies. (c: right) AGN.

The results for the simulations of the deep ${\rm 15\, deg^{2}}$ SMI survey of the same Herschel photometric fields are shown in Figure 5(a) for the SF galaxies, in Figure 5(b) for LMG, and in Figure 5(c) for the AGN. As can be seen from this figure, the SMI deep survey would be able to reach star-forming galaxies at 0.5–1.0 dex below the knee of the luminosity functions at the various redshifts. In particular, for the SF galaxies, the PAH features cover the whole redshift interval up to redshift $z \sim 3.5$ . For the AGN, the SMI deep survey would allow detections below the knee of the luminosity functions up to redshift $z\sim 0.5$ , while for larger redshifts, the detections of AGN would be at luminosities 0.5–0.8 dex above the knee up to a redshift of $z \sim 2.5$ and up to 1 dex above for $2.5<z<3.5$ .

As for the case of the ultra-deep survey, the situation for the low-metallicity galaxies is intermediate between the other two galaxy populations, with detections of galaxies below the knee of the LF up to a redshift of $z\sim 1$ , up to 0.3 dex above for $1.0 < z < 1.5$ and 1 dex above for $1.5 < z < 2.2$ .

Figure 5. Redshift-luminosity diagrams simulating the SMI 15 deg $^2$ deep survey using the HELP database. We refer to Figure 2 for the lines coding and legends in each frame. (a: left): SF galaxies detectable with SMI in the PAH features. (b: center): SF galaxies assuming the line calibration at low metallicities, detectable with SMI in the intermediate ionisation fine-structure lines. (c: right): AGN detectable with SMI in the high-ionisation fine-structure lines.

To summarise, the use of the HELP catalog demonstrated that a hyper-deep 120 arcmin $^2$ survey with a mid-IR camera, such as the SMI instrument proposed for SPICA, could detect all HELP galaxies and in particular galaxies two orders of magnitude fainter that the knee of the luminosity function (LF) at any redshift up to $z\sim 4$ . For low-metallicity galaxies, this survey would detect objects about one order of magnitude fainter than the knee of the LF up to $z\sim 2$ , while for AGN, the hyper-deep survey would detect galaxies 0.5–0.8 dex below the knee of the LF up to $z\sim 3.5$ .

A ultra-deep 1 deg $^2$ spectrophotometric survey, with the same camera as above, would detect PAH features in the spectra of the complete population of galaxies observed by Herschel in its deepest cosmological fields, allowing a complete census of the SFR density from spectral features. On the other hand, the same Herschel galaxies, if they harbour an AGN, could be detected by mid-IR spectroscopic surveys at a threshold of about 0.5 dex above the knee of the luminosity function at each redshift above $z \sim 0.5$ . Therefore, follow-up pointed mid- to far-IR spectroscopic observations will be needed to provide a complete census of the BHAR density as a function of redshift. For the low-metallicity galaxies, the ultra-deep survey will be complete, i.e. down to the knee of the luminosity function, at $z<1.0, 0.2-0.3$ dex above the knee at $1.0<z<1.5$ and 1 dex above the knee at $z>1.5$ . A 15 deg $^2$ mid-IR deep survey will be 0.5–1.0 dex below the knee of the luminosity functions at any redshift for the star-forming galaxies, at the knee of the LF up to $z\sim 1$ for low-metallicity galaxies and about 1 dex above the knee of the LF for AGN at $z> 0.5$ .

3.2. SMI spectroscopic detections from simulations derived from the luminosity functions

After having assessed, in the previous section, what SPICA spectroscopy would be able to cover, in terms of type of sources (SF- or AGN-dominated), luminosities, and redshift in the fields that have been observed photometrically by Herschel, we want now to go deeper and compute the limiting line fluxes that a SMI-type instrument would reach using the predictions from the luminosity functions (Wang et al. Reference Wang, Pearson, Cowley, Trayford, Béthermin, Gruppioni, Hurley and MichaŁowski2019b). Following the method outlined in Section 2.3, we have computed the number of galaxies that can be detected by the SPICA SMI deep and ultra-deep surveys, through the SF features in both the solar and low-metallicity cases and via the high-ionisation fine-structure lines typical of AGN.

In Figure 6, we show the evolution with redshift of the number of galaxies for different luminosity bins expected to be present as a function of redshift in the ultra-deep survey of the area of $1\, \rm{deg^2}$ , and in the deep survey of $15\, \rm{deg^2}$ . We report in Table 3 the number of detections for AGN, star-forming galaxies, and low-metallicity galaxies as a function of redshift and total IR luminosity for the deep survey. Table 4 shows the same results for the ultra-deep surveys and Table 5 those of the hyper-deep survey.

Figure 6. Expected galaxy number counts in the two fields of the SMI spectroscopic surveys, as derived from the Wang et al. (Reference Wang, Pearson, Cowley, Trayford, Béthermin, Gruppioni, Hurley and MichaŁowski2019b) luminosity functions. On the left y-axis are shown the counts as a function of redshift for different luminosities for the ultra-deep survey of 1 deg $^2$ . On the right y-axis the same for the deep survey of 15 deg $^2$ .

Table 3. Total number of objects present in a 15 deg2 area according to the luminosity functions by Wang et al. (Reference Wang, Pearson, Cowley, Trayford, Béthermin, Gruppioni, Hurley and MichaŁowski2019b) in each redshift-luminosity bin (first line in boldface). For each bin are also reported (in the second line) the fractions of detections of AGN through fine-structure lines (left), of star-forming galaxies through PAH features (center) and of low-metallicity galaxies through fine-structure lines

Table 4. Total number of objects present in a 1 deg2 area according to the luminosity functions by Wang et al. (Reference Wang, Pearson, Cowley, Trayford, Béthermin, Gruppioni, Hurley and MichaŁowski2019b) in each redshift-luminosity bin (first line in boldface). For each bin, we also reported (in the second line) the fractions of detections of AGN through fine-structure lines (left), of star-forming galaxies through PAH features (center) and of low-metallicity galaxies through fine-structure lines

Table 5. Total number of objects present in a 120 arcmin2 area according to the luminosity functions by Wang et al. (Reference Wang, Pearson, Cowley, Trayford, Béthermin, Gruppioni, Hurley and MichaŁowski2019b) in each redshift-luminosity bin (first line in boldface). For each bin, we also reported (in the second line) the fractions of detections of AGN through fine-structure lines (left), of star-forming galaxies through PAH features (center) and of low-metallicity galaxies through fine-structure lines

The results of the SMI hyper-deep and ultra-deep survey predictions from the luminosity functions are also shown graphically in Figures 7 and 8, respectively, where Figures 7(a) and 8(a) (left panels) show the detections of SF galaxies through the PAH features; Figures 7(b) and 8(b) (central panels) the detections of LMG through fine-structure lines, and Figures 7(c) and 8(c) (right panels) show the high-ionisation lines detections in AGN. From these results (Figures 7 and 8), it emerges that the PAH features, used as SF tracers, would allow us to reach SF galaxies about 2 dex in the hyper-deep survey and more than 1 dex in the ultra-deep survey below the knee of the luminosity function up to a redshift of $z \sim 4$ . For the case of AGN detections through fine-structure lines, the SMI hyper-deep survey would be able to detect objects $\sim$ 1 dex fainter than the knee of the LF up to redshift $z\sim 3$ , while for the ultra-deep survey, the detection of AGN would reach the knee of the luminosity function at any redshift between $1.0<z<3.0$ and below the knee of the LF below $z<1.0$ .

Figure 7. Redshift-luminosity diagrams simulating the SMI hyper-deep survey using the predictions from the far-IR Luminosity Functions (Wang et al. Reference Wang, Pearson, Cowley, Trayford, Béthermin, Gruppioni, Hurley and MichaŁowski2019b). We refer to Figure 2 for the lines coding and legends in each frame. (a: left) SMI simulations of SF galaxies. (b: center) SMI simulations for SF galaxies assuming the low-metallicity calibration in Table 2. (c: right) SMI simulations of AGN.

