Introduction
When low-amplitude waves interact with a material with a complicated structure, linear elasticity theory explains the resulting waveforms well. The system is well described by the linear wave equation, derived from Hooke’s law and conservation of translational momentum and the wave speed is determined by the second-order elastic constants. However, as the wave amplitude gets larger, nonlinear effects become important. In particular, a large wave can change the properties of the material, resulting in speed changes of other waves traveling within the sample simultaneously. The magnitude and variability of these wavespeed changes are known to be sensitive to the microstructure of the material, but the details of that dependency are not completely understood. These phenomena are particularly important in rocks, as studied here.
We use wave mixing experiments wherein a strong PUMP wave perturbs the properties of a rock sample. We sense those perturbations by measuring the traveltime change of a smaller-amplitude probe wave. This is a type of PUMP/probe experiment, which is a classic (Hughes & Kelly, Reference Hughes and Kelly1953), yet powerful, style of experiment that includes the relatively new dynamic acousto-elastic testing (DAET) method (Lott et al., Reference Lott, Payan, Garnier, Vu, Eiras, Remillieux, Le Bas and Ulrich2016a; Reference Lott, Remillieux, Le Bas, Ulrich, Garnier and Payan2016b; Reference Lott, Remillieux, Garnier, Le Bas, Ulrich and Payan2017; Muir et al. Reference Muir, Cormack, Slack and Hamilton2020; Remillieux et al., Reference Remillieux, Ulrich, Goodman and Ten Cate2017; Renaud et al., Reference Renaud, Calle, Remenieras and Defontaine2008; Reference Renaud, Le Bas and Johnson2012; Rivière et al., Reference Rivière, Renaud, Guyer and Johnson2013; Reference Rivière, Shokouhi, Guyer and Johnson2015; Sens-Schönfelder & Eulenfeld, Reference Sens-Schönfelder and Eulenfeld2019). In DAET, a resonant mode (PUMP) is excited in the sample, and then analyzed with a high-frequency probe wave. Instead of resonant modes, we use transient waves (Gallot et al., Reference Gallot, Malcolm, Szabo, Brown, Burns and Fehler2015). Earlier work suggests that the nonlinear response depends on the sample’s layering orientation (TenCate et al., Reference TenCate, Malcolm, Feng and Fehler2016). Modeling for this particular experiment is a challenge because the sample experiences two dynamic forces (PUMP, probe) and one static force (press); the closest existing models consider only the PUMP and probe (Gallot et al., Reference Gallot, Malcolm, Szabo, Brown, Burns and Fehler2015; Rusmanugroho et al., Reference Rusmanugroho, Darijani and Malcolm2020).
We aim to separate the crack-induced signals from the intrinsic anisotropy by running PUMP/probe experiments repeatedly on a layered rock sample under different uniaxial loads. We use two samples of the same Crab Orchard Sandstone—with different layering orientations, as used by TenCate et al. (Reference TenCate, Malcolm, Feng and Fehler2016). Applying a load to the samples, we look for differences in the evolution of the signals with load that correlate with layering orientation; these kinds of correlations would be evidence supporting cracks as the driving mechanism. Viswanathan et al. (Reference Viswanathan, Ajo-Franklin, Birkholzer, Carey, Guglielmi, Hyman, Karra, Pyrak-Nolte, Rajaram, Srinivasan and Tartakovsky2022) give a thorough literature overview related to crack behavior Reference Viswanathan, Ajo-Franklin, Birkholzer, Carey, Guglielmi, Hyman, Karra, Pyrak-Nolte, Rajaram, Srinivasan and Tartakovsky2022.
