Abstract
The experimental results of LEAP (Liquefaction Experiments and Analysis Projects) centrifuge test replicas of a saturated sloping deposit are used to assess the sensitivity of soil accelerations to variability in input motion and soil deposition. A difference metric is used to quantify the dissimilarities between recorded acceleration time histories. This metric is uniquely decomposed in terms of four difference component measures associated with phase, frequency shift, amplitude at 1 Hz, and amplitude of frequency components higher than 2 Hz (2 + Hz). The sensitivity of the deposit response accelerations to differences in input motion amplitude at 1 Hz and 2 + Hz and cone penetration resistance (used as a measure reflecting soil deposition and initial grain packing condition) was obtained using a Gaussian process-based kriging. These accelerations were found to be more sensitive to variations in cone penetration resistance values than to the amplitude of the input motion 1 Hz and 2 + Hz (frequency) components. The sensitivity functions associated with this resistance parameter were found to be substantially nonlinear.
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1 Introduction
The Liquefaction Experiments and Analysis Projects (LEAP ) are an ongoing series of international collaborations to produce high-quality (centrifuge) experimental data of saturated soil systems and to use this data to validate and assess the performance of constitutive models and numerical tools used in soil liquefaction analyses (Manzari et al. 2018). In 2017, the LEAP exercise involved repeating the same centrifuge test of a sloping deposit at nine centrifuge facilities in China (Zhejiang University, ZJU), France (Institut Français des Sciences et Technologies des Transports, de l’Aménagement et des Réseaux, IFSTTAR), Japan (Ehime University and Kyoto University, KyU), Korea (KAIST University), Taiwan (National Taiwan University, NCU), the UK (Cambridge University, CU), and the USA (UC Davis, UCD, and Rensselaer, RPI). In addition to the main goal of numerical model validation, the tests are aimed at assessing the repeatability, reproducibility, and sensitivity of experimental results among the different facilities.
Assessing the repeatability and reproducibility of the conducted centrifuge experiments requires metrics to quantify the similarities and differences among both the recorded input motions and the responses of the test replicas. A sensitivity analysis may then be used to evaluate how the different input motions and other uncertainties affect the observed soil response. This article proposes a new approach to identify and quantify the differences between time histories of input or response quantities, such as accelerations, velocities, and displacements, provided by experiments and centrifuge tests. The differences are decomposed in terms of measures associated with phase, frequency shift, amplitude at 1 Hz, and amplitude of frequency components higher than 2 Hz (2 + Hz). This approach is used herein to assess the differences and similarities between input accelerations achieved during 26 centrifuge test replicas of the same sloping deposit and evaluate the sensitivity of the experimental results to differences in input motion and deposition.
2 Experiment Overview
The LEAP-2017 centrifuge model is a deposit of Ottawa F-65 sand sloping at an angle of 5° to the horizontal and having a height of 4 m at mid-slope (Fig. 7.1). The sand was deposited through pluviation in a level rigid container to achieve a range of mass densities (with a reference mean value of 1652 kg/m3). The corresponding relative densities varied from about 50 to 85% (evaluated using the minimal and maximal densities reported by Kutter et al. (2018, 2019), as displayed in Fig. 7.2). The deposits were saturated with a viscous fluid to achieve the same prototype hydraulic conductivity at the nine facilities. The models were instrumented with an extensive array of accelerometers (AH1–AH12, AV1, and AV2, with AH11 and AH12 measuring the horizontal input motion at the base of the model) and pore pressure transducers (P1 to P10), as shown in Fig. 7.1. Surface markers were used to measure the permanent lateral displacements (by surveying the location of the markers before and after shaking, as described in Kutter et al. 2018). A CPT (cone penetration test) was used during most of the centrifuge tests to characterize the deposit conditions before and after shaking. A comprehensive description of the model and experimental conditions is given by Kutter et al. (2018).
