Soft Computing to Predict Earthquake-Induced Soil Liquefaction via CPT Results

IF 2.7 Q2 CONSTRUCTION & BUILDING TECHNOLOGY Infrastructures Pub Date : 2023-08-14 DOI:10.3390/infrastructures8080125
A. Ghanizadeh, Ahmad Aziminejad, P. G. Asteris, D. J. Armaghani
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Abstract

Earthquake-induced soil liquefaction (EISL) can cause significant damage to structures, facilities, and vital urban arteries. Thus, the accurate prediction of EISL is a challenge for geotechnical engineers in mitigating irreparable loss to buildings and human lives. This research aims to propose a binary classification model based on the hybrid method of a wavelet neural network (WNN) and particle swarm optimization (PSO) to predict EISL based on cone penetration test (CPT) results. To this end, a well-known dataset consisting of 109 datapoints has been used. The developed WNN-PSO model can predict liquefaction with an overall accuracy of 99.09% based on seven input variables, including total vertical stress (σv), effective vertical stress (σv′), mean grain size (D50), normalized peak horizontal acceleration at ground surface (αmax), cone resistance (qc), cyclic stress ratio (CSR), and earthquake magnitude (Mw). The results show that the proposed WNN-PSO model has superior performance against other computational intelligence models. The results of sensitivity analysis using the neighborhood component analysis (NCA) method reveal that among the seven input variables, qc has the highest degree of importance and Mw has the lowest degree of importance in predicting EISL.
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基于CPT结果的软计算预测地震诱发的土壤液化
地震诱发的土壤液化(EISL)会对建筑物、设施和重要的城市动脉造成重大破坏。因此,对于岩土工程师来说,准确地预测EISL是一个挑战,以减轻对建筑物和人类生命的不可挽回的损失。本研究旨在提出一种基于小波神经网络(WNN)和粒子群优化(PSO)混合方法的二分类模型,用于基于锥突试验(CPT)结果的EISL预测。为此,使用了一个由109个数据点组成的知名数据集。基于总垂直应力(σv)、有效垂直应力(σv′)、平均粒径(D50)、地表标准化峰值水平加速度(αmax)、锥体阻力(qc)、循环应力比(CSR)和地震震级(Mw) 7个输入变量,所建立的WNN-PSO模型预测液化的总体精度为99.09%。结果表明,与其他计算智能模型相比,所提出的WNN-PSO模型具有优越的性能。采用邻域成分分析(NCA)方法进行敏感性分析的结果表明,在7个输入变量中,qc对预测EISL的重要程度最高,Mw的重要程度最低。
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来源期刊
Infrastructures
Infrastructures Engineering-Building and Construction
CiteScore
5.20
自引率
7.70%
发文量
145
审稿时长
11 weeks
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