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Applying several soft computing techniques for prediction of bearing capacity of driven piles

机译:应用几种软计算技术预测桩的承载力

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摘要

Pile as a type of foundation is a structure which can transfer heavy structural loads into the ground. Determination and proper prediction of pile bearing capacity are considered as a very important issue in preliminary design of geotechnical structures. This study attempts to develop several intelligent techniques for prediction of pile bearing capacity in cohesionless soil. To show the effects of fuzzy inference system and imperialism competitive algorithm (ICA) on a pre-developed artificial neural network (ANN), two hybrid ANN models namely ICA-ANN and adoptive neuro-fuzzy inference system (ANFIS) were considered and developed to estimate pile bearing capacity. Then, results of these techniques were compared with those of ANN model and the best one among them was chosen according to the results of performance indices. Several parameters (i.e., internal friction angle of soil located in shaft and tip, effective vertical stress at pile toe, pile area, and pile length) were set as model inputs, while the output is the total driven pile bearing capacity. As a result of the developed models, coefficient of determination (R-2) values of (0.895, 0.905), (0.945, 0.958), and (0.967, 0.975) were obtained for training and testing data sets of ANN, ICA-ANN, and ANFIS models, respectively. The results showed that both hybrid models are able to predict bearing capacity with high degree of accuracy; however, ANFIS receives more applicable based on used performance indices and it can be utilized for further researchers and engineers in practice.
机译:桩作为基础的一种结构,可以将沉重的结构载荷传递到地下。确定和适当预测桩的承载力是岩土结构初步设计中非常重要的问题。这项研究试图开发几种智能技术来预测无粘性土中的桩承载力。为了展示模糊推理系统和帝国主义竞争算法(ICA)对预先开发的人工神经网络(ANN)的影响,考虑并开发了两种混合ANN模型,即ICA-ANN和过继神经模糊推理系统(ANFIS),估计桩的承载力。然后,将这些技术的结果与ANN模型的结果进行比较,并根据性能指标的结果选择其中最好的一种。设置了几个参数(即,位于竖井和尖端的土壤的内摩擦角,桩头处的有效垂直应力,桩面积和桩长)作为模型输入,而输出为总驱动桩承载力。作为开发模型的结果,获得了用于训练和测试ANN,ICA-ANN数据集的确定系数(R-2)值(0.895,0.905),(0.945,0.958)和(0.967,0.975)。 ,和ANFIS模型。结果表明,两种混合模型都可以高精度地预测承载力。但是,基于所使用的性能指标,ANFIS获得了更多的适用性,并且可以在实践中供其他研究人员和工程师使用。

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