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A novel ensemble model based on GMDH-type neural network for the prediction of CPT-based soil liquefaction

机译:基于GMDH型神经网络的集成模型预测基于CPT的土壤液化。

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摘要

This study presents a novel ensemble group method of data handling (EGMDH) model based on classification for the prediction of liquefaction potential of soils. Liquefaction is one of the most complex problems in geotechnical earthquake engineering. The database used in this study consists of 212 CPT-based field records from eight major earthquakes. The input parameters are selected as cone tip resistance, total and effective stress, penetration depth, max peak horizontal acceleration and earthquake magnitude for the prediction models. The proposed EGMDH model results were also compared to the other classifier models, particularly the results of the group method of data handling (GMDH) model. The results of this study indicated that the proposed EGMDH model has achieved more successful results on the prediction of the liquefaction potential of soils compared to the other classifier models by improving the prediction performance of the GMDH model.
机译:这项研究提出了一种新的基于分类的集合数据处理模型(EGMDH)模型,用于预测土壤的液化潜力。液化是岩土地震工程中最复杂的问题之一。本研究中使用的数据库由来自八次大地震的212个基于CPT的现场记录组成。选择输入参数作为预测模型的锥顶电阻,总应力和有效应力,穿透深度,最大峰值水平加速度和地震震级。提议的EGMDH模型结果也与其他分类器模型进行了比较,特别是分组数据处理(GMDH)模型的结果。这项研究的结果表明,与其他分类器模型相比,通过改进GMDH模型的预测性能,所提出的EGMDH模型在预测土壤液化潜力方面取得了更为成功的结果。

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