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首页> 外文期刊>Journal of Central South University of Technology >Establishment of constitutive relationship model for 2519 aluminum alloy based on BP artificial neural network
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Establishment of constitutive relationship model for 2519 aluminum alloy based on BP artificial neural network

机译:基于BP人工神经网络的2519铝合金本构关系模型的建立。

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摘要

An isothermal compressive experiment using Gleeble 1500 thermal simulator was studied to acquire flow stress at different deformation temperatures, strains and strain rates. The artificial neural networks with the error back propagation(BP) algorithm was used to establish constitutive model of 2519 aluminum alloy based on the experiment data. The model results show that the systematical error is small(δ = 3.3%) when the value of objective function is 0.2, the number of nodes in the hidden layer is 5 and the learning rate is 0.1. Flow stresses of the material under various thermodynamic conditions are predicted by the neural network model, and the predicted results correspond with the experimental results. A knowledge-based constitutive relation model is developed.
机译:研究了使用Gleeble 1500热仿真器进行的等温压缩实验,以获取不同变形温度,应变和应变速率下的流动应力。根据实验数据,采用带有误差反向传播(BP)算法的人工神经网络建立2519铝合金的本构模型。模型结果表明,当目标函数值为0.2,隐层节点数为5,学习率为0.1时,系统误差较小(δ= 3.3%)。利用神经网络模型对材料在不同热力学条件下的流动应力进行了预测,预测结果与实验结果吻合。建立了基于知识的本构关系模型。

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