Figure 8. Redshift-luminosity diagrams simulating the SMI ultra-deep survey using the predictions from the far-IR Luminosity Functions (Wang et al. Reference Wang, Pearson, Cowley, Trayford, Béthermin, Gruppioni, Hurley and MichaŁowski2019b). We refer to Figure 2 for the lines coding and legends in each frame. (a: left) SMI simulations of SF galaxies. (b: center) SMI simulations for SF galaxies assuming the low-metallicity calibration in Table 2. (c: right) SMI simulations of AGN.

Considered in their entirety, the three cases will allow us to detect several times $\sim10^{3}$ and $\sim10^{4}$ sources in the hyper-deep and ultra-deep survey, respectively, and up to $\sim10^{5}$ in the deep survey, thus providing a thorough data set for follow-up surveys with the pointed spectroscopic mode. It emerges that the detection of AGN at the knee of the LF can be guaranteed not only by the deepest survey (the hyper-deep), but also in the ultra-deep survey. In star-forming galaxies, the PAH features, for both their intrinsic brightness and because they cover the whole spectral range, can be detected well below the knee of the luminosity function, thus permitting an in-depth analysis of the SF process in a very faint population of galaxies, reaching luminosities as low as ${L{\sim}10^{10} {\rm L}_{\odot}}$ at redshift $z \sim 2$ and lower than ${L{\sim}10^{11} {\rm L}_{\odot}}$ at redshift $z \sim 3.5$ .

3.3. Definition of a representative sample of galaxies

The blind spectrophotometric surveys carried out with a SMI-type mid-IR camera—as shown in Sections 3.1 and 3.2—would allow us to preliminarily classify the galaxies in terms of AGN-dominated or SF-dominated based on the spectral features and lines, and the continuum slope measured in their low-resolution mid-IR spectra. This will provide also accurate redshift estimates on a great number of objects, as well as IR luminosities using complementary Herschel or ALMA continuum data. With respect to what we already know from Spitzer and Herschel, a SPICA-like mission would perform deep unbiased spectrophotomectric surveys at mid-IR wavelengths that will go deeper in photometric limit and at the same time characterise, for the first time, the observed galaxies spectroscopically in the rest-frame mid-IR. With respect to the HST, a SPICA-like mission would be able to detect those galaxies, which are obscured by large amounts of dust (e.g. Murphy et al. Reference Murphy, Chary, Dickinson, Pope, Frayer and Lin2011; Madau & Dickinson Reference Madau and Dickinson2014, and references therein), and most actively contribute to the build up of stellar mass at cosmic noon ( $z\sim 1-2$ ) which have so far been missed by the optical surveys. With respect to what JWST will be able to discover, a 2.5 m class mid- to far-IR telescope has two advantages: it will be able to cover larger sky areas (of order of square degrees), while the JWST is limited to square arc-minutes fields, and it will have the mid-IR spectral range, which is very rich in ‘dust-unaffected’ physical tracers, positioned at the cosmic noon ( $z\sim 1-3$ ) while JWST will explore lower redshift in the mid-IR (see also Section 5).

With our scientific goal, i.e. to physically characterise the evolution of galaxies through IR spectroscopy and measure directly redshifts, SFRs, BHARs, metallicities, and the other physical properties of gas and dust in galaxies (e.g. gas densities, ionising continuum slope, dust features from silicates and PAH), we need to provide an atlas of galaxy spectra as a function of cosmic time, covering the main physical parameters of galaxies. The first task we need to accomplish is the definition of the suited sample of galaxies.

Following the outline in Section 2, we will briefly define the criteria to select, from the above described SMI-type surveys, a representative sample of galaxies to perform further pointed observations with mid- to far-IR grating spectrometers, such as those planned for SPICA, SAFARI and SMI, which will be used to optimally study galaxy evolution, especially covering the cosmic noon.

In order to define the best sample to study galaxy evolution, we first of all need to specify what are the main physical parameters driving galaxy evolution that we want to measure and then how we want to cover them. The main parameters are the SFR and the BHAR, and in Figures 9(a) and (b), we show the SFR-redshift diagram for star-forming galaxies and the BHAR-redshift diagram for AGN. Of course, the other main parameter is the stellar mass of the galaxies, however, this will not be measured by a SPICA-like mission, this task relies on future observations in the rest-frame near-IR where the old stellar populations peak, e.g. using Euclid (Laureijs et al. Reference Laureijs2011), the Nancy Grace Roman Space Telescope (Green et al. Reference Green2012), the Large Synoptic Survey Telescope (LSST; Ivezić et al. Reference IveziĆ2019). For this reason, the best cosmological fields must be carefully selected, where information on the galaxy stellar masses would be already available before the launch of the future space IR observatory. To achieve the scientific goals discussed in this work, a reasonable accuracy to be required for the mass determinations would be better than the typical intrinsic scatter of the scaling relations of interest, for instance, the $0.3\, \rm{dex}$ dispersion shown by galaxies around the main sequence (Schreiber et al. Reference Schreiber2015). Currently, the main source of uncertainty in the mass determinations at high-z comes mainly from the assumptions adopted on the mass-to-light ratios, the IMF, and the star formation history, rather than the precision of the near-IR photometry. These assumptions result in a dispersion in the stellar mass values of the order of 40% (see Reddy et al. Reference Reddy, Pettini, Steidel, Shapley, Erb and Law2012), which may improve over the next few years in parallel with the advances on the characterisation of the stellar populations in high-z galaxies.

Figure 9. Sample definition for SAFARI spectroscopic follow-up. (a: left) Star Formation Rate (SFR in $\rm{M_\odot \, yr^{-1}}$ ) as a function of redshift for a $10^{10.7}\, \rm{M_\odot}$ galaxy in the Main Sequence (MS, red solid line; Scoville et al. Reference Scoville2017). The red shaded area shows the $0.35\,\rm{dex}$ intrinsic scatter around the MS (Schreiber et al. Reference Schreiber2015), while the dark and light orange shaded areas indicate the location of galaxies whose SFR is $+2\sigma$ and $+3\sigma$ above the MS, respectively. To derive the detectability of galaxies, two extreme scenarios are considered: solar-like metallicities where PAH emission is expected to be dominant in the mid-IR spectrum and low-metallicity galaxies where the brightest features should be the mid-ionisation fine-structure lines. The dashed grey line corresponds to the $5\sigma$ sensitivity limit in the SFR derived from the PAH emission of star-forming galaxies detected in the SMI ultra-deep survey, assuming the calibration given in Table 2. Similarly, the black dotted line indicates the SMI and SAFARI $5\sigma$ sensitivities for a 10 h. follow-up observation to derive the SFR from the main tracers at low metallicities, i.e. [Ne $\;$ ii] $\text{12.8}\,\upmu \text{m}$ and [Ne $\;$ iii] $\text{15.6}\,\upmu \text{m}$ . (b: right) The green solid line indicates the instantaneous BH accretion rate (BHAR) as a function of redshift expected for a M-.S. galaxy with a mass of $10^{10.7}\, \rm{M_\odot}$ during its active BH accretion phase at each epoch. SPICA would measure the BHAR in these galaxies through the [O $\;$ iv] $\text{25.9}\, \upmu {\text{m}}$ emission. The SFR-BHAR relation adopted was derived by Diamond-Stanic & Rieke (Reference Diamond-Stanic and Rieke2012) for a sample of Seyfert galaxies in the nearby universe. The associated dispersion of this relation is shown as a green shaded area. The black dotted line shows the $5\sigma$ limit to measure the BHAR in AGN through the [O $\;$ iv] $\text{25.9}\,{\upmu} \text{m}$ luminosity with SAFARI, according to the calibrations in Table 2. The hatched areas in both figures indicate the location of galaxies that require observations larger than 10 h.

