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Performance comparison of neural network training algorithms in the modeling properties of steel fiber reinforced concrete

机译:神经网络训练算法在钢纤维混凝土建模性能中的性能比较

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摘要

Our study is aimed at modeling the effect of three contributory factors, namely aspect ratio, water cement ratio and cement content on the water intake/absorption, compressive strength, flexural strength, split tensile strength and slump properties of steel fiber reinforced concrete. Artificial neural network (ANN) as a multilayer perceptron normal feed forward network was integrated to develop a predictive model for the aforementioned properties. Five training algorithms belonging to three classes: gradient descent, Levenberg Marquardt (quasi Newton) and genetic algorithm (GA). The ANN configuration consists of the input layer with three nodes, a single hidden layer of ten nodes of the output layer with five nodes. The study also compared the performance of all algorithms with regards to their predicting abilities. The ANN training was done by splitting the experimental data into the training and testing set. The divergence of the RMSE between the output and target values of the test set was monitored and used as a criterion to stop training. Although the convergence speed of GA was far higher than all other training algorithm, it performed better in predicting the water intake/absorption, split tensile strength and slump properties. However, incremental back propagation (IBP) and batch back propagation (BBP) outperformed GA in predicting the compressive strength and flexural strength respectively. The overall performance of the training algorithm was assessed using the coefficient of determination and the absolute fraction of variance obtained for the test data set and GA was found to have the highest value of 0.94 and 0.92 respectively. In determining the properties fiber reinforced concrete according to GA–ANN implementation, the water/cement ratio played slightly more dominant role than the aspect ratio and this was followed by cement content.
机译:我们的研究旨在模拟长宽比,水灰比和水泥含量对钢纤维增强混凝土的吸水/吸收,抗压强度,抗弯强度,劈裂抗拉强度和坍落度三个因素的影响。集成人工神经网络(ANN)作为多层感知器正常前馈网络,以开发上述特性的预测模型。属于三个类别的五种训练算法:梯度下降,Levenberg Marquardt(准牛顿)和遗传算法(GA)。 ANN配置包括具有三个节点的输入层,具有五个节点的输出层的单个隐藏层(十个节点)。该研究还比较了所有算法在预测能力方面的性能。通过将实验数据分为训练和测试集来完成ANN训练。监控RMSE在测试集的输出和目标值之间的差异,并将其用作停止训练的标准。尽管GA的收敛速度远高于所有其他训练算法,但在预测水的吸收/吸收,劈裂抗张强度和坍落度性能方面表现更好。然而,在预测抗压强度和抗弯强度方面,增量反向传播(IBP)和批量反向传播(BBP)优于GA。使用确定系数评估训练算法的整体性能,并为测试数据集和GA获得的方差的绝对绝对值分别达到0.94和0.92的最高值。在根据GA-ANN实施方法确定纤维增强混凝土的性能时,水灰比起纵横比的作用稍大一些,其次是水泥含量。

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