Development of a database on multivariate soil properties for collapsible loess in Xi’an, China
Jiabao Xu (Shanghai Jiao Tong University)
Yongtang Yu (China United Northwest Institute for Engineering Design & Research Co., Ltd., Shaanxi Key Laboratory for the Property and Treatment of Special Soil and Rock)
JianGuo Zheng (Shaanxi Key Laboratory for the Property and Treatment of Special Soil and Rock)
Lulu Zhang (Shanghai Jiao Tong University)
Z. Guan (Geo-engineering)
Yu Wang (The Hong Kong University of Science and Technology)
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Abstract
Several global or regional databases for various types of soils have been developed due to their importance in engineering design and analysis. However, a database is not yet available for collapsible loess in which severe geohazards often occur. In this study, a comprehensive loess database with twelve soil parameters is compiled by collecting results of field and laboratory tests on collapsible loess from the city of Xi’an, China. Basic statistics, marginal probability distribution functions (PDFs), and a correlation matrix for loess parameters are estimated from the database. To the best of the authors’ knowledge, this is the first collapsible loess database at a municipal level. In addition, existing databases often lack sufficiently complete multivariate measurement data for a proper estimation of statistical correlations among multiple soil properties. In this study, this incomplete multivariate measurement data problem is tackled by Bayesian methods (i.e., Bayesian Gaussian mixture model and Bayesian compressive sampling (BCS) with Karhunen–Loève (KL) expansion, BCS-KL), which are illustrated and validated using the incomplete and complete subsets of the loess database, respectively. Both the Bayesian Gaussian mixture model and BCS-KL are non-parametric, and they offer a flexible way of modeling marginal PDFs and a correlation matrix from incomplete measurements in a realistic manner.