In Figure 9(a), we show the SFR of the galaxies in the Main Sequence (MS; Rodighiero et al. Reference Rodighiero2010b; Elbaz et al. Reference Elbaz2011), whose values in luminosities as a function of redshift have been taken from Scoville et al. (Reference Scoville2007), assuming a galaxy stellar mass of $M^{\star} = 10^{10.7}\, \rm{M_\odot}$ and an associated dispersion around the MS of $0.35\, \rm{dex}$ (red shaded area; Schreiber et al. Reference Schreiber2015). The relation between luminosity and SFR has been taken from Kennicutt & Evans (Reference Kennicutt and Evans2012). The grey dashed line indicates the $5\sigma$ sensitivity limit of the SMI ultradeep survey to detect and measure the SFR of galaxies using the different PAH bands in the mid-IR spectrum. PAH luminosities have been estimated using the correlations in Table 2. Similarly, the black dotted line corresponds to the $5\sigma$ sensitivity limit for a 10 h follow-up observation with SMI or SAFARI to detect the two main SF tracers at low luminosities, i.e. [Ne $\;$ i] $\rm 12.8\,\rm{\upmu m}$ and [Ne $\;$ iii] $\rm 15.6\,\rm{\upmu m}$ (see low-metallicity calibration in Table 2).

Analogously, Figure 9(b) shows the instantaneous BHAR—proportional to the AGN luminosity—as a function of redshift for an AGN in a MS star-forming galaxy with $M^{\star} = 10^{10.7}\, \rm{M_\odot}$ , assuming the SFR-BHAR calibration derived by Diamond-Stanic & Rieke (Reference Diamond-Stanic and Rieke2012) for a sample of nearby Seyfert galaxies. The green shaded area corresponds to the dispersion of the SFR-BHAR relation, i.e. $\sim0.9\, \rm{dex}$ . Note that this estimate applies only for the fraction of galaxies in the MS undergoing a BH accreting phase at each epoch, thus the instantaneous BHAR has not been averaged over the duty cycle of the active nucleus. The host galaxies of these AGN can be detected through the different PAH bands in the SMI surveys (grey dashed line). A measurement of the BHAR would be obtained through the [O $\;$ iv] $25.9\,\rm{\upmu m}$ line with far-IR spectroscopic observations. We notice here that some caveats have been suggested about the use of this line to unequivocally identify AGN emission. We are aware that this line, having an ionisation potential of $\,\sim55\, \rm{eV}$ , can also be excited by energetic starbursts (e.g. Lutz et al. Reference Lutz, Kunze, Spoon and Thornley1998) and in Luminous IR Galaxies (LIRG) galaxies without AGN (Alonso-Herrero et al. Reference Alonso-Herrero, Pereira-Santaella, Rieke and Rigopoulou2012), however, the equivalent width of this line in AGN is 10 times larger than in a starburst galaxy, and therefore the 2 types of excitation mechanisms, black hole accretion versus starburst, can be easily recognised. Thus, the [O $\;$ iv] $25.9\,\rm{\upmu m}$ line is potentially useful to find the most obscured AGN in the universe. The hatched areas in both panels indicate the region where observations longer than 10 h would be required.

By examining Figures 9(a) and (b), it follows that a representative sample of galaxies to be observed by SPICA-like pointed observations will need to cover the following space of the parameters:

  1. 1. Redshift in the range of $z = 0$ –4;

  2. 2. $\log(SFR/\rm{M_{\odot}\,yr^{-1}})$ from $0.5$ to 3, depending on z;

  3. 3. Instantaneous $\log(BHAR/\rm{M_\odot\,yr^{-1}})$ from $-2$ to 2, depending on z;

  4. 4. The above values in SFR and BHAR translate into total IR luminosities in the range $\sim10^{10} < L_{IR} < 10^{13}\, \rm{L_\odot}$ ;

  5. 5. Even more importantly, the sample selection needs to take into account environmental over-densities, as well as sub-densities, by looking at the 3D distribution of galaxies and use the appropriate algorithms to represent the most characteristic deviations from the (theoretical) average distribution.

We now estimate the size of the sample to be followed up with spectroscopic mid- to far-IR pointed observations. A rough estimate can be made by defining the number of redshift bins from $z = 0$ to $z = 4$ , by adopting a step of $\delta z = 0.5$ would require eight bins. The number of bins in SFR (equivalent to $L_{IR}$ in SF galaxies) can be set to three: one would trace the evolution of the MS with redshift for the majority of the galaxy population, i.e. reaching SF galaxies at the knee of their mass function ( $\sim10^{10.7}\, \rm{M_\odot}$ ), assuming as bin width the intrinsic scatter of galaxies around the MS ( $\sim0.35\,\rm{dex}$ ). Major impact from feedback processes and most of the chemical enrichments is expected for galaxies above the MS, thus the second and third bins in SFR would follow the same shape with an offset at $+2\sigma$ and $+3\sigma$ above (see Figure 9(a)). Following the argument suggested by Bundy et al. (Reference Bundy2015) in the definition of a representative sample of galaxies to require a precision of $0.1\, \rm{dex}$ per decade on the determination of the three main parameters translates into a requirement on the significance of a detected difference between bins to be equal to $\sqrt{n/2}$ , where n is the number of galaxies in each bin. Thus, to obtain detections in the range of 4– $5\sigma$ , we estimate a number of galaxies per bin in a range of $n = 35-50$ . Therefore, the proposed sample would have a total number of galaxies in the range of 800–1 200 galaxies, i.e. n galaxies $\times3$ luminosity bins $\times8$ redshift bins. This is in agreement with the statistical demands of current studies addressing the chemical evolution of galaxies, perhaps the most demanding ones due to the larger number of parameters that need to be covered (stellar mass, SFR, metallicity). Also, metallicity tracers are likely more affected by the scatter in gas density (n $_{\rm H}$ ) and ionisation parameter (log U) than SFR and BHAR tracers. For instance, in a recent study by Onodera et al. (Reference Onodera2016) using a sample of 43 galaxies in the $3 < z < 3.7$ range, the authors conclude that the size of their sample is still too small to overcome the uncertainties in the measurement errors, which dominate over the intrinsic scatter of the mass–metallicity relation (MZR). This scatter is directly associated with the timescales of the physical processes that drive the galaxies in and out of the average behaviour traced by the MZR (e.g. Torrey et al. Reference Torrey2019), and therefore to quantify this dispersion is a fundamental step to characterise the physics of galaxy evolution. The minimum sample size proposed in this work is a factor of $\gtrsim2$ larger than the sample from Onodera et al. (Reference Onodera2016), with $\sim100$ galaxies in the $3 < z < 3.5$ range.

Regarding the proposed bin sizes in redshift, the optical measurements suggest that changes in the metallicity of galaxies, especially above the knee of the mass function at $10^{10.7}\, \rm{M_\odot}$ , accelerate with increasing redshift. From $z \sim 0$ to $z \sim 2.2$ (in $10.9\, \rm{Gyr}$ ), the metallicity of massive galaxies decreases by only $\sim0.15\, \rm{dex}$ (Maiolino et al. Reference Maiolino2008). However, between $z \sim 2.2$ and $z = 3$ ( $0.85\, \rm{Gyr}$ ), the drop in metallicity is $0.5$ $0.6\, \rm{dex}$ (Troncoso et al. Reference Troncoso2014; Onodera et al. Reference Onodera2016). Thus, a relatively fine sampling in redshift is required to be able to follow these changes in the chemical abundances of galaxies. Moreover, taking into account that the changes in other main parameters like the SFR and the BHAR show the opposite behaviour, i.e. their variation is higher at $z < 1$ (Madau & Dickinson Reference Madau and Dickinson2014), we propose an observational strategy based on a constant bin size of $z = 0.5$ across the whole redshift range ( $1 < z < 4$ ).

