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A Modified Back Propagation Artificial Neural Network Model Based on Genetic Algorithm to Predict the Flow Behavior of 5754 Aluminum Alloy

机译:基于遗传算法的改进BP神经网络模型预测5754铝合金的流动行为。

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摘要

In order to predict flow behavior and find the optimum hot working processing parameters for 5754 aluminum alloy, the experimental flow stress data obtained from the isothermal hot compression tests on a Gleeble-3500 thermo-simulation apparatus, with different strain rates (0.1–10 s–1) and temperatures (300–500 °C), were used to construct the constitutive models of the strain-compensation Arrhenius (SA) and back propagation (BP) artificial neural network (ANN). In addition, an optimized BP–ANN model based on the genetic algorithm (GA) was established. Furthermore, the predictability of the three models was evaluated by the statistical indicators, including the correlation coefficient (R) and average absolute relative error (AARE). The results showed that the R of the SA model, BP–ANN model, and ANN–GA model were 0.9918, 0.9929, and 0.9999, respectively, while the AARE of these models was found to be 3.2499–5.6774%, 0.0567–5.4436% and 0.0232–1.0485%, respectively. The prediction error of the SA model was high at 400 °C. It was more accurate to use the BP–ANN model to determine the flow behavior compared to the SA model. However, the BP–ANN model had more instability at 300 °C and a true strain in the range of 0.4–0.6. When compared with the SA model and BP–ANN model, the ANN–GA model had a more efficient and more accurate prediction ability during the whole deformation process. Furthermore, the dynamic softening characteristic was analyzed by the flow curves. All curves showed that 5754 aluminum alloy showed the typical rheological characteristics. The flow stress rose rapidly with increasing strain until it reached a peak. After this, the flow stress remained constant, which demonstrates a steady flow softening phenomenon. Besides, the flow stress and the required variables to reach the steady state deformation increased with increasing strain rate and decreasing temperature.
机译:为了预测5754铝合金的流动行为并找到最佳的热加工工艺参数,通过在Gleeble-3500热模拟设备上进行等温热压缩试验获得的实验流动应力数据,应采用不同的应变速率(0.1–10 s) –1 )和温度(300–500°C)用于构建应变补偿阿伦尼乌斯(SA)和反向传播(BP)人工神经网络(ANN)的本构模型。此外,建立了基于遗传算法(GA)的优化BP-ANN模型。此外,通过统计指标评估了这三个模型的可预测性,包括相关系数(R)和平均绝对相对误差(AARE)。结果表明,SA模型,BP–ANN模型和ANN–GA模型的R分别为0.9918、0.9929和0.9999,而这些模型的AARE分别为3.2499–5.6774%,0.0567–5.4436%和0.0232–1.0485%。 SA模型的预测误差在400°C时较高。与SA模型相比,使用BP-ANN模型确定流动行为更为准确。但是,BP–ANN模型在300°C时具有更大的不稳定性,并且真实应变在0.4–0.6的范围内。与SA模型和BP–ANN模型相比,ANN–GA模型在整个变形过程中具有更有效,更准确的预测能力。此外,通过流动曲线分析了动态软化特性。所有曲线均表明5754铝合金具有典型的流变特性。流动应力随着应变的增加而迅速上升,直到达到峰值。此后,流动应力保持恒定,这表明了稳定的流动软化现象。此外,流变应力和达到稳态变形所需的变量随着应变率的增加和温度的降低而增加。

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