利用机器学习方法评估地震土壤液化潜力

Ali Ramazan Borujerdi
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引用次数: 0

摘要

土壤的液化脆弱性通常与几个土壤参数有关,这些参数通常是通过室内试验在不同的试验条件下进行分布试验和非分布试验来测量的。本研究采用基于标准渗透试验评估液化标准的方法,对位于高震区的Chalus市土壤沉积物的液化脆弱性进行了评价。为了克服这些实验策略的不足,利用人工智能技术建立了一个基于人工神经网络的模型来预测液化。该模型是塑性指数、液限、含水率和其他岩土参数的函数。可靠性指数(β)和液化概率(PL)也被确定,以更好地理解它们的精度和强度。本文采用一阶二阶矩(FOSM)可靠度分析。从研究中得出的观察结果表明,与实验策略相比,回归的期望率是可靠的和传统的。基于现场试验资料进行预估的液化易损性强回归分析,对岩土工程设计具有重要意义。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ASSESSING SEISMIC SOIL LIQUEFACTION POTENTIAL USING MACHINE LEARNING APPROACH
The liquefaction vulnerability of soil is generally related to a few soil parameters which are ordinarily measured by laboratory tests on distributed and undistributed tests under distinctive test conditions. This study uses methods based on a standard penetration test to assess liquefaction criteria to appraise the liquefaction vulnerability for soil deposits of Chalus City placed in a high seismic area. To overcome the deficiencies of these experimental strategies an ANN-based model has been created utilizing the Artificial Intelligence technique to anticipate liquefaction. The proposed model is a function of the plasticity index, liquid limit, water content, and some other geotechnical parameters. Reliability index (β) and probability of liquefaction (PL) have also been determined for both the proposed methods for a superior understanding of their accuracies and strength. First-order second moment (FOSM) reliability analysis has been embraced in the present paper. The observation drawn from the study illustrates a reliable and conventional expectation rate of the regression as compared to the experimental strategy. A strong regression shown for assessing the liquefaction vulnerability, which is based on field test information for preparatory prediction, would be of extraordinary help within the field of geotechnical designing.
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