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Rotation of the globular cluster population of the dark matter deficient galaxy NGC 1052-DF4: Implication for the total mass

Published online by Cambridge University Press:  23 May 2024

Yuan Li*
Affiliation:
Department of Statistics, The University of Auckland, Auckland, New Zealand
Brendon J. Brewer
Affiliation:
Department of Statistics, The University of Auckland, Auckland, New Zealand
Geraint Lewis
Affiliation:
Sydney Institute for Astronomy, School of Physics, The University of Sydney, NSW, Australia
*
Corresponding author: Yuan Li; Email: yli464@aucklanduni.ac.nz
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Abstract

We explore the globular cluster population of NGC 1052-DF4, a dark matter deficient galaxy, using Bayesian inference to search for the presence of rotation. The existence of such a rotating component is relevant to the estimation of the mass of the galaxy, and therefore the question of whether NGC 1052-DF4 is truly deficient of dark matter, similar to NGC 1052-DF2, another galaxy in the same group. The rotational characteristics of seven globular clusters in NGC 1052-DF4 were investigated, finding that a non-rotating kinematic model has a higher Bayesian evidence than a rotating model, by a factor of approximately 2.5. In addition, we find that under the assumption of rotation, its amplitude must be small. This distinct lack of rotation strengthens the case that, based on its intrinsic velocity dispersion, NGC 1052-DF4 is a truly dark matter deficient galaxy.

Type
Research Article
Creative Commons
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Copyright
© The Author(s), 2024. Published by Cambridge University Press on behalf of Astronomical Society of Australia

1. Introduction

Ultra-diffuse galaxies (UDGs) are defined by their extremely low matter densities and luminosities, with a surface brightness from 25 to 28 mag arcsec–2 and a relatively large scale radius of about >1.5 kpc (van Dokkum et al. Reference van Dokkum, Abraham, Merritt, Zhang, Geha and Conroy2015; Koda et al. Reference Koda, Yagi, Yamanoi and Komiyama2015). According to van Dokkum et al. (Reference van Dokkum, Abraham, Brodie, Conroy, Danieli, Merritt, Mowla, Romanowsky and Zhang2016), some UDGs appear to have very high dark matter fractions with very little stellar material. Alternatively, other UDGs appear to possess much less dark matter than expected (e.g. van Dokkum, et al. Reference van Dokkum, Cohen, Danieli, Diederik Kruijssen, Romanowsky, Merritt and Abraham2018).

NGC 1052-DF2 is one such claimed matter deficient UDG in the NGC 1052 group. van Dokkum et al. (Reference van Dokkum, Cohen, Danieli, Diederik Kruijssen, Romanowsky, Merritt and Abraham2018) first reported that NGC1052-DF2 has a comparatively small velocity dispersion of about 3.2 km s–1, which is the basis for the galaxy’s low mass estimate, and hence implied deficiency of dark matter. This finding prompted controversy since dark matter is thought to be essential to galaxy formation and evolution and presumed to be significant in almost all galaxies. Through a Bayesian-based analysis, Martin et al. (Reference Martin, Collins, Longeard and Tollerud2018) concluded that NGC 1052-DF2’s inherent velocity dispersion is about 9.5 km s–1, which somewhat mitigates the shortage of dark matter. However, van Dokkum et al. (Reference van Dokkum, Danieli, Abraham, Conroy and Romanowsky2019) discovered a second galaxy in the NGC 1052 group, naming it NGC 1052-DF4. This galaxy is also a UDG and is very similar to the NGC 1052-DF2 galaxy in size, surface brightness, and shape. van Dokkum et al. (Reference van Dokkum, Danieli, Abraham, Conroy and Romanowsky2019) found that NGC 1052-DF4 also possessed a relatively low velocity dispersion, and hence concluded it is also dark matter deficient.

