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Regressive approach for predicting bearing capacity of bored piles from cone penetration test data

机译:从圆锥体渗透测试数据预测钻孔桩承载力的回归方法

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摘要

In this study, the least square support vector machine (LSSVM) algorithm was applied to predicting the bearing capacity of bored piles embedded in sand and mixed soils. Pile geometry and cone penetration test (CPT) results were used as input variables for prediction of pile bearing capacity. The data used were collected from the existing literature and consisted of 50 case records. The application of LSSVM was carried out by dividing the data into three sets: a training set for learning the problem and obtaining a relationship between input variables and pile bearing capacity, and testing and validation sets for evaluation of the predictive and generalization ability of the obtained relationship. The predictions of pile bearing capacity by LSSVM were evaluated by comparing with experimental data and with those by traditional CPT-based methods and the gene expression programming (GEP) model. It was found that the LSSVM performs well with coefficient of determination, mean, and standard deviation equivalent to 0.99, 1.03, and 0.08, respectively, for the testing set, and 1, 1.04, and 0.11, respectively, for the validation set. The low values of the calculated mean squared error and mean absolute error indicated that the LSSVM was accurate in predicting the pile bearing capacity. The results of comparison also showed that the proposed algorithm predicted the pile bearing capacity more accurately than the traditional methods including the GEP model.
机译:在这项研究中,最小二乘支持向量机(LSSVM)算法用于预测埋在沙子和混合土中的钻孔桩的承载力。桩的几何形状和锥入度测试(CPT)结果用作预测桩承载力的输入变量。使用的数据来自现有文献,包括50个案例记录。通过将数据分为三组来进行LSSVM的应用:用于学习问题并获得输入变量与桩承载力之间关系的训练集,以及用于评估所获得的预测和泛化能力的测试和验证集。关系。通过与实验数据以及与传统基于CPT的方法和基因表达编程(GEP)模型进行比较,评估了LSSVM对桩承载力的预测。结果发现,LSSVM的测定系数,均值和标准偏差分别对测试集有效,分别为0.99、1.03和0.08,对于验证集分别为1、1.04和0.11,表现良好。计算出的均方误差和平均绝对误差的低值表明LSSVM在预测桩的承载力方面是准确的。比较结果还表明,与包括GEP模型在内的传统方法相比,该算法能够更准确地预测桩的承载力。

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