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Artificial intelligence design charts for predicting friction capacity of driven pile in clay

机译:预测粘土中驱动桩摩擦能力的人工智能设计图表

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摘要

In this study, five nonlinear prediction tools are used to model and predict the friction capacity of driven piles installed in clay including classical support vector machine (SVM) and two of its variants, namely regularized generalized proximal SVM and twin SVM, adaptive neuro-fuzzy inference system (ANFIS) and genetic programming (GP). The undrained shear strength, effective vertical stress, pile diameter and pile length are taken as the input parameters of the developed models, and the friction capacity is considered as the output. A total of 80 experimental observations are collected and used to train and test several models estimating the friction capacity of a driven pile in clay. The results demonstrate that, noting the root-mean-square error (RMSE) value, for prediction of the friction capacity of driven piles in clay the ANFIS model gives a better convergence to the in situ results, compared with the GP and SVM models. The developed ANFIS model provided a simple and reliable design structure for proper selection of the pile friction capacity of driven piles installed in clay. Furthermore, a simple mathematical formula is presented based on the GP model. The predicted results are compared with in situ data set models to demonstrate the abilities of the AI models. In order to perform a model evaluation, in addition to RMSE, the regression coefficient of determination is obtained through testing and training of the SVM, ANFIS and GP models. The results show high reliability for the developed models. The presented ANFIS and GP models are introduced as new models in the field of geotechnical engineering.
机译:在这项研究中,五种非线性预测工具用于模拟和预测安装在粘土中的驱动桩的摩擦能力,包括古典支持向量机(SVM)和其两个变体,即正则化通用近端SVM和双SVM,适应性神经模糊推理系统(ANFIS)和遗传编程(GP)。不介绍的剪切强度,有效的垂直应力,桩直径和桩长作为开发模型的输入参数,并且摩擦力被认为是输出。收集了总共80个实验观察,并用于培训和测试几种模型,估计粘土中的驱动桩的摩擦能力。结果表明,与GP和SVM型号相比,注意到粘土中驱动桩的摩擦能力的预测,以预测驱动桩的摩擦能力,与GP和SVM型号相比,对原位结果进行更好的收敛性。 The developed ANFIS model provided a simple and reliable design structure for proper selection of the pile friction capacity of driven piles installed in clay.此外,基于GP模型呈现简单的数学公式。将预测结果与原位数据集模型进行比较,以展示AI模型的能力。为了执行模型评估,除了RMSE之外,还通过对SVM,ANFI和GP模型进行测试和培训来获得的回归系数。结果表明了开发模型的高可靠性。呈现的ANFIS和GP模型被引入岩土工程领域的新模型。

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