Seepage analysis model based on field measurement data for estimation of posterior parameter distribution using merging particle filter

IF 3.3 2区 工程技术 Q2 ENGINEERING, GEOLOGICAL
Shinichi Ito , Kazuhiro Oda , Keigo Koizumi
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引用次数: 0

Abstract

Soil water conditions should be adequately evaluated because they influence the occurrence of surface failures. Digital twin systems, connecting field measurement data with numerical simulations, must be created to enable early warnings to be issued before a surface failure occurs. This study discusses the applicability of the merging particle filter (MPF) method for estimating the posterior distribution of seepage analysis models based on the volumetric water content field measurement data from two case studies. The first case study estimated the posterior distribution of parameters for unsaturated soil hydraulic properties based on data obtained from three slopes of different soil types (decomposed granite, weathered mudstone, and pyroclastic flow deposits). The simulation results agreed well with the raw data, where only precipitation data were input into the estimated seepage analysis model. The second case study estimated and discussed the applicability of a seepage analysis model using parameters for the unsaturated soil hydraulic properties and drainage boundary conditions. The simulated results reproduced the field measurement data with sufficient accuracy to attain the groundwater behavior. Therefore, based on field measurement data, the MPF can estimate the posterior distribution of parameters for the seepage analysis model, considering the inhomogeneity and uncertainty of in-situ soil.

基于现场测量数据的渗流分析模型,利用合并粒子滤波器估算后验参数分布
应充分评估土壤水分状况,因为它们会影响地表塌陷的发生。必须建立连接实地测量数据与数值模拟的数字孪生系统,以便在地表塌陷发生前发出预警。本研究根据两个案例研究中的体积含水量现场测量数据,讨论了合并粒子滤波器(MPF)方法在估算渗流分析模型后验分布中的适用性。第一个案例研究根据从三个不同土壤类型(分解花岗岩、风化泥岩和火成岩流沉积)的斜坡上获得的数据,估算了非饱和土壤水力特性参数的后验分布。模拟结果与原始数据非常吻合,在原始数据中,只有降水数据被输入到估计渗流分析模型中。第二项案例研究利用非饱和土壤水力特性参数和排水边界条件,估算并讨论了渗流分析模型的适用性。模拟结果充分准确地再现了实地测量数据,达到了地下水行为的要求。因此,基于现场测量数据,考虑到原位土壤的不均匀性和不确定性,MPF 可以估计渗流分析模型参数的后验分布。
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来源期刊
Soils and Foundations
Soils and Foundations 工程技术-地球科学综合
CiteScore
6.40
自引率
8.10%
发文量
99
审稿时长
5 months
期刊介绍: Soils and Foundations is one of the leading journals in the field of soil mechanics and geotechnical engineering. It is the official journal of the Japanese Geotechnical Society (JGS)., The journal publishes a variety of original research paper, technical reports, technical notes, as well as the state-of-the-art reports upon invitation by the Editor, in the fields of soil and rock mechanics, geotechnical engineering, and environmental geotechnics. Since the publication of Volume 1, No.1 issue in June 1960, Soils and Foundations will celebrate the 60th anniversary in the year of 2020. Soils and Foundations welcomes theoretical as well as practical work associated with the aforementioned field(s). Case studies that describe the original and interdisciplinary work applicable to geotechnical engineering are particularly encouraged. Discussions to each of the published articles are also welcomed in order to provide an avenue in which opinions of peers may be fed back or exchanged. In providing latest expertise on a specific topic, one issue out of six per year on average was allocated to include selected papers from the International Symposia which were held in Japan as well as overseas.
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