Ours is the first instance of this particular experimental configuration being performed under applied load, and the first to look at the orientation dependence of the responses; some data presented herein were part of a conference presentation by Hayes et al. (Reference Hayes, Malcolm, Moravej and Butt2018). It builds on: classical nonlinear resonance studies under different loads and saturation conditions (Zinszner et al., Reference Zinszner, Johnson and Rasolofosaon1997), pressure-dependent DAET studies (Rivière et al., Reference Rivière, Pimienta, Scuderi, Candela, Shokouhi, Fortin, Schubnel, Marone and Johnson2016), and experiments that monitor velocity changes with different confining pressures (Simpson et al., Reference Simpson, van Wijk and Adam2021). These earlier works suggest an exponential decrease in nonlinearity with increasing load, with a characteristic pressure ~10 MPa for sandstones (Rivière et al., Reference Rivière, Pimienta, Scuderi, Candela, Shokouhi, Fortin, Schubnel, Marone and Johnson2016) and ~1 MPa for rocks from an active fault zone (Simpson et al., Reference Simpson, van Wijk and Adam2021).
Theory
Our experiments measure the change, $ \Delta M $ , one wave makes in the elastic modulus, $ M $ , sensed by another wave (S-wave probe has $ M=\mu $ ; P-wave probe has $ M=\lambda +2\mu $ , where $ \mu $ is the shear modulus and $ \lambda $ the Lamé paramter). The modulus time dependence has already been studied (Gallot et al., Reference Gallot, Malcolm, Szabo, Brown, Burns and Fehler2015). We focus on how $ \Delta M $ changes with applied load, $ P $ , with experiments at different values of $ P $ . We use the maximum of $ \Delta M $ over time $ t $ to recover $ \Delta M(P) $ , and fit our data to an exponential model (Rivière et al., Reference Rivière, Pimienta, Scuderi, Candela, Shokouhi, Fortin, Schubnel, Marone and Johnson2016),
where $ {P}_0 $ is the characteristic load.
Sample description
We examine two samples of Crab Orchard Sandstone (COS) from Cumberland, Tennessee, which is beige, fine-grained, and cross-bedded with subrounded grain shapes and no preferred grain alignment. The rock is compositionally and texturally mature (composition: 80% quartz, 10% orthoclase, 9% cement (clays and micas), 1% mica). Though the bedding layers have thicknesses in millimeter range, this alignment is not visible in sub-mm-scale scanning-electron micrographs. Sample parameters (length in each dimension, density, P- and S-wave velocities, and $ x $ - and $ y $ -anisotropy) are listed in Table 1. Sample 1 has horizontal layers, and sample 2 has vertical layers. Pictures of the samples and scanning electron microprobe images are given in Figure S.1 in the Supplementary Material.
Note. Dimensions were measured with calipers. Velocities were measured via probe transducers by measuring the P- and S-wave traveltimes across the sample in all three dimensions. $ {L}_j $ is the length along the $ j\mathrm{th} $ axis; $ {V}_{Mj} $ is the velocity of wave mode M (P or S) propagating in direction $ j $ ; $ {\gamma}_M $ is the M-mode anisotropy.
Methods
Figure 1 shows our experimental setup and Table 2 summarizes the experimental parameters. We use an established experimental setup (Gallot et al., Reference Gallot, Malcolm, Szabo, Brown, Burns and Fehler2015; Khajehpour Tadavani et al., Reference Khajehpour Tadavani, Poduska, Malcolm and Melnikov2020; TenCate et al., Reference TenCate, Malcolm, Feng and Fehler2016) and place it inside a hydraulic press. Using this setup, we report two types of data.
Abbreviations: amp, amplitude (peak-to-peak voltage) of the input signal before going through the (50×) amplifier; $ \lambda $ , wavelength.
The first data are velocities and anisotropies as a function of applied load (shown in Figure 2). These are computed from measured traveltimes of the corresponding wave. Anisotropy is defined as the percentage difference in velocities between the two horizontal directions. Note that there is a difference in frequency between velocities measured along the $ x $ - and $ y $ -directions.
The second data are from PUMP/probe experiments that use a high-amplitude S-wave PUMP signal (propagating along the $ x $ -direction with polarization in the $ y $ -direction) to perturb the rock. We measure the resulting traveltime delay using two different probes: a P-wave (propagating and polarized along the $ y $ -direction), and an S-wave probe (propagating along the $ y $ -direction with polarization in the $ z $ -direction). These delays are measured by cross-correlating signals recorded with and without the PUMP wave. A single traveltime delay measurement gives one data point on the plots in Figure 3. Each measurement (each point on the $ x $ -axis) represents a different transmission delay between when the PUMP wave is sent into the rock sample and when the probe wave is sent into the rock sample. As such, it measures traveltime delays caused by different phases of the traveling PUMP wave. Further experimental details, including rationales for frequency choices and travel time delay details, are discussed in Section S.1 in the Supplementary Material, and detailed parameter settings are given in Section S.2. in the Supplementary Material.
