A repeatability study of artificial neural network predictions in flow stress model development for a magnesium alloy

Hubert Siewior, L. Madej
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Abstract

This work is devoted to an evaluation of the capabilities of artificial neural networks (ANN) in terms of developing a flow stress model for magnesium ZE20. The learning procedure is based on experimental flow-stress data following inverse analy - sis. Two types of artificial neural networks are investigated: a simple feedforward version and a recursive one. Issues related to the quality of input data and the size of the training dataset are presented and discussed. The work confirms the general ability of feedforward neural networks in flow stress data predictions. It also highlights that slightly better quality predictions are obtained using recursive neural networks.
人工神经网络预测镁合金流变应力模型的可重复性研究
这项工作致力于评估人工神经网络(ANN)在开发ZE20镁流变应力模型方面的能力。学习过程是基于逆向分析后的实验流变应力数据。研究了两种类型的人工神经网络:简单的前馈型和递归型。提出并讨论了与输入数据质量和训练数据集大小相关的问题。研究证实了前馈神经网络在流动应力数据预测中的一般能力。它还强调,使用递归神经网络获得的预测质量略好一些。
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