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首页> 外文期刊>Engineering Applications of Artificial Intelligence >Predicting axial capacity of driven piles in cohesive soils using intelligent computing
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Predicting axial capacity of driven piles in cohesive soils using intelligent computing

机译:利用智能计算预测黏性土中打入桩的轴向承载力

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摘要

An accurate prediction of pile capacity under axial loads is necessary for the design. This paper presents the development of a new model to predict axial capacity of pile foundations driven into cohesive soils. Gene expression programming technique (CEP) has been utilized for this purpose. The data used for development of the GEP model is collected from the literature and comprise a series of in-situ driven piles load tests as well as cone penetration test (CPT) results. The data are divided into two subsets: training set for model calibration and independent validation set for model verification. Predictions from the GEP model are compared with experimental data and with predictions of number of currently adopted CPT-based methods. The results have demonstrated that the GEP model performs well with coefficient of correlation, mean and probability density at 50% equivalent to 0.94, 0.96 and 1.01, respectively, indicating that the proposed model predicts pile capacity accurately.
机译:对于设计,必须准确预测轴向载荷下的桩容量。本文提出了一种新模型的开发,该模型可以预测打入粘性土的桩基的轴向承载力。基因表达编程技术(CEP)已用于此目的。用于开发GEP模型的数据是从文献中收集的,包括一系列原位打桩载荷测试以及圆锥体渗透测试(CPT)结果。数据分为两个子集:用于模型校准的训练集和用于模型验证的独立验证集。将GEP模型的预测与实验数据以及当前采用的基于CPT的方法的预测进行比较。结果表明,GEP模型的相关系数,均值和概率密度分别为0.94、0.96和1.01,在50%时表现良好,表明该模型可以准确地预测桩的承载力。

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