This design is similar to DAET, except that our PUMP wave is a propagating S-wave, not a resonance mode. A detailed experimental protocol is available here: https://doi.org/10.17504/protocols.io.14egn71zyv5d/v1. We use a probe signal that is two orders-of-magnitude weaker in strain (~10−8) relative to the PUMP (10−6). Details of this strain measurement appear in Section S.3. in the Supplementary Material.
Loading protocols
We repeated our experiments at 5–6 uniaxial loads for each sample and probe type. A hydraulic press provided the load (Figure 1). The sample, along with spacers, was placed in the cell between two stainless steel plates to promote uniform load distribution. The press pistons applied a constant force with a sequence of hydraulics, with the applied load being this force divided by the sample area. We applied the load in steps: raising the force to have a 1 MPa load on the sample and collecting data for both the P and S probes, then releasing the force, then raising the force to 2 MPa and recording the next data set, continuing up to 15 MPa for sample 1 and 18 MPa for sample 2. The additional load for sample 2 was necessary because of the reversal between 10 and 15 MPa. Although the steel plates help to distribute the strain uniformly throughout the sample, we do not expect the strain to be uniform throughout. We do expect it to be distributed similarly at different loads and among different samples.
Results
Velocities and amplitudes
As a precursor to the nonlinear wave mixing data, we first assessed changes in velocity, anisotropy, and PUMP amplitude with applied load (Figure 2).
We measured the travel times of four waves from which we obtained four velocities: $ {v}_{yy} $ (P-probe), $ {v}_{yz} $ (S-probe), $ {v}_{xy} $ (S-PUMP), and $ {v}_{xx} $ (P-wave generated by S-PUMP transducer). We use a standard method for these measurements (Yurikov et al., Reference Yurikov, Nourifard, Pervukhina and Lebedev2019), which is summarized in Section S.1 in the Supplementary Material. In Figure 2a, all measured velocities increase as a function of applied load, except for a slight decrease for sample 1 velocities at low loads.
Nonlinear responses
For each sample and applied load, we performed two kinds of nonlinear wave-mixing experiments: P-wave probe, and S-wave probe. Figure 3 shows measured travel time delays (in ns) as a function of the transmission delay time (in $ \mu $ s) between when the PUMP and probe waves were initiated.
Figure 3 shows two clear frequency components in the time delay versus transmission delay data (as reported in similar experiment designs (Gallot et al., Reference Gallot, Malcolm, Szabo, Brown, Burns and Fehler2015; TenCate et al., Reference TenCate, Malcolm, Feng and Fehler2016)). The first component follows the total envelope of the PUMP wave pulse, while the second higher-frequency component matches the period of the PUMP wave (90 kHz).
The component due to the PUMP envelope explains why there is a net rise in time delay with transmission delay for only some PUMP/probe combinations (cf. Figure 3(a) and (b)). The probe senses the increasing or decreasing part of the PUMP envelope depending on sample geometry and the relative locations of the PUMP and probe transducers. Thus, (a) shows the onset of the PUMP/probe interaction, whereas (b) shows the tail-end of the interaction as the PUMP pulse passes out of the interaction region in the center of the sample. In this envelope part of the time delay versus transmission delay data, others have found changes with sample orientation (TenCate et al., Reference TenCate, Malcolm, Feng and Fehler2016). We discuss this orientation dependence further in Section S.6 in the Supplementary Material.
For the second, higher-frequency (90 kHz) component, we filtered the travel time delay data (Butterworth bandpass filter, corner frequencies 50 and 150 kHz), and then recorded the maximum. However, there is no consistent trend in this 90 kHz component; previous work has also shown this component to be independent of sample orientation (TenCate et al., Reference TenCate, Malcolm, Feng and Fehler2016). What controls the signal at 90 kHz remains an open question.