A total of 24 centrifuge test replicas of the sloping deposit were conducted at the 9 centrifuge facilities during LEAP-2017 (Carey et al. 2019; Escoffier and Audrain 2019; Hung and Liao 2019; Kim et al. 2019; Korre et al. 2019; Liu et al. 2019; Madabhushi et al. 2019; Okamura and Nurani Sjafruddin 2019; Vargas Tapia et al. 2019). The centrifuge models were subjected to input motions aimed at achieving base accelerations with different levels of closeness to a prescribed reference motion, as shown in Fig. 7.3. This figure also shows the input motions of two tests termed RPI0 and RPI4. RPI0 was conducted during LEAP-2015 (Kokkali et al. 2019). RPI0 and RPI1 were intended to be replica of each other. RPI4 was conducted in 2018 and was planned to be for a loose soil model (with an achieved Dr = 40%). A qualitative assessment of the recorded motions reveals that the obtained input accelerations have different levels of similarities and differences. These differences are due to variability in equipment (e.g., shaker actuators) along with other unknown uncertainties and lead to dissimilarities in input amplitude, phase, and frequency contents. The recorded soil accelerations also showed a significant level of variability among the different centrifuge tests, as illustrated by the AH4 motions in Fig. 7.4. In addition to the dispersion in input motions, the response accelerations were also affected by the variability in properties and characteristics of the analyzed soil deposits (such as the relative density, as shown in Fig. 7.2), which, from a broad perspective, may lead to amplification, de-amplification, changes in response frequency and phase, and possibly other aspects of variations in soil accelerations.
3 Difference Metrics
A validation exercise of soil liquefaction computational tools involves (in addition to other requisites (Oberkampf and Roy 2010)) (1) an assessment of the similarities and differences in achieved input motions and recorded responses and (2) a sensitivity analysis to quantify how the different uncertainties in input and initial conditions affect soil response. Metrics are needed to quantify the level of consistency in input motions, compare the responses of the test replicas, and evaluate the level of agreement between experimental and numerical results. A number of metrics have been used by researchers to assess differences among dynamic time histories (e.g., accelerations), ranging from a simple vector norm to the Sprague and Geers metric (Geers 1984) which identifies magnitude and phase difference components, along with others. A brief overview of these metrics and some of the associated characteristics are discussed by Zeghal et al. (2018). This article uses a new approach (Zeghal et al. 2018). The difference dij between two corresponding acceleration time histories ai = ai(t) and aj = aj(t) of two different test replicas i and j is quantified using a normalized mean squared deviation (MSD ):
in which t is time and W is length of a time window of interest. This metric is normalized so that it varies between 0 and 1. A dij metric approaching zero means that the two accelerations are essentially the same, whereas a metric of 1 is obtained, for instance, when two pure sinusoidal motions are 180 degrees out of phase with each other. The measure dij is decomposed in terms of four specific fundamental components, namely, phase, frequency shift, amplitude at 1 Hz, and amplitude of frequency components higher than 2 Hz (referred to as 2 + Hz):
with:
in which f is frequency; Ai and Aj are the Fourier transforms of ai and aj, respectively; and \( {A}_i^{\ast } \) refers to the complex conjugate of Ai. The phase component \( {d}_{ij}^{\mathrm{phase}} \) reflects differences due to dissimilarities in acceleration phase angles. The shape component \( {d}_{ij}^{\mathrm{shape}} \) quantifies the difference associated with the geometrical shape (i.e., wave form and amplitude). DFW refers to a dynamic frequency warping (Goswami 2019), which is similar in concept to the dynamic time warping (DTW ) used in speech recognition (Rabiner and Huang 1993). The use of DFW enables isolation of the magnitude differences associated with (slight) shifts in acceleration frequencies. For the LEAP-2017 input accelerations, the shape components were decomposed further:
in which \( {d}_{ij}^{\mathrm{shape}\left(1\mathrm{Hz}\right)} \) quantifies the shape (i.e., amplitude in this case) differences for the dominant 1 Hz component and \( {d}_{ij}^{\mathrm{shape}\left(2+\mathrm{Hz}\right)} \) quantifies the difference related to the components at frequencies higher than 2 Hz (with the largest contribution often associated with the 3 Hz component). The frequency shift component \( {d}_{ij}^{F\mathrm{shift}} \)evaluates the difference stemming from variability in frequency of the acceleration components.