3.4. Spectroscopic follow-up with SAFARI and SMI

In this section, we estimate the limits in terms of total IR luminosities and redshifts that can be reached with the two template instruments of the SPICA project, SAFARI and SMI, follow-up observations of the above-defined sample of galaxies (see Section 3.3). The SAFARI sensitivity has been taken from Roelfsema et al. (Reference Roelfsema2018). For the sake of simplicity of the simulation, we have limited the integration time to 10 h.

Figures 10(a) and (b) show the luminosity-redshift diagrams with the AGN that SAFARI and SMI would be able to detect at the various luminosities and redshifts using, respectively, the [O $\;$ iv] $\rm 25.9\,\rm{\upmu m}$ and [Ne $\;$ v] $\rm 24.3\,\rm{\upmu m}$ lines. Figures 11 and 12 show the luminosity-redshift diagrams with the SF galaxies that SMI and SAFARI would detect for the [Ne $\;$ ii] $\rm 12.8\,\rm{\upmu m}$ and [Ne $\;$ iii] $\rm 15.6\,\rm{\upmu m}$ lines (Figure 11(a) and (b), respectively), and the PAH bands at $\rm 11.3$ and $\rm 17\,\rm{\upmu m}$ (Figure 12(a) and (b), respectively). In Figure 13(a) and (b), we show the [S $\;$ iv] $\rm 10.5\,\rm{\upmu m}$ and the [Ne $\;$ iii] $\rm 15.6\,\rm{\upmu m}$ line predictions, respectively, for SF galaxies adopting the low-metallicity calibration. In all these figures, the detection limits have been assigned at 5 $\sigma$ . The figures show that the combination of SAFARI and SMI pointed spectroscopic observations would be able to detect fine-structure lines as well as PAH features in any of the three types of galaxy populations that have been considered.

Figure 10. Redshift-luminosity diagrams simulating the AGN detections with SAFARI and SMI-MR mode. (a: left:) Detectability of the [O $\;$ iv] $\text{25.89}\,{\upmu} \text{m}$ line. The red shaded area represents the detectability with SMI-MR, while the blue area indicated the detectability with SAFARI; grey horizontal lines represent lower limits for different observational times, namely less than 1 h for the dot-dashed lines, 5 h for the dashed lines, and 10 h for the solid lines. The horizontal green line indicates the knee of the luminosity function. (b: right:) Detectability of the [Ne $\;$ v] $\text{24.32}\,{\upmu} \text{m}$ line.

Figure 11. Redshift-luminosity diagrams simulating the SF galaxies detections with SAFARI and SMI-MR mode. (a: left:) Detectability of the [Ne $\;$ ii]12.81 $\upmu$ m line. The same colour code is applied as in Figure 10. (b: right:) Detectability of the [Ne $\;$ iii]15.6 $\upmu$ m line.

Figure 12. Redshift-luminosity diagrams simulating the SF galaxies detections with SAFARI and SMI-MR mode. (a: left:) Detectability of the PAH $11.3\, {\rm{\upmu}} {\text{m}}$ band. The same colour code is applied as in Figure 10. (b: right:) Detectability of the PAH $17.0\,{\upmu} \text{m}$ band.

Figure 13. Redshift-luminosity diagrams simulating low-metallicity galaxies detections with SAFARI and SMI-MR mode. (a: left:) Detectability of the [S $\;$ iv]10.51 $\upmu$ m line. The same colour code is applied as in Figure 10. (b: right:) Detectability of the [Ne $\;$ iii]15.6 $\upmu$ m line.

In other words, SPICA spectroscopy would be able to measure in a composite galaxy, which has both an active nucleus and star formation, the spectroscopic tracers of the two components. The deconvolution of the contribution of these components to the total luminosity of a galaxy would then be done through various techniques, including the use of the EW of the lines and features and of particular line ratios (see, e.g. Tommasin et al. Reference Tommasin, Spinoglio, Malkan and Fazio2010; Diamond-Stanic & Rieke Reference Diamond-Stanic and Rieke2012) or through photoionisation modelling (see, e.g. Spinoglio & Malkan Reference Spinoglio and Malkan1992; Spinoglio et al. Reference Spinoglio, Malkan, Smith, González-Alfonso and Fischer2005; Pereira-Santaella et al. Reference Pereira-Santaella, Diamond-Stanic, Alonso-Herrero and Rieke2010; Zhuang et al. Reference Zhuang, Ho and Shangguan2019). Once the two components have been disentangled, we would be able to measure the SF and the BHA luminosity functions in the same population of galaxies. If the emitting gas metallicity is lower than solar, the mid-ionisation lines of [S $\;$ iv] and [Ne $\;$ iii] would be relatively brighter. SPICA-like pointed spectroscopic observations would detect AGN well below the knee of the luminosity function with a total integration time of less than 5 and 10 h, to detect the [O $\;$ iv] $\rm 25.9\,\rm{\upmu m}$ and [Ne $\;$ v] $\rm 24.3\,\rm{\upmu m}$ lines, respectively, at the MS luminosities at any redshift below $z \lesssim 4$ . For star-forming galaxies, follow-up SPICA observations would detect the [Ne $\;$ ii] $\rm 12.8\,\rm{\upmu m}$ line, always in less than 1 h, in MS galaxies, while the [Ne $\;$ iii] $\rm 15.6\,\rm{\upmu m}$ line can be detected with SMI only at $z<1.5$ . The same star-forming galaxies, however, would always be detected through the PAH features in integration times much shorter that 1 h. Finally, the low-metallicity galaxies would easily be detected at their MS luminosities with the [Ne $\;$ iii] $\rm 15.6\,\rm{\upmu m}$ line and, up to $z\sim$ 2.5, with the [S $\;$ iv] $\rm 10.5\,\rm{\upmu m}$ line. Follow-up observations with the high-resolution channels of the mid- to far-IR spectrometers onboard of a SPICA-type observatory, reaching resolving power of the order of a few thousands, would measure the profiles of the mid-IR fine-structure lines to study the kinematics of the narrow-line regions in AGN, following the work done in the local universe with Spitzer (Dasyra et al. Reference Dasyra, Ho, Netzer, Combes, Trakhtenbrot, Sturm, Armus and Elbaz2011) and also disentangle AGN from star formation spectroscopically.

With the pointed observations of the above-defined sample of galaxies, a SPICA-type observatory would be able to determine, in addition to SFRs and instantaneous BHARs, the following physical properties of the galaxies as a function of cosmic age (redshift) and stellar mass: the metal abundances and outflow/infall occurrence. For this latter physical property in galaxies, we refer to González-Alfonso et al. (Reference González-Alfonso2017a), where a complete assessment of the detection with SPICA of AGN feedback and feeding has been presented. The study of the evolution of these quantities as a function of time will unveil the role of the most basic physical processes taking place in galaxy evolution throughout a large fraction (90%) of cosmic history.

4. Discussion

The main goal of the mid- to far-IR cosmological surveys is to provide a complete characterisation of the physical processes driving the growth of galaxies and BHs across the cosmic noon, covering all the relevant aspects such as the environment, the feedback from massive outflows, and the production of heavy elements and dust. The unique spectral mapping capabilities of a SMI-type instrument would deliver a complete 3D view of the SF in the universe by observing wide and deep cosmological volumes up to $z \sim 4$ , from voids to cluster cores over 90% of the cosmic time. Based on this survey a number of targets will be selected for dedicated follow-up IR spectroscopic observations, to provide answers to some of the most challenging questions in the field of galaxy evolution:

What physical processes led to the peak of SF and BHA during the cosmic noon?