In summary, the envelope of the travel time delays decreases as a function of applied load for all experiments, except for the S-probe in sample 2.
Linking modulus to applied load
Since we measured traveltime (and thus modulus) change for many different transmission delays, we reduced these data to a single number as a function of applied load. To do this, we extracted the maximum traveltime delay (and thus change in modulus) for each applied load, and fit the resulting data sets to this simple model (Figure 4). For sample 2 with the S-probe, there is no modulus change before 10 MPa; thus, the fit includes only 10, 15, and 18 MPa. The characteristic load for each probe and sample type are shown in the insets of Figure 4; these are consistent within our experimental errors. The values agree with those recovered on sandstones (Rivière et al., Reference Rivière, Pimienta, Scuderi, Candela, Shokouhi, Fortin, Schubnel, Marone and Johnson2016), but they are different from those recovered for metamorphic rocks (Simpson et al., Reference Simpson, van Wijk and Adam2021).
Conclusions
We present a data set showing the evolution of the nonlinear interaction of different wave types as a function of applied uniaxial load. We find a characteristic load that is consistent with literature results for other samples measured with different experimental configurations. We observe no dependence on layer orientation in the response to load. Although we do observe dependence of the nonlinear response on the direction of layering, we cannot exclude differences between samples as the cause of this difference. This indicates that the controlling mechanism may not be cracks, but another structure aligned with the layering.
Open peer review
To view the open peer review materials for this article, please visit http://doi.org/10.1017/exp.2022.24.
Supplementary materials
To view supplementary material for this article, please visit http://doi.org/10.1017/exp.2022.24.
Data availability statement
Data are openly available via the Memorial Dataverse repository Malcolm and Poduska (Reference Malcolm and Poduska2021): Malcolm, Alison; Poduska, Kristin M., 2021, “Nonlinear Wave Mixing as a Function of Applied Load,” https://doi.org/10.5683/SP3/CZXST1, Scholars Portal Dataverse, V1. The experimental method is published on protocols.io at https://www.protocols.io/edit/pump-probe-experiment-cbvxsn7n.
Acknowledgments
Computational support from ComputeCanada and ACENET is gratefully acknowledged.
Author contributions
A.E.M., L.C., and S.B. designed the study. L.C. and K.M. carried out the experiments in a lab managed by S.B. K.M.P., A.E.M., A.M. processed the data, discussed and wrote up the results.
Funding statement
This work is supported by Chevron and with grants from the Natural Sciences and Engineering Research Council of Canada (NSERC) Industrial Research Chair Program and Discovery Grants program, as well as InnovateNL.
Conflict of interest
The authors have no conflicts of interest to declare.
Comments
Comments to the Author: This is an excellent report on new experiments to improve our understanding of nonlinearity in earth materials, which could be important for earthquake rupture processes and volcanic eruptions, for example, and should be published.
It tests the hypothesis that microfractures are a dominant factor in said nonlinearity, but the conclusions of the experiments suggest other factors may be at play. The assumption in this paper, and the 2016 Ten Cate et al. paper in GRL is that the fractures in the samples are aligned with bedding. This orientation is a finding by Benson et al, 2005. However, the experiments here do not see the correlation between aligned fractures and nonlinearity. Could it be the fractures are not preferentially aligned after all? Figure 2 in this paper does not clearly show the opening of these fractures with load in the linear (p-wave) velocities and total anisotropy, either. Assuming the orientation of the cracks is along the bedding, would the authors not expect in sample 1 the linear P-wave velocity to decrease and anisotropy to increase with load? At least more than in sample 2? The biggest increase in anisotropy is sample 2, P probe. Could it be the bedding is controlling the anisotropy and fractures are not aligned (with the bedding) to explain the consistency in the nonlinear experiments?
Final question is about the total amount of nonlinearity: While the characteristic load is constant, sample 1 appears to be more nonlinear (up to 0.2 percent) than sample 2 (less than 0.15 percent). Is there more to the difference between the samples than the orientation of the cut, or is this difference in total nonlinearity negligible?