The potential lack of dark matter in NGC 1052-DF2 and NGC 1052-DF4 has prompted investigation from several angles. Some have focused on determining the distance to these galaxies (Trujillo et al. Reference Trujillo, Beasley, Borlaff, Carrasco, Di Cintio, Filho and Monelli2019; Danieli et al. Reference Danieli, van Dokkum, Abraham, Conroy, Dolphin and Romanowsky2020; Shen et al., Reference Shen, van Dokkum and Danieli2021; Zonoozi et al., Reference Zonoozi, Haghi and Kroupa2021), with the possibility that a smaller distance would bring the properties of these galaxies inline with the overall galaxy populations. Others have considered the estimation of their intrinsic velocity dispersion (van Dokkum et al. Reference van Dokkum, Cohen, Danieli, Diederik Kruijssen, Romanowsky, Merritt and Abraham2018; Martin et al. Reference Martin, Collins, Longeard and Tollerud2018; Fensch et al. Reference Fensch, van der Burg, Jeřábková, Emsellem, Zanella, Agnello and Hilker2019; van Dokkum et al. Reference van Dokkum, Danieli, Abraham, Conroy and Romanowsky2019), as well as the question of whether the associated globular cluster population rotates (Lewis et al., Reference Lewis, Brewer and Wan2020).

There are several hypotheses that have been suggested to account for the distinct characteristics of these dark matter deficient galaxies. Ogiya and Hahn (Reference Ogiya and Hahn2018) propose that these galaxies originally contained a typical amount of dark matter, which they later lost as a result of interactions with nearby galaxies, a scenario backed up through computer simulations Moreno et al. (Reference Moreno, Danieli, Bullock, Feldmann, Hopkins, Catmabacak and Gurvich2022). Based on this mechanism, they estimate that about 30% of massive central galaxies contain a single satellite with little dark matter. The findings of Bennet et al. (Reference Bennet, Sand, Zaritsky, Crnojevic, Spekkens, Karunakaran and Kapinska2018) also suggest that the creation of some UDGs can be associated with interactions between galaxies, either due to UDGs coalescing from tidal debris in stellar streams. Moreover, it is suggested by van Dokkum et al. (Reference van Dokkum, Shen, Keim, Trujillo-Gomez, Danieli, Chowdhury and Abraham2022) that NGC 1052-DF2 and NGC 1052-DF4, the two dark matter deficient galaxies which are the focus of this study, originated in an individual event, a “bullet dwarf” collision, roughly eight billion years ago.

Recently, multiple investigations have confirmed that NGC 1052-DF4 is experiencing tidal stripping, which may account for the galaxy’s low dark matter content. Montes et al. (Reference Montes, Infante-Sainz, Madrigal-Aguado, Román, Monelli, Borlaff and Trujillo2020) showed that NGC 1052-DF4 is experiencing tidal disruption, and they infer that the contact between it and the nearby galaxy, NGC 1035, is most likely the cause for the stripping of dark matter. Keim et al. (Reference Keim, van Dokkum, Danieli, Lokhorst, Li, Shen and Abraham2022) also discovered evidence of tidal disruption observed in both NGC 1052-DF2 and NGC 1052-DF4, which strongly suggests a common origin for the removal of dark matter. However, they concluded that the most probable cause of these tidal disruptions is the central giant elliptical galaxy, NGC 1052, which lies between the two galaxies. More recently, Golini et al. (Reference Golini, Montes, Carrasco, Román and Trujillo2024) used ultra-deep images from the Gemini telescopes to explore tidal signatures in NGC 1052-DF2 and NGC 1052-DF4, finding no signs of tidal disruption, although NGC 0152-DF4 does appear to exhibit tidal tails. They, too, conclude that gravitational interactions may have removed the dark matter from NGC1052-DF4.