The global estimates of SFR and BHAR densities in galaxies across cosmic time show a parallel evolution with a sharp drop of the total energy released by these two phenomena, decreasing by a factor $\sim$ 30 from the peak at the cosmic noon till the present time (Madau & Dickinson Reference Madau and Dickinson2014). Mid- to far-IR spectroscopic cosmological surveys would peer through the heavily opaque medium of MS galaxies at high-z to provide a full census of the SFR (through low-ionisation lines and PAH bands; Tommasin et al. Reference Tommasin, Spinoglio, Malkan and Fazio2010, Xie & Ho Reference Xie and Ho2019) and the instantaneous BHAR (using highly ionised species such as O3+ and Ne4+; Tommasin et al. Reference Tommasin, Spinoglio, Malkan and Fazio2010, Petric et al. Reference Petric2011, Diamond-Stanic & Rieke Reference Diamond-Stanic and Rieke2012, Alonso-Herrero et al. Reference Alonso-Herrero, Pereira-Santaella, Rieke and Rigopoulou2012) in the universe up to $z \sim 4$ , as shown in Figure 9. The measure of the SF and BHA components in the same large and representative sample of galaxies covering a wide range in cosmic time will allow us to understand the connections of SF with BHA as a function of stellar mass and environment and the relative role of these two components in galaxy growth and assembly.

Which physical processes are behind the quenching of SF in galaxies?

A SPICA-type observatory would be able to detect massive molecular gas outflows through P-Cygni profiles in the OH 119 $\rm{\rm{\upmu m}}$ and OH 79 $\rm{\rm{\upmu m}}$ doublets, as well as strong absorption profiles in the OH doublets at 65 and 84 $\rm{\rm{\upmu m}}$ , up to $z \sim 2$ , while at lower redshift ( $z<1$ ) also H $_2$ O and OH $^+$ lines would be detected at high spectral resolution (González-Alfonso et al. Reference González-Alfonso2017b; Runco et al. Reference Runco, Malkan, Fernández-Ontiveros, Spinoglio and Pereira-Santaella2020). Massive outflows are expected in bright galaxies above the MS, where strong feedback should regulate their growth by quenching the SF, driving these galaxies back to the MS (e.g. Tacchella et al. Reference Tacchella, Dekel, Carollo, Ceverino, DeGraf and Lapiner2016).

An important issue in feedback is the relative role of AGN-driven winds versus starburst/SNe driven winds. Which is the most dominant process as a function of infrared luminosity $L_{IR}$ or stellar mass or environment? Is AGN-driven feedback taking place mostly in galaxy groups/proto-cluster centres? Untangling the two (SNe driven vs. AGN driven) is crucial and can be done by considering the energy balance that can be constrained by the measure of the outflow kinetic energy (González-Alfonso et al. Reference González-Alfonso2017a), the AGN bolometric luminosity and the SFR (see, e.g. Cicone et al. Reference Cicone2014; Fiore et al. Reference Fiore2017).

The ionised phase of AGN outflows would be traced, with the high-resolution channels spectrometers onboard a SPICA-like observatory, by highly ionised emission lines such as [OIV] 25.9 $\upmu$ m (Pereira-Santaella et al. Reference Pereira-Santaella, Diamond-Stanic, Alonso-Herrero and Rieke2010) [O $\;$ iii] 52 and 88 $\upmu$ m, or [Ne $\;$ v] 14.3 and 24.3 $\upmu$ m in nearby galaxies (Spoon & Holt Reference Spoon and Holt2009; Spoon et al. Reference Spoon2013). While this phase represents a minor fraction of the total outflowing mass, its velocity is typically much higher ( $>\times$ 5) when compared to the molecular phase, and can be driven farther away from the galaxy. Thus, the spatially resolved kinematic analysis of highly ionised gas in local, $z <0.1$ galaxies with a SPICA-like mission allows for the determination of the amount of gas that can effectively escape the galactic potential well, contributing to the definitive quenching of the host. For $z>0.3$ , nuclear outflows would be detected in the [O $\;$ iv] 25.9 $\upmu$ m line with the sensitivity required to detect the OH doublets, which would be combined with the simultaneous observations of the [O $\;$ iii] lines to probe the ionisation parameter of the outflowing ionised gas, the relationship with the ultra-fast outflows in X-rays and the molecular phase, including the stratification of the winds (e.g. Tombesi et al. Reference Tombesi, Meléndez, Veilleux, Reeves, González-Alfonso and Reynolds2015), and their AGN/SB origin.

What is the role and timescale of obscured BH-grow in shaping galaxy evolution?

Heavily obscured nuclei are also potential sources of AGN feedback. The buried phase is expected to precede the launch of massive winds of molecular gas during the quasar phase, following the evolutionary sequence suggested by OH doublet diagnostics in nearby analogs of these sources (González-Alfonso et al. Reference González-Alfonso2017b). Furthermore, deeply buried accreting BHs could be a substantial part of the AGN population without exceeding the observed cosmic X-ray background (e.g. Gilli, Comastri, & Hasinger Reference Gilli, Comastri and Hasinger2007; Treister, Urry, & Virani Reference Treister, Urry and Virani2009; Comastri et al. Reference Comastri, Gilli, Marconi, Risaliti and Salvati2015), their large obscuration makes them virtually invisible to current X-ray surveys. Since their discovery, these targets became a major science topic for future X-ray missions such as Athena (Nandra et al. Reference Nandra2013), which envisages surveys to reveal this population. SPICA-type cosmological surveys would provide a unique contribution in the field by revealing the dust reprocessed radiation from elusive sources in the Athena surveys, i.e. Compton-thick (CT) nuclei with the largest obscuring columns ( $N_{\rm H} \gtrsim 10^{24.5}\rm{cm^{-2}}$ ) and moderate luminosities (Barchiesi et al. 2021, submitted to PASA). In the high-luminosity regime ( $L_{X} = 10^{44.0} \rm{erg\,s^{-1}}$ ), both Athena and a SPICA-like observatory would detect CT AGN. This strong synergy is key to accurately reconstructing the accretion luminosity over cosmic time up to high redshift ( $z\sim 4$ ). Conversely, in the faint/moderate-luminosity regime ( $L_{X} \sim 10^{42.3} \rm{erg\,s^{-1}}$ ), only a SPICA-like observatory would be able to recover a significant fraction of this elusive AGN population in the X-rays. The presence of a CT AGN would then be recognised, at least up to $z\sim 2$ , via the expected detection (based on Spitzer/IRS results at $z< 1$ ) of a deep silicate absorption feature at 9.7 $\upmu$ m in the SMI-LR spectra available for about 60% of the photometrically detected sources (Barchiesi et al. 2021). Mid- to far-IR spectroscopic follow-up of these deeply buried nuclei would then measure the BHAR through the high-ionisation fine-structure lines of [OIV] and [NeV] as well as the unique physical characterisation of the warm nuclear regions ( ${\gtrsim}300\, \rm{K}$ ) in the pre-quasar phase, e.g. through the detection of the OH absorption doublets at 65 and $84\, \rm{\rm{\upmu m}}$ .

How did obscured SF build today’s most massive clusters?

The build up of the most massive galaxy clusters that we observe in the nearby universe is directly linked to the formation of the large-scale structure in the universe and the assembly of massive dark matter halos. Galaxies grow faster in dense environments, thus clusters are dominated by massive early type galaxies already by the end of the cosmic noon ( $z \lesssim 1$ $1.5$ ). To understand the formation of these structures requires finding proto-clusters at higher redshifts, which is challenging since the growing galaxies were still undergoing a dusty-obscured SF phase at that epoch, and the systems were not yet virialised. This implies not only the need of deep IR observations, but also to obtain redshift information for individual galaxies over wide and deep cosmological volumes. In this aspect SPICA is unique, since the SMI deep spectrophotometric surveys would provide a full tomographic view of clustering as a function of time up to $z \sim 3.5$ over wide (from 1 to 15 square degrees) fields in the sky. This 3D view of the universe, which can be carried out only with a SPICA-like deep spectrophotometric survey, will allow the identification of several hundreds to thousands of new proto-clusters that will serve as targets for follow-up spectroscopic studies.

How were the dust-embedded earliest stages of elliptical galaxies and bulges of MW-like progenitors?

