Polynomial chaos surrogate and bayesian learning for coupled hydro-mechanical behavior of soil slope

Lulu Zhang , Fang Wu , Xin Wei , Hao-Qing Yang , Shixiao Fu , Jinsong Huang , Liang Gao
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引用次数: 3

Abstract

As rainfall infiltrates into soil slopes, the hydraulic and mechanical behaviors of soils are interacted. In this study, an efficient probabilistic parameter estimation method for coupled hydro-mechanical behavior in soil slope is proposed. This method integrates the Polynomial Chaos Expansion (PCE) method, the coupled hydro-mechanical modeling, and the Bayesian learning method. A coupled hydro-mechanical numerical model is established for the simulation of behaviors of unsaturated soil slope under rainfall infiltration, following by training a cheap-to-run PCE surrogate to replace it. Probabilistic estimation of soil parameters is conducted based on the Bayesian learning technique with the Markov Chain Monte Carlo (MCMC) simulation. A numerical example of an unsaturated slope under rainfall infiltration is presented to illustrate the proposed method. The effects of measurement durations and response types on parameter estimation are addressed. The result shows that with the increase of measurement duration, the uncertainties of soil parameters are significantly reduced. The uncertainties of hydraulic properties are reduced significantly using the pore water pressure data, while the uncertainties of soil strength parameters are reduced greatly using the measured displacement data.

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土坡水-力耦合特性的多项式混沌代理与贝叶斯学习
当降雨渗入土壤边坡时,土壤的水力和力学行为相互作用。在这项研究中,提出了一种有效的土壤边坡水力-力学耦合行为的概率参数估计方法。该方法集成了多项式混沌展开(PCE)方法、水力-机械耦合建模和贝叶斯学习方法。建立了一个模拟降雨入渗条件下非饱和土边坡行为的水力-力学耦合数值模型,然后训练一个廉价的可运行PCE代理来代替它。基于贝叶斯学习技术和马尔可夫链蒙特卡罗(MCMC)模拟对土壤参数进行了概率估计。以降雨入渗作用下的非饱和边坡为例说明了该方法。讨论了测量持续时间和响应类型对参数估计的影响。结果表明,随着测量时间的增加,土壤参数的不确定性显著降低。利用孔隙水压力数据显著降低了水力特性的不确定性,而利用实测位移数据大大降低了土壤强度参数的不确定性。
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