However, it is important to note that the claim of dark matter deficiency is based on dynamical modeling that assumes no rotation (Lewis et al. Reference Lewis, Brewer and Wan2020). Such rotation shifts the balance between pressure and rotational support, and hence, neglecting it will bias the inferred dark matter mass (Wasserman et al. Reference Wasserman, Romanowsky, Brodie, van Dokkum, Conroy, Abraham, Cohen and Danieli2018; Laudato & Salzano Reference Laudato and Salzano2022). Inspired by the work of Lewis et al. (Reference Lewis, Brewer and Wan2020) on NGC 1052DF2, a similar statistical analysis of NGC 1052-DF4’s globular clusters was undertaken. The primary objective of this study is to determine whether the globular cluster population rotates. The paper is structured as follows. Section 2 describes the data for the NGC 1052-DF4 globular cluster population. Section 3 presents the kinematic model employed in this paper, and Bayesian inference is also explained in this section. Bayesian inference was used to estimate the posterior probability distributions and the marginal likelihoods for various kinematic models of the globular clusters. Section 4 presents the findings, while Section 5 presents the effect on the estimated mass of NGC 1052-DF4. Finally, the discussion and conclusions are presented in Sections 6 and 7, respectively.

2. Data

Previous authors used the Hubble Space Telescope to discover the compact objects associated with NGC 1052-DF4 (van Dokkum et al. Reference van Dokkum, Danieli, Abraham, Conroy and Romanowsky2019). Using the technique described in van Dokkum et al. (Reference van Dokkum, Cohen, Danieli, Diederik Kruijssen, Romanowsky, Merritt and Abraham2018), SExtractor (Bertin & Arnouts, Reference Bertin and Arnouts1996) was used to assess the overall magnitudes, colors, and full width half maximum (FWHM) sizes of compact objects in the images. van Dokkum et al. (Reference van Dokkum, Cohen, Danieli, Diederik Kruijssen, Romanowsky, Merritt and Abraham2018) stated that compact objects with an I 814 magnitude smaller than 23, a V606 – I814 colour within the range between 0.20 and 0.43, and a FWHM value between 0.12” and 0.30” are considered to be likely globular clusters. Hence, by applying this method, van Dokkum et al. (Reference van Dokkum, Danieli, Abraham, Conroy and Romanowsky2019) found that, out of 11 candidates, only seven meet these criteria, with a mean overall magnitude with a I 814 value of 22.10 and an rms spread of 0.39 mag. These seven objects were subsequently confirmed as being associated with NGC 1052-DF4 using spectra from the low-resolution imaging spectrograph on the Keck I telescope. Information about the seven confirmed globular clusters of NGC 1052DF4 was available from van Dokkum et al. (Reference van Dokkum, Danieli, Abraham, Conroy and Romanowsky2019). For our purposes, the data consist of the positions of the clusters on the sky, the measured velocities of the clusters along the line of sight, and the uncertainties on these line-of-sight velocities. The positions and velocities of these seven clusters are shown in Figure 1.

3. Models and Bayesian inference

The kinematic model used to analyse the NGC1052-DF2 galaxy (Lewis et al., Reference Lewis, Brewer and Wan2020) is still used in this study. The line-of-sight velocity due to rotation is given by:

(1) \begin{align}{v_r}\left( \unicode{x03B8} \right) = A\ \mathrm{sin}\left( {\unicode{x03B8} -\unicode{x03D5} } \right),\end{align}

where A signifies the rotational amplitude and φ denotes how the rotation axis of the globular clusters is oriented. This choice of functional form for the rotational velocity has previously been called the V model, after Veljanoski et al. (Reference Veljanoski, Mackey, Ferguson, Huxor, Côté, Irwin and Tanvir2014). In other work, consideration was also given to the other two types of models, called F and S. However, in order to maintain continuity with the previous analysis of NGC 1052-DF2, we chose to employ model V in this analysis. Appendix A presents the details of the F and S models.