Massive elliptical galaxies at the centre of galaxy clusters and the bulges of MW-like spirals were already in place by $z \sim 1$ (Pérez-González et al. Reference Pérez-González2008). The rapid formation of these structures left a clear imprint in their content of heavy elements—metals—which are byproducts of the SF and therefore scale with the stellar mass growth. Optical-based diagnostics show a drastic drop of about an order of magnitude in the metallicities of massive galaxies ( $\gtrsim+10^{10}\, \rm{M_\odot}$ ) between $z \sim 2$ and 3 (Maiolino et al. Reference Maiolino2008; Mannucci et al. Reference Mannucci2009; Troncoso et al. Reference Troncoso2014; Wuyts et al. Reference Wuyts2014; Hunt et al. Reference Hunt, Dayal, Magrini and Ferrara2016; Onodera et al. Reference Onodera2016; Suzuki et al. Reference Suzuki2020; but see also Cullen et al. Reference Cullen2019, Sanders et al. Reference Sanders2020a), which is in contrast with the large amounts of dust inferred for SF galaxies at that epoch (Madau & Dickinson Reference Madau and Dickinson2014). Similar discrepancies are found in submillimetre galaxies at high-z and local analogs of dusty-obscured SF galaxies (Santini et al. Reference Santini2010, Herrera-Camus et al. Reference Herrera-Camus2018). Mid- to far-IR medium-resolution spectroscopy would allow the use of metallicity diagnostics based on IR fine-structure lines, largely insensitive to extinction and gas temperature to probe the true chemical age of galaxies during the cosmic noon (Fernández-Ontiveros et al. Reference Fernández-Ontiveros2017). Additionally, IR metallicities would allow to probe variations in the chemical abundances, such as N/O ratios and alpha enhancement, which provide unique information on the history of star formation of these galaxies (e.g. Amorín, Pérez-Montero, & Vílchez 2010; Thomas, Greggio, & Bender Reference Thomas, Greggio and Bender1999).

How obscured are the nuclei of galaxies and what are the dust properties in the AGN and starburst host galaxies?

An outcome of mid-IR spectroscopic observations will be the complete census of the shape and strength of the 9.7 $\upmu$ m silicate feature (and to a lesser extent that at 18 $\upmu$ m) in the thousands of detected galaxies in the deep and ultra-deep surveys. The silicate features provide information on: (i) the obscuration: dust emission and absorption in the line of sight can be measured from the profile of the 9.7 $\upmu$ m feature, this can be combined with additional diagnostics to discriminate between type 1 and type 2 AGN and related to the X-ray obscuration (La Caria et al. Reference La Caria, Vignali, Lanzuisi, Gruppioni and Pozzi2019); (ii) the amount of silicate in the dust composition; (iii) as well as its properties (e.g. grain size distributions and crystallinity); (iv) the central wavelength, width, and relative strength of the 9.7 and 18 $\upmu$ m features carry information on the dust chemical composition and grain properties (Xie, Li, & Hao Reference Xie, Li and Hao2017; Fernández-Ontiveros et al. Reference Fernández-Ontiveros2017). Moreover, combining information from PAH and silicates provides insights into the physical conditions of the interstellar and circumnuclear medium in galaxies. Finally, the correlation amongst the silicate absorption in AGN and the hydrogen column density N $_{H}$ as measured from X-rays, even if often ascribable to host galaxy obscuration and not necessarily to a compact torus surrounding the AGN (Goulding et al. Reference Goulding, Alexander, Bauer, Forman, Hickox, Jones, Mullaney and Trichas2012), might demonstrate the usefulness of silicates to detect and recognise heavily obscured AGN, i.e. the Compton-thick objects.

What are the properties of dust up to the epoch of reionisation?

The origin and composition of dust in galaxies is one of the most challenging problems in chemical evolution studies (Calura, Pipino, & Matteucci Reference Calura, Pipino and Matteucci2008 and references therein). Dust production originates in stars at the end of their lifetime (core collapse Supernovae (SNe), asymptotic giant branch (AGB) stars and red supergiants, and Wolf Rayet stars), when atomic metals in their enriched ejecta condense in dust seeds (Sarangi & Cherchneff Reference Sarangi and Cherchneff2015, De Looze et al. Reference De Looze, Barlow, Swinyard, Rho, Gomez, Matsuura and Wesson2017, Marassi et al. Reference Marassi, Schneider, Limongi, Chieffi, Graziani and Bianchi2019) and are released in the surrounding ISM, after surviving the local reverse shock (Bocchio, Jones, & Slavin Reference Bocchio, Jones and Slavin2014; Bocchio et al. Reference Bocchio, Marassi, Schneider, Bianchi, Limongi and Chieffi2016) or be completely destroyed by supernova shocks (Valiante et al. Reference Valiante, Schneider, Salvadori and Bianchi2011). It should be finally noted that episodes of star formation occurring in dust polluted gas remove part of the gas mass through astration. The physical nature (Ceccarelli et al. Reference Ceccarelli, Viti, Balucani and Taquet2018) and the efficiency and timescales of these processes are largely unconstrained and difficult to derive from micro-physical models, and dust properties and evolution remain largely unconstrained and difficult to measure. However, many recent hydrodynamical models phenomenologically incorporating dust formation from stellar sources and evolution in various ISM phases have shown that it is possible to reproduce the total estimated gas mass in a remarkable redshift range (McKinnon et al. Reference McKinnon, Torrey, Vogelsberger, Hayward and Marinacci2017; Aoyama et al. Reference Aoyama, Hou, Hirashita, Nagamine and Shimizu2018; Gjergo et al. Reference Gjergo, Granato, Murante, Ragone-Figueroa, Tornatore and Borgani2018; Graziani et al. Reference Graziani, Schneider, Ginolfi, Hunt, Maio, Glatzle and Ciardi2020). The condensation of heavy elements in supernovae (SNe) ejecta is thought to be the main channel of dust production at high-z (Todini & Ferrara Reference Todini and Ferrara2001; Bianchi & Schneider Reference Bianchi and Schneider2007; Mancini et al. Reference Mancini, Schneider, Graziani, Valiante, Dayal, Maio, Ciardi and Hunt2015; Ferrara, Viti, & Ceccarelli Reference Ferrara, Viti and Ceccarelli2016). Still, the net production and composition of dust in SNe is unknown even in the nearest sources (Matsuura et al. Reference Matsuura2019), due to the lack of a sensitive far-IR spectroscopic observatory. The estimated sensitivity of a space cryogenic IR telescope would allow us to probe the dust properties and its composition from the local universe to high redshift galaxies, through spectroscopic measurements of various solid-state features in the IR and the modelling of their spectral energy distribution.

5. Synergies with JWST and ALMA

The SPace Infrared telescope for Cosmology and Astrophysics (SPICA, Swinyard et al. Reference Swinyard2009; Nakagawa et al. Reference Nakagawa, Shibai, Onaka, Matsuhara, Kaneda, Kawakatsu and Roelfsema2014; Sibthorpe et al. Reference Sibthorpe, Helmich, Roelfsema, Kaneda and Shibai2015; Roelfsema et al. Reference Roelfsema2018), as described in the preface of this article, would have achieved a gain of over two orders of magnitude in spectroscopic sensitivity in the mid/far-IR compared to Herschel and Spitzer. It would have covered the large spectral gap between the James Webb Space Telescope (JWST, Gardner et al. Reference Gardner2006), and what is currently observed at the Atacama Large Millimeter/submillimeter Array (ALMA, Wootten & Thompson Reference Wootten and Thompson2009), allowing us to detect the very rich mid-IR rest-frame spectra of galaxies at the key phase of their evolution, when the bulk of stars and SMBHs were assembled. A SPICA-like observatory would be complementary to JWST, because it would observe the mid-IR spectra of galaxies at the comic noon, while JWST-MIRI will obtain the same spectral range in the local universe. Similarly, it would be complementary to ALMA, by covering an adjacent portion of the cosmic time, from $z\sim 1$ to $z\sim 3$ , especially taking into account the science drivers of the ALMA 2030 Roadmap, which include ‘tracing the cosmic evolution of key elements from the first galaxies ( $z>10$ ) to the peak of star formation ( $z\sim 2-4$ ), by detecting their cooling lines’ (Carpenter et al. Reference Carpenter, Iono, Kemper and Wootten2020).