These metrics were verified using simple synthetic acceleration time histories with prescribed differences and were found to be effective (difference) identification and quantification tools (Goswami 2019). Also, the four difference metrics were used to evaluate equivalent (average) differences in amplitude at 1 Hz, amplitude for the 2 + Hz components, phase angle, and a shift in frequency at 1 Hz (referred to as \( {\Delta A}_{ij}^{1\mathrm{Hz}},\Delta {A}_{ij}^{2+\mathrm{Hz}} \), ΔΦij, and ΔFij, respectively) to characterize and quantify the specific factors responsible for the observed differences in accelerations. The details of this evaluation are presented in Goswami (2019). The relative values of the different metrics \( {d}_{ij}^{\mathrm{shape}\left(1\mathrm{Hz}\right)} \), \( {d}_{ij}^{\mathrm{shape}\left(2+\mathrm{Hz}\right)} \), \( {d}_{ij}^{\mathrm{phase}} \), and \( {d}_{ij}^{F\mathrm{shift}} \)and the differences \( {\Delta A}_{ij}^{1\mathrm{Hz}},\Delta {A}_{ij}^{2+\mathrm{Hz}} \), ΔΦij, and ΔFij can be used as indicators to ascertain the difference that prevails.
3.1 Input Motion Differences
An analysis was conducted to assess the differences among the reference acceleration and the input motions that were recorded during the 26 centrifuge tests. First, the input motions were all cross-correlated to determine a consistent common time t = 0 for all the experiments. This eliminated all phase differences that are associated with a simple shift in the origin of time. The computed total differences dij provided quantitative measures with numerical values varying from about 0.01 to 0.25, as exhibited in Fig. 7.5. In this figure, a 3D bar graph is used to display the whole set of difference metrics among the 26 recorded accelerations and the reference motion.
Overall, the input accelerations can be divided into three groups according to the difference metric values (Fig. 7.5): (1) Group 1 of accelerations that closely match the reference motion and also each other with dij = 0.00 to about 0.03, (2) Group 2 of accelerations that have an average match to the reference motion (and among the group) with dij = about 0.03 to 0.08, and (3) Group 3 of accelerations that do not closely match the reference motion and also each other with dij = about 0.08 to 0.25. Note that Group 3 includes the motion RPI3 (corresponding to the acceleration termed 5 in Fig. 7.5) which was generated so that it includes intentionally a significant 3 Hz component. The motions that are in a close match provide information that may be used, for instance, to assess reproducibility, while those with a loose match are advantageous in evaluating the sensitivities of the experiments to variation in input motions.
The total difference metrics were decomposed into 1 Hz amplitude, 2 + Hz amplitude, phase, and frequency shift component measures to assess the nature of the associated dissimilarities and reasons for these differences, as shown in Fig. 7.6. This figure also shows the quantitative values of the corresponding differences \( {\Delta A}_{ij}^{1\mathrm{Hz}},\kern0.5em {\Delta A}_{ij}^{2+\mathrm{Hz}} \), ΔΦij, and ΔFij among the accelerations. The decomposition shows that the difference metrics are overall comparable in values, with \( {d}_{ij}^{\mathrm{shape}\left(1\mathrm{Hz}\right)} \) being somewhat lower and \( {d}_{ij}^{F\mathrm{shift}} \) slightly higher than the other metrics. There is, however, a group of about five input accelerations that have relatively larger difference metrics (than the rest of the motions). The \( {d}_{ij}^{\mathrm{shape}\left(2+\mathrm{Hz}\right)} \) values clearly show that there are four input motions which have larger difference metrics with the rest of the accelerations and are consistent with the visual assessment provided by Fig. 7.3. Figure 7.6 also shows the quantitative values of the differences \( {\Delta A}_{ij}^{1\mathrm{Hz}},{\Delta A}_{ij}^{2+\mathrm{Hz}} \), ΔΦij, and ΔFij among the accelerations. The differences in phase angle ΔΦij and frequency ΔFij are relatively minor from a practical perspective. The