Bayesian inference is used throughout this work to determine the parameters’ posterior probability distributions based on the data analysed. The posterior distribution is provided by Bayes’s theorem:

(2) \begin{align}P\left( {\omega \;|\;D} \right) = \;\frac{{P\left( \omega \right)P{\rm{(}}D\;{\rm{|}}\omega )}}{{P\left( D \right)}}\end{align}

where ω is a vector of unknown parameters for which an inference is anticipated (since φ and $\unicode{x03B8}$ are used in this work to signify angles on the sky, ω was chosen to denote unknown parameters). The data are represented by D, the parameters’ prior probability distribution is defined by P(ω), P(D|ω) is the likelihood function, and P(D) is the marginal likelihood value, sometimes called the evidence. The prior distributions for unknown parameters are shown in Table 1.

Table 1. Table of prior probability distributions for the unknown parameters.

Figure 1. Positions of the NGC 1051-DF4 globular clusters relative to the center of the galaxy. The size and colour of the circle represent each globular cluster’s velocity along the line of sight; the larger the circle, the higher the absolute value of the velocity.

The measured velocities v i given the parameters are assumed to have a normal distribution with mean v r (θ) and dispersion of ${\sigma ^2} + {\sigma ^2}i$ as shown below:

(3) \begin{align}{v_i}|\omega \sim \mathrm{Normal}({v_r}\left( \unicode{x03B8} \right){\rm{ }} + {v_{sys}},{\sigma ^2} + {\sigma ^2}i),\end{align}

so the likelihood function can be expressed as

(4) \begin{align}L\left( \omega \right) = {\rm{\;}}\mathop \prod \limits_i \frac{1}{{\sqrt {2\pi \left( {{\sigma ^2}\; + \;\sigma _i^2} \right)} }}\;exp\left( { - \;\frac{{{{\left( {{v_i} - \left( {{v_r}\left( \unicode{x03B8} \right) + {v_{sys}}} \right)} \right)}^2}}}{{2\left( {{\sigma ^2}\; + \;\sigma _i^2} \right)}}} \right)\end{align}

The marginal likelihood or evidence is estimated using nested sampling introduced by Skilling (Reference Skilling, Fischer, Preuss and Von Toussaint2004) and expressed as follows:

(5) \begin{align}Z = \;\smallint L\left( \omega \right)\; \times \;\pi \left( \omega \right)d\omega \end{align}

where Z is the evidence (marginal likelihood), L(ω) represents the likelihood function, and π(ω) stands for the prior distribution. Since nested sampling computes the marginal likelihood for each model constructed, we are able to choose the most plausible model based on the highest marginal likelihood value (assuming equal prior probabilities) or propagate uncertainty about the model into any conclusions reached.

The Bayes Factor is subsequently computed to assess which model fits the data best after obtaining the marginal likelihood for each model. It is a ratio of the marginal likelihood of two models, and its value determines how strongly the data supports one model over another. The Bayes Factor is given by

(6) \begin{align}BF\!\left( {{M_1},\;{M_2}} \right) = \;\frac{{P{\rm{(}}D\;{\rm{|}}\;{M_1})}}{{P{\rm{(}}D\;{\rm{|}}\;{M_2})}}\end{align}

where the model is denoted by M i .

4. Results

4.1. Model 1: Non-rotational model

We first consider a scenario in which the globular cluster population does not rotate. Under this assumption, the amplitude A in equation (1) will be equal to zero, and hence the velocity v i is entirely dependent on the velocity dispersion σ. This leaves only two parameters to be estimated, σ and vsys. Table 2 displays the summary statistics of parameter estimates, and Figure 2 shows the posterior distributions for systematic velocity vsys and velocity dispersion σ. The distribution of σ is right-skewed, whereas the distribution of v sys is symmetric. Finally, this Non-Rotational Model has a marginal likelihood of ln Z = –25.6095 ± 0.1762.

Table 2. Posterior summary statistics of parameters for the Non-Rotation Model. The estimates presented in the table were the median value and the 68% central credible interval. All of the values were rounded to 2 d.p.

Figure 2. Corner plot of the parameters’ posterior distribution for the Non-Rotational Model.

