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A Simple and Sustainable Prediction Method of Liquefaction-Induced Settlement at Pohang Using an Artificial Neural Network

机译:利用人工神经网络,浦项液化诱导沉降的简单可持续的预测方法

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摘要

Conventionally, liquefaction-induced settlements have been predicted through numerical or analytical methods. In this study, a machine learning approach for predicting the liquefaction-induced settlement at Pohang was investigated. In particular, we examined the potential of an artificial neural network (ANN) algorithm to predict the earthquake-induced settlement at Pohang on the basis of standard penetration test (SPT) data. The performance of two ANN models for settlement prediction was studied and compared in terms of the R2 correlation. Model 1 (input parameters: unit weight, corrected SPT blow count, and cyclic stress ratio (CSR)) showed higher prediction accuracy than model 2 (input parameters: depth of the soil layer, corrected SPT blow count, and the CSR), and the difference in the R2 correlation between the models was about 0.12. Subsequently, an optimal ANN model was used to develop a simple predictive model equation, which was implemented using a matrix formulation. Finally, the liquefaction-induced settlement chart based on the predictive model equation was proposed, and the applicability of the chart was verified by comparing it with the interferometric synthetic aperture radar (InSAR) image.
机译:以往,液化诱导住区已通过数值或分析方法预测。在这项研究中,用于预测浦项液化引起的沉降机器学习方法进行了研究。特别是,我们研究了人工神经网络(ANN)算法来预测地震引起的地表沉降在浦项标准贯入试验(SPT)的数据的基础上的潜力。两种人工神经网络模型进行沉降预测的性能进行了研究,并在R2相关的条款进行比较。模型1(输入参数:单位重量,校正SPT击数,并循环应力比(CSR))显示出比模型2更高的预测精度(输入参数:土壤层的深度,校正SPT击数,以及CSR),和在模型之间的相关性R2的差约为0.12。接着,使用的最优ANN模型来开发一种简单的预测模型方程,其使用基质制剂实现。最后,基于预测模型公式液化诱导的沉降图表提出,和图表的适用性,通过将其与干涉式合成孔径雷达(干涉SAR)图像进行比较验证。

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