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On the Training Algorithms for Artificial Neural Network in Predicting the Shear Strength of Deep Beams

机译:关于人工神经网络预测深梁剪切强度的训练算法

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摘要

This study aims to predict the shear strength of reinforced concrete (RC) deep beams based on artificial neural network (ANN) using four training algorithms, namely, Levenberg–Marquardt (ANN-LM), quasi-Newton method (ANN-QN), conjugate gradient (ANN-CG), and gradient descent (ANN-GD). A database containing 106 results of RC deep beam shear strength tests is collected and used to investigate the performance of the four proposed algorithms. The ANN training phase uses 70% of data, randomly taken from the collected dataset, whereas the remaining 30% of data are used for the algorithms’ evaluation process. The ANN structure consists of an input layer with 9 neurons corresponding to 9 input parameters, a hidden layer of 10 neurons, and an output layer with 1 neuron representing the shear strength of RC deep beams. The performance evaluation of the models is performed using statistical criteria, including the correlation coefficient (R), root mean square error (RMSE), mean absolute error (MAE), and mean absolute percentage error (MAPE). The results show that the ANN-CG model has the best prediction performance with R ?=?0.992, RMSE?=?14.02, MAE?=?14.24, and MAPE?=?6.84. The results of this study show that the ANN-CG model can accurately predict the shear strength of RC deep beams, representing a promising and useful alternative design solution for structural engineers.
机译:本研究旨在使用四个训练算法,即Levenberg-Marquardt(Ann-LM),准牛顿方法(Ann-Qn),预测基于人工神经网络(ANN)的钢筋混凝土(RC)深束的剪切强度,即Levenberg-Marquardt(Ann-QN),共轭梯度(Ann-Cg)和梯度下降(Ann-Gd)。收集包含RC深光束剪切强度测试106个结果的数据库,并用于研究四种提出的算法的性能。 ANN训练阶段使用70%的数据,从收集的数据集中随机取下,而剩余的30%的数据用于算法的评估过程。 ANN结构由输入层组成,输入层与9个内核,对应于9个输入参数,隐藏层10个神经元,以及具有1个神经元的输出层,其代表RC深梁的剪切强度。使用统计标准执行模型的性能评估,包括相关系数(R),根均方误差(RMSE),平均绝对误差(MAE),以及平均绝对百分比误差(MAPE)。结果表明,Ann-CG模型具有r的最佳预测性能?=?0.992,Rmse?=?14.02,Mae?=?14.24和Mape?=?6.84。该研究的结果表明,ANN-CG模型可以准确地预测RC深梁的剪切强度,代表结构工程师的有希望和有用的替代设计解决方案。

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