4.2. Model 2: Rotational Model

The second model we considered includes a nonzero rotational amplitude A. The posterior distribution for the parameters of the Rotational Model is displayed in Figure 3. There is a rightskewed posterior distribution of parameters A and σ, with most probabilities accumulating between 0 km s–1and 7 km s–1and 0 kms–1and 6 kms–1, respectively. Furthermore, the posterior distribution of v sys is symmetric. Interestingly, the posterior distribution for φ is weakly bimodal, as there are multiple ways of dividing the globular clusters into a red-shifted half and a blue-shifted half (on average). Note that the apparent large bimodality is an artifact of the periodicity of the parameter space — the smaller, actual bimodality can be seen when angles are redefined to be centred around zero. The mean and median values of amplitude, A, are 4.88 km s–1and 4.07 km s–1, which are somewhat higher than those of velocity dispersion, σ. The summary statistics of parameter estimates are shown in Table 3, and the marginal likelihood of the Rotational Model is ln Z = –26.5079 ± 0.1919.

Figure 3. Corner plot of the parameters’ posterior distribution for the Rotational Model.

Table 3. Posterior summary statistics of parameters for the Rotational Model. The estimates presented in the table were the median value and the 68% central credible interval. All of the values were rounded to 2 d.p.

4.3. Model 3: Rotational Model with Alternative Priors

Finally, we considered the Rotational Model but with a more complex joint prior distribution for amplitude A, velocity dispersion σ, and systemic velocity vsys, rather than the simple uniform distributions used above. These priors model the idea that the rotational amplitude is likely not to be precisely zero but may be small, moderate, or large. Roughly speaking, the rotating and non-rotating (or, more accurately, hardly rotating) possibilities are here represented in the parameter space of a single parameter estimation problem, rather than being represented in two separate models, as we have done so far. The prior distribution stays the same for the orientation of the rotation axis φ. Table 4 presents the details of the alternative prior distribution of the parameters.

Table 4. Prior distributions for the parameters in the Rotational Model with Alternative Priors.

Figure 4 demonstrates a similar outcome to Figure 3; the posterior distribution of parameters A and σ is right-skewed, with the majority of the probabilities gathering between 0 kms–1 and 2 kms–1 and 0 kms–1 and 6 kms–1, respectively. Additionally, the posterior distribution of v sys shows that it is effectively zero (though it will never be precisely zero) and is still symmetric. Compared to the outcome of the Rotational Model, the amplitude, A, from this model, has a much lower value for the mean and median and is smaller than those values for the velocity dispersion, σ. In this case, the posterior distribution for φ is approximately equal to the prior distribution, as the angle becomes less important when the amplitude A is low, as it is here. The marginal likelihood of the Rotational Model with Alternative Priors is ln Z = –23.0067 ± 0.1014. Table 5 presents parameter estimation summary statistics.

Figure 4. Corner plot of the parameters’ posterior distribution for the Rotational Model with Alternative Priors.

4.4. Model comparison

The study will not compare the marginal likelihood of Model 3 (Rotational Model with Alternative Priors) to the other two models since it is intended to capture both possibilities within a single model. Table 6 shows that the marginal likelihood estimate for the Non-Rotational Model is slightly larger than the Rotational Model. The Bayes Factor of the Non-Rotational Model over the Rotational Model is calculated as below:

(7) \begin{align}BF\!\left( {{M_1},{M_2}} \right) & = \frac{{{\rm{exp}}\left( {\mathrm{log}\ P{\rm{(}}D\;{\rm{|}}\;{M_1}} \right))}}{{\exp ( \mathrm{log}\ P(D\;{\rm{|}}\;{M_2}))}}\nonumber\\[5pt]&= \frac{{\exp \left( { - 25.6095} \right)}}{{\exp \left( { - 26.5079} \right)}}\nonumber\\[5pt]&\approx 2.46\end{align}

where M1 is the Non-Rotational Model, and M2 is the Rotational Model. This Bayes Factor of around 2.5 indicates weak support for the Non-Rotational Model.

