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Modeling of the Hot Flow Behaviors for Ti-6Al-4V-0.1Ru Alloy by GA-BPNN Model and Its Application

机译:基于GA-BPNN的Ti-6Al-4V-0.1Ru合金热流动行为建模及其应用。

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A series of compression tests were performed on Ti-6Al-4V-0.1Ru titanium alloy in nine temperatures between 750 and 1150?°C and a strain rate range of 0.01 to 10s~(?1). The hot deformation behaviors of Ti-6Al-4V-0.1Ru showed highly non-linear intrinsic relationships with temperature, strain and strain rate. The flow curves exhibited different softening mechanisms, dynamic recrystallization (DRX) and dynamic recovery (DRV). In this study, the rheological behaviors of Ti-6Al-4V-0.1Ru were modeled using a special hybrid prediction model, where genetic algorithm (GA) was implemented to do a back-propagation neural network (BPNN) weights optimization, namely GA-BPNN. Subsequently, the predicted results were compared with experimental values and GA-BPNN model showed the ability to predict the flow behaviors of Ti-6Al-4V-0.1Ru with superior accuracy. Then a 3-D continuous interaction space was constructed to visually reveal the successive relationships among processing parameters. Finally, the predicted data were applied to process simulation and accuracy results were achieved.
机译:对Ti-6Al-4V-0.1Ru钛合金在750至1150°C的九个温度和0.01至10s〜(?1)的应变速率范围内进行了一系列压缩试验。 Ti-6Al-4V-0.1Ru的热变形行为表现出与温度,应变和应变率的高度非线性固有关系。流动曲线表现出不同的软化机制,动态重结晶(DRX)和动态恢复(DRV)。在这项研究中,使用特殊的混合预测模型对Ti-6Al-4V-0.1Ru的流变行为进行建模,其中采用遗传算法(GA)进行反向传播神经网络(BPNN)权重优化,即GA- BPNN。随后,将预测结果与实验值进行比较,GA-BPNN模型显示出能够以较高的精度预测Ti-6Al-4V-0.1Ru的流动行为。然后构建一个3-D连续交互空间,以可视方式揭示处理参数之间的连续关系。最后,将预测数据应用于过程仿真并获得精度结果。

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