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首页> 外文期刊>Journal of Materials Engineering and Performance >Modeling Constitutive Relationship of BT25 Titanium Alloy During Hot Deformation by Artificial Neural Network
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Modeling Constitutive Relationship of BT25 Titanium Alloy During Hot Deformation by Artificial Neural Network

机译:BT25钛合金热变形本构关系的人工神经网络建模。

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In this research, the constitutive relationships of BT25 titanium alloy based on regression and artificial neural network (ANN) methods were established and studied by analyzing the results of hot compression tests. The isothermal compression tests were conducted on a Gleeble 1500 thermo-mechanical simulator in the deformation temperatures ranging from 940 to 1000℃ with an interval of 20℃ and the strain rates of 0.01, 0.1, 1.0, and 10.0 s~(-1) with a height reduction of 60%. The average deformation activation energy of the alloy was derived as 623.26 kJ/mol at strain of 0.7 by using the non-linear regression method and assuming a hyperbolic sine equation between the stress, strain rate, and deformation temperature. On the basis of the experimental data samples, an ANN model was proposed and trained. The hot processing parameters of temperature, strain rate, and strain were used as the input variables and the flow stress as the output variable. The comparison of experimental flow stresses with predicted values by ANN model and calculated value by regression method was carried out. It was found that the predicted results by ANN are in a good agreement with the experimental values, which indicates that the predicted accuracy of the constitutive relationship established by ANN model is higher than that using the multivariable regression method.
机译:通过对热压缩试验的结果进行分析,建立了基于回归和人工神经网络(ANN)方法的BT25钛合金的本构关系。在Gleeble 1500热力机械模拟器上进行等温压缩试验,其变形温度为940至1000℃,间隔为20℃,应变速率为0.01、0.1、1.0和10.0 s〜(-1),高度降低60%。通过使用非线性回归方法并假设应力,应变速率和变形温度之间的双曲正弦方程,合金在0.7应变下的平均变形激活能为623.26 kJ / mol。在实验数据的基础上,提出并训练了人工神经网络模型。温度,应变率和应变的热加工参数用作输入变量,流应力作为输出变量。进行了实验流动应力与ANN模型预测值与回归方法计算值的比较。结果表明,人工神经网络的预测结果与实验值吻合较好,表明人工神经网络模型建立的本构关系的预测精度高于多元回归方法。

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