TY - JOUR
T1 - Interpolating spatially varying soil property values from sparse data for facilitating characteristic value selection
AU - Zhao, Tengyuan
AU - Montoya-Noguera, Silvana
AU - Phoon, Kok Kwang
AU - Wang, Yu
N1 - Publisher Copyright:
© 2018, Canadian Science Publishing. All rights reserved.
PY - 2018
Y1 - 2018
N2 - Limit state design, incorporated into many recent geotechnical design codes, introduces the application of partial or resistance factors to selected characteristic values. Partial or resistance factors are usually set by national standard organizations, while characteristic values of geotechnical parameters are selected by engineers, often based on sparse measurement data combined with subjective engineering experience and judgment. Due to this subjective selection and individual judgment, the characteristic value derived by different engineers from the same dataset may vary greatly, especially when the test data contain significant variability. To address this issue, a new method based on Bayesian compressive sampling (BCS) is proposed in this study. BCS is able to reconstruct a high-resolution geotechnical property profile from sparse measurement data and quantify the uncertainty, e.g., confidence interval (CI) associated with the interpreted profile. The quantified uncertainty in the BCS has a clear statistical meaning: the corresponding confidence level for a CI from the BCS is the expected coverage proportion (i.e., fraction) of the complete profile that falls within the CI, if all data points along depth can be measured to provide the complete profile. This statistical meaning can be used to facilitate objective determination of characteristic values for geotechnical properties.
AB - Limit state design, incorporated into many recent geotechnical design codes, introduces the application of partial or resistance factors to selected characteristic values. Partial or resistance factors are usually set by national standard organizations, while characteristic values of geotechnical parameters are selected by engineers, often based on sparse measurement data combined with subjective engineering experience and judgment. Due to this subjective selection and individual judgment, the characteristic value derived by different engineers from the same dataset may vary greatly, especially when the test data contain significant variability. To address this issue, a new method based on Bayesian compressive sampling (BCS) is proposed in this study. BCS is able to reconstruct a high-resolution geotechnical property profile from sparse measurement data and quantify the uncertainty, e.g., confidence interval (CI) associated with the interpreted profile. The quantified uncertainty in the BCS has a clear statistical meaning: the corresponding confidence level for a CI from the BCS is the expected coverage proportion (i.e., fraction) of the complete profile that falls within the CI, if all data points along depth can be measured to provide the complete profile. This statistical meaning can be used to facilitate objective determination of characteristic values for geotechnical properties.
KW - Bayesian compressive sampling
KW - Compressive sensing
KW - Reliability-based design
KW - Site investigation
KW - Sparse measurement data
UR - https://www.scopus.com/pages/publications/85041346734
U2 - 10.1139/cgj-2017-0219
DO - 10.1139/cgj-2017-0219
M3 - 文章
AN - SCOPUS:85041346734
SN - 0008-3674
VL - 55
SP - 171
EP - 181
JO - Canadian Geotechnical Journal
JF - Canadian Geotechnical Journal
IS - 2
ER -