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首页> 外文期刊>Journal of Materials Engineering and Performance >Neural Network Modeling for the Prediction of Texture Evolution of Hot Deformed Aluminum Alloys
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Neural Network Modeling for the Prediction of Texture Evolution of Hot Deformed Aluminum Alloys

机译:神经网络模型预测热变形铝合金的组织演变

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摘要

Commercial aluminum rolling mills operate under very restricted thermomechanical conditions determined from experience and plant trials. In this paper we report results for four-stand tandem mill rolling simulations within and beyond the thermomechanical conditions typical of a rolling mill by plane strain compression (PSC) testing to assess the effect of deformed conditions on the texture of the hot deformed aluminum strip after annealing. A neural network modeling study was then initiated to find a predictive relationship between the observed texture and the thermomechanical parameters of strain, strain rate, and temperature. The model suggested that temperature is the prime variable that influences texture. Such models can be used to evaluate optimal strategies for the control of process parameters of a four-stand tandem mill.
机译:商业铝轧机在非常严格的热机械条件下运行,这些条件是根据经验和工厂试验确定的。在本文中,我们通过平面应变压缩(PSC)测试报告了四轧机串联轧机在轧机典型热机械条件下的模拟结果,以评估变形条件对热变形后铝带材织构的影响。退火。然后开始进行神经网络建模研究,以发现观察到的纹理与应变,应变速率和温度的热机械参数之间的预测关系。该模型表明温度是影响质地的主要变量。此类模型可用于评估控制四机架串联轧机工艺参数的最佳策略。

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