5. Mass of the galaxy

As stated in the introduction, the idea that the galaxy is dark matter deficient is supported by a mass estimate based on the assumption of no rotation. If a rotational signature is detected in the globular clusters in Section 4, the estimated dynamical mass of NGC 1052-DF4 will be affected, which would further affect conclusions about the quantity of dark matter in the galaxy. Therefore, the study investigated employing the same estimator that Lewis et al. (Reference Lewis, Brewer and Wan2020) used to estimate the overall mass of the NGC 1052-DF2 galaxy within a certain radius. The estimator is expressed as follows:

(8) \begin{align}M\left( {\; \lt r} \right) = \left( {\left( {{{\left( {\frac{{{v_{rot}}}}{{\sin \left( i \right)}}} \right)}^2} + \;{\sigma ^2}} \right)} \right)\frac{r}{G}\;\end{align}

where, v rot is the rotational velocity as given in equation (1), σ for velocity dispersion, and according to the standard astronomical definition, i is the rotation’s inclination angle. In this section, the amplitude, A, serves as the only representation of the rotating velocity, v rot. Moreover, r is the reference radius with a value of 7.5 kpc, and G is the Newtonian gravitational constant. According to Walker et al. (Reference Walker, Mateo, Olszewski, Peñarrubia, Evans and Gilmore2009) and Wolf et al. (Reference Wolf, Martinez, Bullock, Kaplinghat, Geha, Muñoz, Simon and Avedo2010), equation (8) can be considered as a lower estimate of the galaxy’s total mass because the more complicated mass estimators normally have a multiplication constant together with the square of the σ, which explains the internal mass distribution, and usually exceeds one. The mass estimator here is a function of the unknown parameters. To compute the posterior distribution for the mass, we applied the formula to each possible parameter vector in our posterior sample.

The posterior distribution of NGC 1052-DF4’s estimated mass with three different rotational inclinations is shown in Figure 5. This figure suggests that the estimated mass of NGC 1052-DF4 has right-skewed posterior distributions for all three inclination angles, with the majority of the probability falling between 0 and 108 solar masses. Moreover, the estimated mass of the NGC 1052-DF4 can reach as high as 6 × 108 solar masses. There is no substantial difference between the three density curves with different inclinations. This is reasonable as the amplitude, A, was very small or possibly zero, which caused the velocity dispersion, σ, to dominate in the equation (8) and result in the inclination becoming irrelevant.

Table 5. Posterior summary statistics of parameters for the model with Alternative Priors. The estimates presented in the table were the median value and the 68% central credible interval. All of the values were rounded to 2 d.p.

Table 6. Table of Marginal likelihood estimates for the Non-Rotational and Rotational Model. All of the values were round to 2 d.p.

Figure 5. Posterior distribution of the estimated mass of NGC 1052-DF4 with the different rotational inclination. The red curve represents a 90 o inclination, the blue dash curve has a 45 o inclination, and the green dot curve has a 30 o inclination.

Figure 6 displays the posterior distributions of the log amplitude-to-velocity-dispersion ratio, A/σ, with different inclinations. The distributions of A/σ with different inclinations are all remarkably similar, with the majority of the probability being for large negative values of the log ratio. This demonstrates that the NGC 1052-DF4 galaxy’s globular cluster population has a low probability of containing a significant rotating component and that estimates of its mass do not need to take any significant rotation into account.

Figure 6. Histograms of amplitude to velocity dispersion ratio with different rotational inclination. The first histogram figure displays a ratio distribution with a 90 o inclination, the second histogram plot illustrates a ratio distribution with a 45 o inclination, and the final histogram plot shows a distribution with a 30 o inclination.

6. Discussion

Through the fitting of three Bayesian models to the data, the rotational characteristics of the globular cluster population of NGC 1052-DF4 have been assessed. Standard uniform priors were used for the Non-Rotational Model and one of the Rotational Models, and under these assumptions, we performed a model comparison, finding that the Non-Rotational Model was favoured. As an alternative, using a more complex prior, we performed a similar analysis using only parameter estimation. In this latter case, the question being answered changed from “Is the amplitude zero or non-zero?” to “Is the amplitude small or large?”

