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Modeling of the Stress in 13Cr Supermartensitic Stainless Steel Welds by Artificial Neural Network

机译:基于人工神经网络的13Cr超马氏体不锈钢焊缝应力建模。

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In this paper, artificial neural networks (ANN) has been proposed to determine the stresses of 13Cr supermartensitic stainless steel (SMSS) welds based on various deformation temperatures and strains using experimental data from tensile tests. The experiments provided the required data for training and testing. A three layer feed-forward network, deformation temperature and strain as input parameters while stress as the output, was trained with automated regularization (AR) algorithm for preventing overfitting. The results showed that the best fitting training dataset was obtained with ten units in the hidden layer, which made it possible to predict stress accurately. The correlation coefficients (R-value) between experiments and prediction for the training and testing dataset were 0.9980 and 0.9943, respectively, the biggest absolute relative error (ARE) was 6.060 %. As seen that the ANN model was an efficient quantitative tool to evaluate and predict the deformation behavior of type 13Cr SMSS welds during tensile test under different temperatures and strains.
机译:本文提出了一种人工神经网络(ANN),利用各种拉伸温度和实验数据,根据各种变形温度和应变,确定13Cr超级马氏体不锈钢(SMSS)焊缝的应力。实验提供了训练和测试所需的数据。通过自动正则化(AR)算法训练了三层前馈网络,将变形温度和应变作为输入参数,将应力作为输出,以防止过拟合。结果表明,在隐藏层中以十个单元获得了最佳拟合训练数据集,这使得准确预测应力成为可能。训练和测试数据集的实验与预测之间的相关系数(R值)分别为0.9980和0.9943,最大绝对相对误差(ARE)为6.060%。可以看出,ANN模型是评估和预测13Cr SMSS型焊缝在不同温度和应变下的变形行为的有效定量工具。

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