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Constitutive flow behaviour of austenitic stainless steels under hot deformation: artificial neural network modelling to understand, evaluate and predict

机译:奥氏体不锈钢在热变形下的本构流动行为:人工神经网络建模以理解,评估和预测

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摘要

An artificial neural network ( ANN) model is developed to predict the constitutive flow behaviour of austenitic stainless steels during hot deformation. The input parameters are alloy composition and process variables whereas flow stress is the output. The model is based on a three-layer feed-forward ANN with a back-propagation learning algorithm. The neural network is trained with an in-house database obtained from hot compression tests on various grades of austenitic stainless steels. The performance of the model is evaluated using a wide variety of statistical indices. Good agreement between experimental and predicted data is obtained. The correlation between individual alloying elements and high temperature flow behaviour is investigated by employing the ANN model. The results are found to be consistent with the physical phenomena. The model can be used as a guideline for new alloy development.
机译:建立了人工神经网络(ANN)模型来预测奥氏体不锈钢在热变形过程中的本构流动行为。输入参数是合金成分和工艺变量,而流动应力是输出。该模型基于具有反向传播学习算法的三层前馈ANN。通过内部数据库对神经网络进行训练,该内部数据库是通过对各种等级的奥氏体不锈钢进行热压缩试验获得的。使用各种统计指标评估模型的性能。实验和预测数据之间取得了良好的一致性。利用ANN模型研究了合金元素与高温流动行为之间的关系。发现结果与物理现象一致。该模型可用作新合金开发的指南。

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