The posterior distribution in Figure 3 reveals that a significant portion of the posterior probabilities for the rotational amplitude, A, and velocity dispersion, σ, are close to zero. This implies the rotational amplitudes of the globular clusters in NGC 1052-DF4 are extremely small. Moreover, the right-skewed posterior distribution of σ results from the small sample size, as high values of σ cannot necessarily be ruled out. Model 3 (Rotational Model with Alternative Priors) had a similar result for the amplitude of rotation, A, and velocity dispersion, σ. The 68% central credible interval for A extends from 0.00 kms–1 to only 1.19 kms–1. As can also be seen from Table 3, both of the estimations of the rotational amplitudes, A, are smaller than those for the velocity dispersion, σ.

As seen in Table 6, the Non-Rotational Model’s marginal likelihood is greater than that of the Rotational Model. Although the difference between the two is small, it does indicate that the data favor the Non-Rotational Model over the Rotational Model. However, according to the value (2.46) of the Bayes Factor calculated in equation (7), there is only weak evidence to support the Non-Rotation Model (guides for interpretation of Bayes Factors may be found in Kass and Raftery (Reference Kass and Raftery1995) and Penny et al. (Reference Penny, Mattout, Trujillo-Barreto, Friston, Ashburner, Kiebel, Nichols and Penny2007)). In other words, the rotation of NGC 1052-DF4’s globular clusters is not completely ruled out. However, if it does exist, it is small.

Based on equation (1), the amplitude is directly proportional to the rotational velocity. Also, from equation (5), it can be seen that the rotational velocity and the velocity dispersion, σ, are directly related to the mass of the galaxy. Consequently, a low amplitude value (around 0) and a slightly larger value of σ indicate that the globular cluster rotational velocities will likewise be small, resulting in a very low estimated mass of the NGC 1052-DF4 galaxy, which is about the same as in the previous study (van Dokkum et al. Reference van Dokkum, Danieli, Abraham, Conroy and Romanowsky2019). Hence, these results further imply that the NGC 1052-DF4 galaxy contains little dark matter, which is consistent with the result of a newly published paper from Shen et al. (Reference Shen, van Dokkum and Danieli2023). As mentioned in Section 1, Golini et al. (Reference Golini, Montes, Carrasco, Román and Trujillo2024) found that NGC 0152-DF4 exhibits tidal tails, which explains the low quantity of dark matter in the galaxy.

7. Conclusions

In this paper, we tested the existence of a rotating element by analysing the rotational features of the seven globular clusters in NGC 1052-DF4. After comparing the marginal likelihood and calculating the Bayes Factor of the Non-Rotational Model versus the Rotational Model, we find that the Non-Rotational Model is weakly preferred by a Bayes Factor of about 2.5. The outcome of the Rotational Model with Alternative Priors provides more evidence that the globular cluster populations of NGC 1052-DF4 do not rotate significantly. The result from this study is consistent with the previous study (van Dokkum et al. Reference van Dokkum, Danieli, Abraham, Conroy and Romanowsky2019). Furthermore, this result supports the conclusion that there is little dark matter in the NGC 1052-DF4 galaxy since mass estimates to not need to be modified to take rotation into account. This result is also consistent with the recent study from Golini et al. (Reference Golini, Montes, Carrasco, Román and Trujillo2024) and reinforces the conclusion from Shen et al. (Reference Shen, van Dokkum and Danieli2023).

Acknowledgement

We thank the anonymous referee for helpful comments which assisted us in improving this manuscript.

Funding statement

This research received no external funding.

Competing interests

None.

Data availability statement

Any reasonable request will be granted access to the data used in this work.

Appendix A. Other Kinematic Models

In this paper, we considered applying three different types of models (Table A1) to analyze the rotational features of NGC 1052-DF4’s globular cluster population:

  • Veljanoski et al. (Reference Veljanoski, Mackey, Ferguson, Huxor, Côté, Irwin and Tanvir2014) introduced the model V. This model takes into account a rotational velocity with a constant amplitude that is affected by angular dependence.

