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首页> 外文期刊>Journal of Materials Processing Technology >Modelling of the rheological behaviour of aluminium alloys in multistep hot deformation using the multiple regression analysis and artificial neural network techniques
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Modelling of the rheological behaviour of aluminium alloys in multistep hot deformation using the multiple regression analysis and artificial neural network techniques

机译:多元回归分析和人工神经网络技术对铝合金多步热变形流变行为的建模

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摘要

Artificial neural network and multiple regression analysis techniques were applied in modelling the rheological behaviour of AA 6082 aluminium alloy under multistep hot deformation conditions. To this end, multistage torsion tests were carried out in order to obtain the experimental data to be used in the development of the predictive models. The envelope curves predicted by both the ANN- and MRA-based models have shown an excellent fit, in terms of curve shape and stress level, with the experimental ones obtained under the same process conditions, even if the ANN based model has provided the best predictive capability.
机译:采用人工神经网络和多元回归分析技术对AA 6082铝合金在多步热变形条件下的流变行为进行建模。为此,进行了多阶段扭力测试,以便获得用于开发预测模型的实验数据。基于ANN和MRA的模型预测的包络曲线在曲线形状和应力水平方面均显示出极好的拟合度,即使基于ANN的模型提供了最佳效果,实验曲线仍在相同的工艺条件下获得预测能力。

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