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Integrating Multi-Source Information from Site Investigation for Probabilistic Characterization of Undrained Shear Strength

机译:整合现场调查中的多源信息以对不排水的剪切强度进行概率表征

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This paper presents a Bayesian sequential updating (BSU) approach that integrates multi-source information obtained from geotechnical site investigation for probabilistic characterization of undrained shear strength s_u of clay. Herein, the multi-source information includes the knowledge available prior to the project (namely prior knowledge) and test results from various testing procedures, such as overconsolidation ratio (OCR), standard penetration test (SPT), and cone penetration test (CPT) data. In this study, the OCR, SPT, and CPT data are sequentially incorporated into a BSU framework to update the knowledge on s_u for determination of its site-specific statistics and probability distributions. The BSU framework allows using multiple types of test results from different test procedures at different locations. The proposed approach is illustrated and validated using OCR, SPT and CPT data simulated from a virtual clay site, where true statistics and probability distributions of s_u are known. Results showed that the proposed BSU approach combines prior knowledge with multiple types of test results in a consistent and systematic manner, and it provides reasonable statistical estimates of geotechnical parameters based on the combined information. In addition, effects of data quality and quantity are also explored using simulated data.
机译:本文提出了一种贝叶斯序贯更新(BSU)方法,该方法集成了从岩土现场调查中获得的多源信息,用于对粘土的不排水抗剪强度s_u进行概率表征。在此,多源信息包括项目之前可获得的知识(即先验知识)和各种测试程序的测试结果,例如超固结比(OCR),标准渗透率测试(SPT)和锥体渗透率测试(CPT)数据。在这项研究中,OCR,SPT和CPT数据顺序地并入BSU框架中,以更新有关s_u的知识,以确定其特定于站点的统计信息和概率分布。 BSU框架允许在不同位置使用来自不同测试程序的多种类型的测试结果。使用从虚拟粘土站点模拟的OCR,SPT和CPT数据对所提出的方法进行了说明和验证,其中已知真实的统计数据和s_u的概率分布。结果表明,所提出的BSU方法以一致和系统的方式将先验知识与多种类型的测试结果相结合,并且基于结合的信息可以提供合理的岩土参数统计估计。此外,还使用模拟数据来探索数据质量和数量的影响。

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