  • In the S model, the globular cluster population rotates like a solid body, and the velocity increases linearly with respect to the rotation axis.

  • According to Model F, the rotation of the globular clusters is asymptotically flat. It is predicted that the velocity approaches a constant value away from the rotation axis, comparable to the rotation curve of spiral galaxies.

Although Model F had the highest marginal likelihood estimates for both the Rotation Model and the Rotation Model with Alternative Priors, the difference is incredibly small when compared to the marginal likelihood estimates from Model V for both the Rotation Model and the Rotation Model with Alternative Priors (Table A2). However, for consistency with the earlier study of NGC 1052-DF2, which used Model V, we have decided to use model V for this study. The main conclusions of the paper are not sensitive to the choice of rotation model.

Table A1. Table of the three models’ expressions for rotational velocity.

Table A2. Table of marginal likelihood estimates for the models. Here, model 2 is represented as the Rotation Model, and Model 3 is the Rotation Model with Alternative Priors. Model F is the one that the data favours the most out of the three models. Because the study assumes the globular clusters are not rotating in the Non-Rotation Model, the comparison of the Non-Rotation Model among the three models is meaningless. As a result, amplitude A will be zero in all V, S, and F models, providing the same outcomes for all three models. All of the values were rounded to 2 d.p.

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Figure 0

Table 1. Table of prior probability distributions for the unknown parameters.

Figure 1

Figure 1. Positions of the NGC 1051-DF4 globular clusters relative to the center of the galaxy. The size and colour of the circle represent each globular cluster’s velocity along the line of sight; the larger the circle, the higher the absolute value of the velocity.

Figure 2

Table 2. Posterior summary statistics of parameters for the Non-Rotation Model. The estimates presented in the table were the median value and the 68% central credible interval. All of the values were rounded to 2 d.p.

Figure 3

Figure 2. Corner plot of the parameters’ posterior distribution for the Non-Rotational Model.

Figure 4

Figure 3. Corner plot of the parameters’ posterior distribution for the Rotational Model.

Figure 5

Table 3. Posterior summary statistics of parameters for the Rotational Model. The estimates presented in the table were the median value and the 68% central credible interval. All of the values were rounded to 2 d.p.

Figure 6

Table 4. Prior distributions for the parameters in the Rotational Model with Alternative Priors.

Figure 7

Figure 4. Corner plot of the parameters’ posterior distribution for the Rotational Model with Alternative Priors.

Figure 8

Table 5. Posterior summary statistics of parameters for the model with Alternative Priors. The estimates presented in the table were the median value and the 68% central credible interval. All of the values were rounded to 2 d.p.

Figure 9

Table 6. Table of Marginal likelihood estimates for the Non-Rotational and Rotational Model. All of the values were round to 2 d.p.

Figure 10

Figure 5. Posterior distribution of the estimated mass of NGC 1052-DF4 with the different rotational inclination. The red curve represents a 90o inclination, the blue dash curve has a 45o inclination, and the green dot curve has a 30o inclination.

Figure 11

Figure 6. Histograms of amplitude to velocity dispersion ratio with different rotational inclination. The first histogram figure displays a ratio distribution with a 90o inclination, the second histogram plot illustrates a ratio distribution with a 45o inclination, and the final histogram plot shows a distribution with a 30o inclination.

Figure 12

Table A1. Table of the three models’ expressions for rotational velocity.

Figure 13

Table A2. Table of marginal likelihood estimates for the models. Here, model 2 is represented as the Rotation Model, and Model 3 is the Rotation Model with Alternative Priors. Model F is the one that the data favours the most out of the three models. Because the study assumes the globular clusters are not rotating in the Non-Rotation Model, the comparison of the Non-Rotation Model among the three models is meaningless. As a result, amplitude A will be zero in all V, S, and F models, providing the same outcomes for all three models. All of the values were rounded to 2 d.p.