substantially low values of ΔΦij are explained by the use (in the conducted analyses) of a consistent common time t = 0 for all the experiments and the fact that all experiments properly achieved an input motion with a dominant 1 Hz component. The \( {\Delta A}_{ij}^{1\mathrm{Hz}} \)and \( \Delta {A}_{ij}^{2+\mathrm{Hz}} \)were more significant (especially for a set of about six input motions), even though the corresponding difference metrics were not substantially large. This is explained by the lower sensitivity of the total difference metric dij to \( {\Delta A}_{ij}^{1\mathrm{Hz}} \) and \( \Delta {A}_{ij}^{2+\mathrm{Hz}} \) (compared to ΔΦij and ΔFij). Overall, the \( \Delta {A}_{ij}^{2+\mathrm{Hz}} \) values were larger than those of \( {\Delta A}_{ij}^{1\mathrm{Hz}} \) and were as large as 0.6 m/s2. A summary of the differences \( {\Delta A}_{ij}^{1\mathrm{Hz}} \) and \( {\Delta A}_{ij}^{2+\mathrm{Hz}} \) between the reference and input motions is presented in Fig. 7.7.
3.2 Response Motion Differences
The total discrepancy measures and corresponding components were evaluated for the recorded soil responses at different depths. Herein, only the total metrics are presented and discussed (because of space limitations). The decomposition of these metrics and additional details are given in Goswami (2019). The values of the difference metric for the accelerations AH1 to AH4 (Fig. 7.8) increased from the base of the deposit to the free surface and were considerable at the shallow depth location AH4 (reaching values of about 0.5). The difference metrics between the RPI0 accelerations and the other tests are shown in Fig. 7.8b to illustrate the range and level of likeliness and dissimilarities that these tests had with the response of one of the tests with an input motion close to the reference. These dissimilarities provide valuable information and are used below to assess the sensitivity and relative effects of the initial conditions on the difference metrics for the response acceleration at different depths.
4 Sensitivity Analysis
Evaluation of reliable estimates of the response (e.g., acceleration, displacement, etc.) sensitivity of a physical system, such as the analyzed LEAP sloping deposit, using a relatively limited set of test data represents a significant challenge. Diverse approaches have been used in a number of fields to evaluate local and global system sensitivities. A local sensitivity is evaluated based on a numerical differentiation concept and is usually obtained as the simple ratio of (observed or evaluated) changes in response quantities to a corresponding small variation in input parameters (at a specific value of these parameters). In contrast, a global sensitivity is based on a statistical framework and considers a range of input variations (in contrast to small variations). A number of review papers have been dedicated to these topics (e.g., Iooss and Lemaître 2015). In this study, the local approach is not adequate in view of the involved experimental uncertainties and limitations, while the common global approaches are hindered by the limited amount (from a statistical point of view) of experimental data available. The sensitivities were therefore estimated on the basis of a kriging analysis.
Kriging is a semi-parametric Gaussian process regression method that was originally developed in the field of geostatistics (Chilès and Delfiner 1999; McCullough et al. 2017). It provides an effective means that may be employed to estimate response quantities, and corresponding derivatives and integrals, over a domain of associated input parameters using only noisy observations or measurements for a limited irregularly spaced set of these parameters. The method involves an averaging process and provides an estimate of uncertainty (in terms of a standard deviation). Herein, kriging was used to assess the sensitivity of the difference metrics of the recorded AH1 to AH4 accelerations to variations in input motion and initial soil fabric condition associated with soil deposition and achieved grain packing.