An example of how a SPICA-like observatory and ALMA will be complementary is suggested by the recent ALMA studies, which indicate that HST-dark/NIR-dark, faint sub-mm galaxies are more ubiquitous than we thought before, i.e. although fainter than the classical SMGs, they exhibit a much higher space density (e.g. Franco et al. Reference Franco2018; Yamaguchi et al. Reference Yamaguchi2019; Wang et al. Reference Wang2019a; Gruppioni et al. Reference Gruppioni2020). These galaxies seem to be an important population as a progenitor of present-day massive elliptical galaxies, but their true redshift distributions are largely unexplored due to the difficulty of spectroscopy observations. A fraction of them is expected to be around z $\sim 2 - 4$ , and given the expected sensitivity of a SPICA-like observatory, they can be a good target for spectroscopic follow-up observations, while others can be uncovered by the proposed unbiased 3D survey (ultra-deep, see Section 2) via, e.g. PAH 6.2/7.7 $\upmu$ m features. Furthermore, co-growth of SMBH amongst such optically/NIR-dark faint sub-mm galaxies is another important issue that is not yet fully addressed. We see that a SPICA-like observatory would be enough sensitive to detect [OIV]25.89 $\upmu$ m up to $z = 4$ (see, e.g. Figure 9(b)) from these optically/NIR-dark ALMA sources because they tend to be bright LIRGs/faint ULIRGs objects.

6. Summary

In this work, we have discussed the results obtained for the preparation of the SPICA mission: in particular, what can be achieved with the deep spectroscopic three-dimensional surveys planned for the mid-IR camera-spectrometer SMI in low spectral resolution over 1– $15\, \rm{deg^2}$ fields, plus a hyper-deep survey of a fraction of square degree (0.033 deg $^2$ ). We have also addressed the potential of pointed spectroscopic follow-up observations with mid- and far-IR grating spectrometers in the context of galaxy evolution studies. Our main results can be summarised as follows:

  1. 1. The deepest survey that we have considered, the hyper-deep spectrophotometric survey of $120\, \rm{arcmin^2}$ , would be able to detect star-forming galaxies about two orders of magnitude below the knee of the luminosity function (LF) at various cosmic times up to $z\sim 4$ . It would also detect either low-metallicity galaxies and AGN about one order of magnitude below the knee of the LF up to $z\sim 2.0$ for LMG and up to $z\sim 3.0$ for AGN.

  2. 2. The ultra-deep spectrophotometric surveys of $1\, \rm{deg^2}$ would be able to detect spectroscopically through PAH features all star-forming galaxies detected photometrically in the deepest Herschel cosmological fields, down to one dex below the knee of their luminosity functions up to $z \sim 3.5$ . These surveys can reach a depth well below the Herschel photometric limit, reaching spectroscopically star-forming galaxies of $L \sim 10^{10}\, \rm{L_\odot}$ at $z \sim 2$ , and $L < 10^{11}\, \rm{L_\odot}$ at $z \sim 3$ .

  3. 3. The same ultra-deep spectrophotometric surveys would detect AGN, through high-ionisation fine-structure lines, at the knee of their luminosity functions at each redshift up to $z \sim 3$ .

  4. 4. In order to obtain a thorough spectroscopic characterisation of the evolution of galaxies in the three-dimensional domain at the cosmic noon ( $1 < z < 3$ ) and beyond ( $z \sim 4$ ) a suitable sample will need to cover the main physical parameters (luminosity, SFR, BHAR, galaxy stellar mass) and—even more importantly—will need to select galaxies in both over-dense and sub-dense regions. Numerically, it will have to include about 800–1 200 galaxies.

  5. 5. Mid- to far-IR spectroscopic observations of this sample of galaxies will trace galaxy evolution all the way down to $\sim0.5\, \rm{dex}$ below the knee of the luminosity functions of star-forming galaxies and AGN by measuring the SFR, the BHAR, and the metallicity as a function of cosmic time.

  6. 6. Mid- to far-IR spectroscopic follow-up observations will also be used to characterise the physical properties of the ISM in low-metallicity environments, both in star-forming galaxies and AGN at high-z.

Acknowledgements

This paper is dedicated to the memory of Bruce Swinyard, who initiated the SPICA project in Europe, but unfortunately died on 2015 May 22 at the age of 52. He was ISO-LWS calibration scientist, Herschel-SPIRE instrument scientist, first European PI of SPICA, and first design lead of SAFARI. We acknowledge the whole SPICA Collaboration Team, as without its multi-year efforts and work this paper could not have been possible. We also thank the SPICA Science Study Team appointed by ESA and the SPICA Galaxy Evolution Working Group. LS and JAFO acknowledge financial support by the Agenzia Spaziale Italiana (ASI) under the research contract 2018-31-HH.0. AAH acknowledges support from grants PGC2018-094671-B-I00 (MCIU/AEI/FEDER,UE) and No. MDM-2017-0737 at Unidad de Excelencia María de Maeztu-Centro de Astrobiología (INTA-CSIC). FJC acknowledges financial support from the Spanish Ministry MCIU under project RTI2018-096686-B-C21 (MCIU/AEI/FEDER/UE), cofunded by FEDER funds and from the Agencia Estatal de Investigación, Unidad de Excelencia María de Maeztu, ref. MDM-2017-0765. HD acknowledges financial support from the Spanish Ministry of Science, Innovation and Universities (MICIU) under the 2014 Ramón y Cajal program RYC-2014-15686 and AYA2017-84061-P, the later one co-financed by FEDER (European Regional Development Funds). AL acknowledges the support from Comunidad de Madrid through the Atracción de Talento grant 2017-T1/TIC-5213. MPS acknowledges support from the Comunidad de Madrid, Spain, through Atracción de Talento Investigador Grant 2018-T1/TIC-11035.

Footnotes

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Figure 0

Figure 1. Mid-IR rest-frame spectra of different galaxy types, in a sequence from high to zero nuclear activity from the AGN, from type 1 Seyfert galaxies, through Hidden Broad Line Region Galaxies (HBLR), AGN type 2, weak active galaxies (non Sy) to starburst galaxies as observed in the local universe from the Spitzer IRS high-resolution (R$\sim$600) spectrometer. The black line shows the average spectrum of the starburst galaxies (Bernard-Salas et al. 2009), showing the strong PAH features. The figure has been adapted from Tommasin et al. (2010) and the positions of the brightest fine-structure lines (divided in low-, medium- and high-excitation) and features are indicated.

Figure 1

Table 1. SMI/B-BOP Spectrophotometric surveys parameters

Figure 2

Table 2. New calibration obtained for fine-structure lines and PAH features as a function of $L_{IR}$

Figure 3

Figure 2. Redshift-luminosity diagrams simulating the SMI 120 arcmin$^2$ (0.033 deg$^2$) hyper-deep survey using the HELP database. In all three panels, the grey dots represent the whole galaxy population as detected photometrically by Herschel, while each continuum coloured line represent the detection limit of SMI at the given line or feature, as indicated by the legend, which also gives the total number of detections in that particular line or feature. The green broken line shows the knee of the luminosity function, as a function of redshift for a $10^{10.7}\, \rm{M_\odot}$ galaxy in the Main Sequence (MS; Scoville et al. 2017). (a: left): SF galaxies detectable with SMI in the PAH features. On the right-hand y-axis, the SFR correspondent to the total $L_{IR}$ is also given, adopting the conversion factor from Kennicutt & Evans (2012). (b: center): SF galaxies, adopting the line calibration of low-metallicity galaxies ($\sim1/5\, \rm{Z_\odot}$), detectable with SMI in intermediate ionisation fine-structure lines. (c: right): AGN detectable with SMI in high-ionisation fine-structure lines.

