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首页> 外文期刊>Engineering with Computers >Optimizing an ANN model with ICA for estimating bearing capacity of driven pile in cohesionless soil
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Optimizing an ANN model with ICA for estimating bearing capacity of driven pile in cohesionless soil

机译:用ICA优化ANN模型估算无粘性土中打入桩的承载力。

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摘要

AbstractThe application of models provided by artificial neural network (ANN) in predicting bearing capacity of driven pile is underlined in several investigations. However, weakness of ANN in slow rate of convergence as well as finding reliable testing output is known to be the major drawbacks of implementing ANN-based techniques. The present study aims to introduce and evaluate an optimized ANN with imperialism competitive algorithm (ICA) model based to estimate bearing capacity of driven pile in cohesionless soil. The training data for optimizing the ICA-ANN structure are based on the in situ study. To develop the ICA-ANN model, the input parameters are internal friction angle of soil located in shaft (φshaft), and tip (φtip), pile length (L), effective vertical stress at pile toe (σv), and pile area (A) while the output is the total driven pile bearing capacity in cohesionless soil. The predicted results are compared with a pre-developed ANN model to demonstrate the ability of the hybrid model. As a result, coefficient of determination (R2) values of (0.885 and 0.894) and (0.964 and 0.974) was obtained for testing and training datasets of ANN and ICA-ANN models, respectively. In addition, values of variance account for (VAF) of (88.212 for training and 89.215 for testing) and (96.369 for training and 97.369 for testing, respectively) were obtained for ANN and ICA-ANN models, respectively. The obtained results declare high reliability of the developed ICA-ANN model. This model can be introduced as a new model in field of deep foundation engineering.
机译:强调了 摘要 人工神经网络(ANN)提供的模型在预测打桩承载力中的应用在几次调查中。然而,众所周知,人工神经网络在收敛速度慢以及寻找可靠的测试输出方面的弱点是实施基于人工神经网络的技术的主要缺点。本研究旨在介绍和评估基于帝国主义竞争算法(ICA)模型的优化ANN,以估计无粘性土中打入桩的承载力。优化ICA-ANN结构的训练数据基于原位研究。要开发ICA-ANN模型,输入参数为位于竖井(φ竖井)中的土的内摩擦角和尖端(φ< / Emphasis> tip),桩长( L ),桩趾处的有效垂直应力(σ v )和桩面积( A ),而输出是无粘性土中的总驱动桩承载力。将预测结果与预先开发的ANN模型进行比较,以证明混合模型的功能。结果,获得用于测试和训练数据集的确定系数( R 2 )值分别为(0.885和0.894)和(0.964和0.974)。分别为ANN和ICA-ANN模型。此外,对于ANN和ICA-ANN模型,分别获得了(VAF)(训练为88.212和测试为89.215)和(训练为96.369和测试为97.369)的方差值。获得的结果表明所开发的ICA-ANN模型具有很高的可靠性。该模型可以作为深基础工程领域的一种新模型引入。

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