4.1 Acceleration Sensitivity
The difference analysis above showed that \( {\Delta A}_{ij}^{1\mathrm{Hz}} \)and \( \Delta {A}_{ij}^{2+\mathrm{Hz}} \) are the two main input motion parameters that varied during the analyzed 26 LEAP centrifuge tests. The tested soil models also had variability in soil deposition and achieved grain packing (as documented by the mass densities reported by the different centrifuge facilities (Kutter et al. 2018, 2019)). These variations have a direct effect, for instance, on stiffness properties which in turn affect the deposit response. An average over depth of the CPT (cone penetration test) tip resistance is deemed herein to correlate better with the deposit initial fabric and packing conditions than relative or mass densities (mainly due to the high sensitivity of density computation to errors in the measurement of volume). The average of the measured CPT resistance at 1.5 m, 2.0 m, 2.5 m, and 3.0 m depths (hereafter referred to as qc-avg) for the different centrifuge tests is presented in Fig. 7.7 along with the differences in input motion.
A kriging analysis was conducted to assess the sensitivity of the recorded accelerations to the parameters \( {\Delta A}_{ij}^{1\mathrm{Hz}} \),\( \Delta {A}_{ij}^{2+\mathrm{Hz}} \), and qc-avg. The sensitivity analysis was performed using a subset of 17 tests of the conducted 26 centrifuge experiments. The tests were selected based on an investigation of the associated stress and strain time histories. This investigation showed a consistency among the stress-strain response of these tests and fundamental differences with the remaining nine tests, as shown in Fig. 7.9. The details of the stress-strain analysis, rational for the 17 test selection, and details of the kriging analysis are given in Goswami (2019). The following paragraphs focus on the conducted analysis results for brevity.
The sensitivity analysis is based on an estimate of the variation of the total difference measures dij of the recorded accelerations at AH1 to AH4 as a function of \( {\Delta A}_{ij}^{1\mathrm{Hz}} \),\( \Delta {A}_{ij}^{2+\mathrm{Hz}} \), and qc-avg. Specifically, the analysis provided a kriging hypersurface representing dij (for each of AH1 to AH4) as a function of the variables \( {\Delta A}_{ij}^{1\mathrm{Hz}} \),\( \Delta {A}_{ij}^{2+\mathrm{Hz}} \), and qc-avg (over the domain associated with these variables, as shown in Fig. 7.7). The differences among the tests in input motions, \( {\Delta A}_{ij}^{1\mathrm{Hz}} \) and \( \Delta {A}_{ij}^{2+\mathrm{Hz}} \), and in response metric (at AH1 to AH4), dij, had to be computed with respect to a common reference, which was selected to be the RPI1 test. This test had an input acceleration substantially close to the reference and a relative density close to the reference mean value (Fig. 7.2). Other tests could also be used as a reference and would lead similar results to the ones presented below.
Three sets of surfaces and corresponding sensitivity functions are employed herein to visualize the obtained dij kriging hypersurface results, as shown in Figs. 7.10, 7.11, 7.12, 7.13, 7.14, and 7.15. Thus, Fig. 7.10 shows the difference metric variations as a function of \( {\Delta A}_{ij}^{1\mathrm{Hz}} \) and \( \Delta {A}_{ij}^{2+\mathrm{Hz}} \) for a qc avg = 2.6 MPa. This value corresponds to the mid-point of the domain of variations for qc-avg and corresponds to a Dr of about 65%. The obtained results show that the AH1 accelerations have comparable sensitivities to variations in \( {\Delta A}_{ij}^{1\mathrm{Hz}} \)and \( \Delta {A}_{ij}^{2+\mathrm{Hz}} \) (for qc-avg = 2.7 MPa) and the associated discrepancy metric practically varies linearly as a function of these two parameters, as shown in Fig. 7.10. In contrast, the response at AH4 is about two times as sensitive to a \( \Delta {A}_{ij}^{2+\mathrm{Hz}} \)as to \( {\Delta A}_{ij}^{1\mathrm{Hz}} \). The discrepancy metrics for AH1 to AH4 show a sensitivity that increased from the bottom of the deposit to the free surface. The associated sensitivity functions \( {\partial d}_{ij}/\partial {A}_{ij}^{1\mathrm{Hz}} \) and \( {\partial d}_{ij}/\partial {A}_{ij}^{2+\mathrm{Hz}} \) for qc-avg = 2.7 MPa (Fig. 7.11) confirmed that AH1 has mostly constant sensitivity functions and AH4 has a sensitivity \( {\partial d}_{ij}/\partial {A}_{ij}^{2+\mathrm{Hz}} \) with large variations (especially as a function of \( \Delta {A}_{ij}^{2+\mathrm{Hz}} \)). The sensitivities for AH2 and AH3 had values that varied between those of AH1 and AH4. Note however that the estimated variations of the discrepancy metric (and corresponding sensitivities) are associated with larger standard deviation (i.e., lower level of confidence) at large \( \Delta {A}_{ij}^{2+\mathrm{Hz}} \) values, especially for AH3 and AH4. This is explained by the sparsity of data for large values of \( \Delta {A}_{ij}^{2+\mathrm{Hz}} \) (only one experiment had a \( \Delta {A}_{ij}^{2+\mathrm{Hz}} \) larger than 0.04 m/s2).
