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A hidden Markov random field model based approach for probabilistic site characterization using multiple cone penetration test data

机译:基于隐马尔可夫随机场模型的概率位置表征方法,使用多个锥形渗透测试数据

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This paper presents a new probabilistic site characterization approach for both soil classification and property estimation using sounding data from multiple cone penetration tests (CPTs) at a project site. A hidden Markov random field (HMRF) model based Bayesian clustering approach is developed, which can describe not only the heterogeneity of properties in statistically homogeneous soil layers, but also the correlation between spatial distributions of different soil layers. The latter has not been well considered in the existing CPT interpretation methods. A Monte Carlo Markov chain based expectation maximization (MCMC-EM) algorithm is adopted to calibrate the established HMRF model, so that both the subsurface soil/rock stratification and the pertinent soil properties can be estimated in a probabilistic manner. The proposed CPT interpretation approach is validated and demonstrated using a series of numerical examples, including using real CPT data. It is shown that the proposed method is able to accurately identify soil layers, pinpoint their boundaries, and provide reasonable estimates of the associated soil properties. In addition, comparative studies show that combining analysis of CPT data from multiple soundings, rather than interpreting them separately, can significantly enhance the accuracy of interpretation and simplify the subsequent task of interpreting stratigraphic profiles. (C) 2017 Elsevier Ltd. All rights reserved.
机译:本文提出了一种新的概率性场地表征方法,该方法利用项目现场的多个锥体渗透试验(CPT)的测深数据进行土壤分类和属性评估。提出了一种基于贝叶斯聚类的隐马尔可夫随机场模型,该模型不仅可以描述统计均质土层特性的异质性,而且可以描述不同土层空间分布之间的相关性。后者在现有的CPT解释方法中并未得到充分考虑。采用基于蒙特卡洛马尔可夫链的期望最大化(MCMC-EM)算法对建立的HMRF模型进行标定,从而可以以概率的方式估计地下土壤/岩石分层和相关的土壤性质。所提出的CPT解释方法已通过一系列数值示例进行了验证和演示,包括使用实际CPT数据。结果表明,所提出的方法能够准确地识别土壤层,查明其边界,并对相关的土壤性质提供合理的估计。此外,比较研究表明,将来自多个测深的CPT数据进行分析相结合,而不是分别对它们进行解释,可以显着提高解释的准确性,并简化随后解释地层剖面的任务。 (C)2017 Elsevier Ltd.保留所有权利。

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