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Artificial Neural Network And Liquefaction Susceptibility Assessment: A Case Study Using The 2001 Bhuj Earthquake Data, Gujarat, India

机译:人工神经网络和液化敏感性评估:使用2001年布杰地震数据的案例研究,印度古吉拉特邦

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This study pertains to prediction of liquefaction susceptibility of unconsolidated sediments using artificial neural network (ANN) as a prediction model. The backpropagation neural network was trained, tested, and validated with 23 datasets comprising parameters such as cyclic resistance ratio (CRR), cyclic stress ratio (CSR), liquefaction severity index (LSI), and liquefaction sensitivity index (LSeI). The network was also trained to predict the CRR values from LSI, LSeI, and CSR values. The predicted results were comparable with the field data on CRR and liquefaction severity. Thus, this study indicates the potentiality of the ANN technique in mapping the liquefaction susceptibility of the area.
机译:本研究涉及使用人工神经网络(ANN)作为预测模型来预测未固结沉积物的液化敏感性。使用23个数据集对反向传播神经网络进行了训练,测试和验证,该数据集包含诸如循环阻力比(CRR),循环应力比(CSR),液化强度指数(LSI)和液化敏感性指数(LSeI)之类的参数。还对网络进行了培训,以根据LSI,LSeI和CSR值预测CRR值。预测结果与有关CRR和液化严重程度的现场数据相当。因此,这项研究表明了人工神经网络技术在绘制该地区液化敏感性方面的潜力。

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