The difference metric surfaces as a function of \( {\Delta A}_{ij}^{1\mathrm{Hz}} \) and qc-avg for \( \Delta {A}_{ij}^{2+\mathrm{Hz}} \) = 0, and \( \Delta {A}_{ij}^{2+\mathrm{Hz}} \) and qc-avg for \( {\Delta A}_{ij}^{1\mathrm{Hz}} \) = 0, and the corresponding sensitivity functions (Figs. 7.12, 7.13, 7.14, and 7.15) were employed to explore the effects of the observed variation in CPT resistance. The obtained metric surfaces and sensitivity functions show a response that is significantly more sensitive to a decrease in qc-avg than an increase. This is explained by the fact that lower values of qc-avg are associated with a looser more contractive soil with a response that contrasts substantially with that of the (dilative) reference deposit with a Dr. of about 65%. In contrast, larger qc-avg values are indicative of a denser soil that is only slightly more dilative and has only a somewhat different response. The sensitivity values increased from AH1 to AH4, and the sensitivities with respect to qc-avg were significantly larger than those associated with \( {\Delta A}_{ij}^{1\mathrm{Hz}} \)and\( \Delta {A}_{ij}^{2+\mathrm{Hz}} \). Overall, the obtained sensitivity functions (Figs. 7.11, 7.13, and 7.15) vary nonlinearly with variations in parameters. The level of nonlinearity increases from AH1 to AH4 and is more remarkable for the sensitivities that depends on qc-avg. Figures 7.10, 7.12, and 7.14 also show the standard deviations corresponding to the estimated difference metric surfaces (and corresponding sensitivities). The deviations increased from AH1 near the bottom to AH4 close to the free surface of the deposit. Also, for any (acceleration) level, the deviations have the lowest values in the zones with well-distributed data points and largest values with sparse or no data points (as expected).
4.2 Permanent Displacement Sensitivity
A kriging analysis was used to assess the effects of variations in \( {\Delta A}_{ij}^{1\mathrm{Hz}} \), \( \Delta {A}_{ij}^{2+\mathrm{Hz}} \), and qc-avg on the permanent surface displacement (referred to as D). The analysis was performed for the selected 17 tests using the mean values of the measured displacement of the 2 central markers (Kutter et al. 2019). Three sets of surfaces are exhibited in Fig. 7.16 to visualize the obtained D kriging hypersurface results as a function of (1) \( {\Delta A}_{ij}^{1\mathrm{Hz}} \) and \( \Delta {A}_{ij}^{2+\mathrm{Hz}} \) for a qc avg = 2.6 MPa, (2) \( {\Delta A}_{ij}^{1\mathrm{Hz}} \) and qc-avg for \( \Delta {A}_{ij}^{2+\mathrm{Hz}} \)=0, and (3)\( \Delta {A}_{ij}^{2+\mathrm{Hz}} \) and qc-avg for \( {\Delta A}_{ij}^{1\mathrm{Hz}} \) = 0. The obtained results show that the measured permanent displacements are generally more sensitive to variations in \( {\Delta A}_{ij}^{1\mathrm{Hz}} \)and \( \Delta {A}_{ij}^{2+\mathrm{Hz}} \) than qc-avg. In fact the displacements have rather a low sensitivity to qc-avg for \( {\Delta A}_{ij}^{1\mathrm{Hz}}\approx 0 \)and \( \Delta {A}_{ij}^{2+\mathrm{Hz}} \) ≈0. The sensitivity to the CPT resistance increases when the variations in qc-avg are combined with variations in \( {\Delta A}_{ij}^{1\mathrm{Hz}} \)and \( \Delta {A}_{ij}^{2+\mathrm{Hz}} \). The corresponding standard deviations (Fig. 7.16) were again reasonable in the zone with well-distributed data points, and high values were observed in areas with limited or no data points.
