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Prediction of the Flow Stress of a High Alloyed Austenitic Stainless Steel Using Artificial Neural Network

机译:用人工神经网络预测高合金奥氏体不锈钢的流动应力

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The high temperature flow behavior of as-cast 904L austenitic stainless steel was studied using artificial neural network (ANN). Isothermal compression tests were carried out at the temperature range of 1000℃ to 1200℃ and strain rate range of 0.01 to 10s"1. Based on the experimental flow stress data, an ANN model for the constitutive relationship between flow stress and strain, strain rate and deformation temperature was constructed by back-propagation (BP) method. Three layer structured network with one hidden layer and nine hidden neurons was trained and the normalization method was employed in training process to avoid over fitting. Modeling results show that the developed ANN model exhibits good performance for predicting the flow stresses of the 904L steel. Therefore, it can be used to reflect the hot deformation behavior in a wide working window.
机译:使用人工神经网络(ANN)研究了铸态904L奥氏体不锈钢的高温流动行为。在1000℃至1200℃的温度范围和0.01至10s“”的应变速率范围内进行了等温压缩试验。基于实验流动应力数据,建立了ANN模型,用于分析流动应力与应变,应变速率之间的本构关系通过反向传播(BP)方法构造变形温度,训练具有一个隐藏层和九个隐藏神经元的三层结构网络,并在训练过程中采用归一化方法来避免过度拟合,建模结果表明,所开发的神经网络模型具有很好的预测904L钢流动应力的性能,因此可以在较宽的工作窗口中反映热变形行为。

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