Figure 4

Figure 3. Redshift-luminosity diagrams simulating the SMI 1 deg$^2$ ultra-deep survey using the HELP database. We refer to Figure 2 for the lines coding and legends in each frame. (a: left): SF galaxies detectable with SMI in the PAH features. On the right-hand y-axis, the SFR correspondent to the total $L_{IR}$ is also given, adopting the conversion factor from Kennicutt & Evans (2012). (b: center): SF galaxies, adopting the line calibration of low-metallicity galaxies ($\sim1/5\, \rm{Z_\odot}$), detectable with SMI in intermediate ionisation fine-structure lines. (c: right): AGN detectable with SMI in high-ionisation fine-structure lines.

Figure 5

Figure 4. Stellar mass–luminosity diagrams of galaxies detectable in the SMI 1 deg$^2$ ultra-deep survey from the HELP database. (a: left) Star-forming galaxies. (b: center) Low-metalicity galaxies. (c: right) AGN.

Figure 6

Figure 5. Redshift-luminosity diagrams simulating the SMI 15 deg$^2$ deep survey using the HELP database. We refer to Figure 2 for the lines coding and legends in each frame. (a: left): SF galaxies detectable with SMI in the PAH features. (b: center): SF galaxies assuming the line calibration at low metallicities, detectable with SMI in the intermediate ionisation fine-structure lines. (c: right): AGN detectable with SMI in the high-ionisation fine-structure lines.

Figure 7

Figure 6. Expected galaxy number counts in the two fields of the SMI spectroscopic surveys, as derived from the Wang et al. (2019b) luminosity functions. On the left y-axis are shown the counts as a function of redshift for different luminosities for the ultra-deep survey of 1 deg$^2$. On the right y-axis the same for the deep survey of 15 deg$^2$.

Figure 8

Table 3. Total number of objects present in a 15 deg2 area according to the luminosity functions by Wang et al. (2019b) in each redshift-luminosity bin (first line in boldface). For each bin are also reported (in the second line) the fractions of detections of AGN through fine-structure lines (left), of star-forming galaxies through PAH features (center) and of low-metallicity galaxies through fine-structure lines

Figure 9

Table 4. Total number of objects present in a 1 deg2 area according to the luminosity functions by Wang et al. (2019b) in each redshift-luminosity bin (first line in boldface). For each bin, we also reported (in the second line) the fractions of detections of AGN through fine-structure lines (left), of star-forming galaxies through PAH features (center) and of low-metallicity galaxies through fine-structure lines

Figure 10

Table 5. Total number of objects present in a 120 arcmin2 area according to the luminosity functions by Wang et al. (2019b) in each redshift-luminosity bin (first line in boldface). For each bin, we also reported (in the second line) the fractions of detections of AGN through fine-structure lines (left), of star-forming galaxies through PAH features (center) and of low-metallicity galaxies through fine-structure lines

Figure 11

Figure 7. Redshift-luminosity diagrams simulating the SMI hyper-deep survey using the predictions from the far-IR Luminosity Functions (Wang et al. 2019b). We refer to Figure 2 for the lines coding and legends in each frame. (a: left) SMI simulations of SF galaxies. (b: center) SMI simulations for SF galaxies assuming the low-metallicity calibration in Table 2. (c: right) SMI simulations of AGN.

Figure 12

Figure 8. Redshift-luminosity diagrams simulating the SMI ultra-deep survey using the predictions from the far-IR Luminosity Functions (Wang et al. 2019b). We refer to Figure 2 for the lines coding and legends in each frame. (a: left) SMI simulations of SF galaxies. (b: center) SMI simulations for SF galaxies assuming the low-metallicity calibration in Table 2. (c: right) SMI simulations of AGN.

Figure 13

Figure 9. Sample definition for SAFARI spectroscopic follow-up. (a: left) Star Formation Rate (SFR in $\rm{M_\odot \, yr^{-1}}$) as a function of redshift for a $10^{10.7}\, \rm{M_\odot}$ galaxy in the Main Sequence (MS, red solid line; Scoville et al. 2017). The red shaded area shows the $0.35\,\rm{dex}$ intrinsic scatter around the MS (Schreiber et al. 2015), while the dark and light orange shaded areas indicate the location of galaxies whose SFR is $+2\sigma$ and $+3\sigma$ above the MS, respectively. To derive the detectability of galaxies, two extreme scenarios are considered: solar-like metallicities where PAH emission is expected to be dominant in the mid-IR spectrum and low-metallicity galaxies where the brightest features should be the mid-ionisation fine-structure lines. The dashed grey line corresponds to the $5\sigma$ sensitivity limit in the SFR derived from the PAH emission of star-forming galaxies detected in the SMI ultra-deep survey, assuming the calibration given in Table 2. Similarly, the black dotted line indicates the SMI and SAFARI $5\sigma$ sensitivities for a 10 h. follow-up observation to derive the SFR from the main tracers at low metallicities, i.e. [Ne$\;$ii]$\text{12.8}\,\upmu \text{m}$ and [Ne$\;$iii]$\text{15.6}\,\upmu \text{m}$. (b: right) The green solid line indicates the instantaneous BH accretion rate (BHAR) as a function of redshift expected for a M-.S. galaxy with a mass of $10^{10.7}\, \rm{M_\odot}$ during its active BH accretion phase at each epoch. SPICA would measure the BHAR in these galaxies through the [O$\;$iv]$\text{25.9}\, \upmu {\text{m}}$ emission. The SFR-BHAR relation adopted was derived by Diamond-Stanic & Rieke (2012) for a sample of Seyfert galaxies in the nearby universe. The associated dispersion of this relation is shown as a green shaded area. The black dotted line shows the $5\sigma$ limit to measure the BHAR in AGN through the [O$\;$iv]$\text{25.9}\,{\upmu} \text{m}$ luminosity with SAFARI, according to the calibrations in Table 2. The hatched areas in both figures indicate the location of galaxies that require observations larger than 10 h.

Figure 14

Figure 10. Redshift-luminosity diagrams simulating the AGN detections with SAFARI and SMI-MR mode. (a: left:) Detectability of the [O$\;$iv]$\text{25.89}\,{\upmu} \text{m}$ line. The red shaded area represents the detectability with SMI-MR, while the blue area indicated the detectability with SAFARI; grey horizontal lines represent lower limits for different observational times, namely less than 1 h for the dot-dashed lines, 5 h for the dashed lines, and 10 h for the solid lines. The horizontal green line indicates the knee of the luminosity function. (b: right:) Detectability of the [Ne$\;$v]$\text{24.32}\,{\upmu} \text{m}$ line.

Figure 15

Figure 11. Redshift-luminosity diagrams simulating the SF galaxies detections with SAFARI and SMI-MR mode. (a: left:) Detectability of the [Ne$\;$ii]12.81 $\upmu$m line. The same colour code is applied as in Figure 10. (b: right:) Detectability of the [Ne$\;$iii]15.6 $\upmu$m line.

Figure 16

Figure 12. Redshift-luminosity diagrams simulating the SF galaxies detections with SAFARI and SMI-MR mode. (a: left:) Detectability of the PAH $11.3\, {\rm{\upmu}} {\text{m}}$ band. The same colour code is applied as in Figure 10. (b: right:) Detectability of the PAH $17.0\,{\upmu} \text{m}$ band.

Figure 17

Figure 13. Redshift-luminosity diagrams simulating low-metallicity galaxies detections with SAFARI and SMI-MR mode. (a: left:) Detectability of the [S$\;$iv]10.51 $\upmu$m line. The same colour code is applied as in Figure 10. (b: right:) Detectability of the [Ne$\;$iii]15.6 $\upmu$m line.