5 Conclusions
This article presented an analysis of the differences and sensitivities among the acceleration time histories of 26 centrifuge LEAP (Liquefaction Experiments and Analysis Projects) test replicas of a saturated sloping deposit. A normalized mean squared deviation is used as difference metric to quantify the dissimilarities between recorded acceleration time histories. This metric is uniquely decomposed in four terms associated with phase, frequency shift, amplitude at 1 Hz, and amplitude of frequencies higher than 2 Hz (2 + Hz) components. These metrics and measures were employed to assess and quantify the discrepancies of the input and response accelerations of the 26 different test replicas. The obtained difference metric values showed that the input accelerations can be divided into three broad classes: (1) Group 1 of accelerations that closely match the reference and also each other, (2) Group 2 of accelerations that have an average match to the reference and among the group, and (3) Group 3 of accelerations that did not closely match the reference and also each other with. This broad range of motions provides valuable information to assess both the repeatability of the tests and sensitivity of the recorded responses to variations in input motion. The differences among input motions were found to be associated mostly with variation in amplitude of the dominant component at 1 Hz and the components with frequencies higher than 2 Hz (2 + Hz).
A Gaussian process-based kriging was used to assess the sensitivity of the deposit response acceleration to differences in input motion amplitude at 1 Hz and 2 + Hz and average CPT (cone penetration test) resistance (used as a measure reflecting deposit fabric condition and initial grain packing). The conducted analyses showed that the analyzed deposit accelerations are relatively more sensitive to variations in CPT resistance than to the input motion and that this sensitivity is larger for a decrease in CPT resistance compared to an increase. The sensitivities were also found to be highly nonlinear functions of the variability in the input motion and CPT resistance. In contrast, the measured permanent displacements were generally more sensitive to differences in input motion amplitude at 1 Hz and 2 + Hz than the average CPT resistance.
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Acknowledgments
The experimental work of the LEAP project was supported by different institutions. In the USA, the work was funded by the US National Science Foundation Geotechnical Engineering program directed by Dr. Richard Fragaszy (NSF grants CMMI-1635524, CMMI-1635307, and CMMI-1635040 to Rensselaer Polytechnic Institute, George Washington University, and University of California Davis, respectively). The work at Ehime U. was supported by JSPS KAKENHI Grant Number 17H00846. The work at Kyoto U. was supported by JSPS KAKENHI Grant Numbers 26282103, 5420502, and 17H00846. The work at Kansai U. was supported by JSPS KAKENHI Grant Number 17H00846. The work at KAIST was part of a project titled “Development of performance-based seismic design,” funded by the Ministry of Oceans and Fisheries, Korea. The work at NCU was supported by MOST: 106-2628-E-008-004-MY3. The work at Zhejiang University was supported by the National Natural Science Foundation of China, Nos. 51578501 and 51778573; Zhejiang Provincial Natural Science Foundation of China, LR15E080001; and National Basic Research Program of China (973 Project), 2014CB047005. These supports are gratefully acknowledged.
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Goswami, N. et al. (2020). Difference and Sensitivity Analyses of the LEAP-2017 Experiments. In: Kutter, B., Manzari, M., Zeghal, M. (eds) Model Tests and Numerical Simulations of Liquefaction and Lateral Spreading. Springer, Cham. https://doi.org/10.1007/978-3-030-22818-7_7
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