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An Investigation into the Dynamic Recrystallization (DRX) Behavior and Processing Map of 33Cr23Ni8Mn3N Based on an Artificial Neural Network (ANN)

机译:基于人工神经网络(ANN)的33Cr23Ni8Mn3N动态重结晶(DRX)行为和加工图的研究

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摘要

Based on an 33Cr23Ni8Mn3N thermal simulation experiment, the application of an artificial neural network (ANN) in thermomechanical processing was studied. Based on the experimental data, a microstructure evolution model and constitutive equation of 33Cr23Ni8Mn3N heat-resistant steel were established. Stress, dynamic recrystallization (DRX) fraction, and DRX grain size were predicted. These models were evaluated by a variety of statistical indicators to determine that these models would work well if applied in predicting microstructure evolution and that they have high precision. Then, based on the weight of the ANN model, the sensitivity of the input parameters was analyzed to achieve an optimized ANN model. Based on the most widely used sensitivity analysis (SA) method (the Garson method), the input parameters were analyzed. The results show that the most important factor for the microstructure of 33Cr23Ni8Mn3N is the strain rate ( ). For the control of the microstructure, the control of the is preferred. ANN was applied to the development of processing map. The feasibility of the ANN processing map on austenitic heat-resistant steel was verified by experiments. The results show that the ANN processing map is basically consistent with processing map based on experimental data. The trained ANN model was implanted into finite element simulation software and tested. The test results show that the ANN model can accurately expand the data volume to achieve high precision simulation results.
机译:基于33Cr23Ni8Mn3N的热模拟实验,研究了人工神经网络在热机械加工中的应用。根据实验数据,建立了33Cr23Ni8Mn3N耐热钢的组织演变模型和本构方程。预测了应力,动态重结晶(DRX)分数和DRX晶粒尺寸。通过各种统计指标对这些模型进行了评估,以确定这些模型在应用于预测微观结构演变时将很好地工作,并且具有很高的精度。然后,基于神经网络模型的权重,对输入参数的敏感性进行分析,以实现优化的神经网络模型。基于最广泛使用的灵敏度分析(SA)方法(Garson方法),对输入参数进行了分析。结果表明,影响33Cr23Ni8Mn3N显微组织的最重要因素是应变率()。为了控制微观结构,优选控制α。人工神经网络应用于加工图的开发。实验验证了在奥氏体耐热钢上进行人工神经网络加工图的可行性。结果表明,人工神经网络处理图与基于实验数据的处理图基本一致。经过训练的ANN模型被植入到有限元仿真软件中并进行了测试。测试结果表明,人工神经网络模型可以准确地扩展数据量,从而获得高精度的仿真结果。

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