Prediction of dynamic recrystallization behavior of SAE52100 large section bearing steel based on machine learning

Peiheng Ding, Changqing Shu, Shasha Zhang, Zhaokuan Zhang, Xingshuai Liu, Jicong Zhang, Qian Chen, Shuaipeng Yu, Xiaolin Zhu, Zhengjun Yao
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Abstract

This paper investigates the dynamic recrystallization characteristics of SAE52100 large section bearing steel under hot compression, focusing on both the center and surface. Using data from thermal simulation experiments the physical models were developed. Four machine learning algorithms including support vector regression, k-nearest neighbors, random forest, and extreme gradient boosting were then employed to develop dynamic recrystallization prediction models based on the experimental data and inferred values from the physical model. The results show that the machine learning methods provide a better numerical description of the model, provided these are fed with extensive data. To enhance the scope of application, we obtained data from the dynamic recrystallization models for both the center and surface of SAE52100 steel in the as-cast state, as well as extrapolated values from the literature regarding the hot-rolled condition. When the SHAP method was introduced to reveal the mechanism of the influence of each input feature on the prediction results of the machine learning model, it was found that the test results of the Cr element did not match the theory, mainly because of the small scale of Cr elemental data and the strong dependence on grain size and secondary dendrite spacing.

Abstract Image

基于机器学习的SAE52100大断面轴承钢动态再结晶行为预测
研究了SAE52100大断面轴承钢在热压缩条件下的动态再结晶特性,重点研究了中心和表面的再结晶特性。利用热模拟实验数据建立了物理模型。然后利用支持向量回归、k近邻、随机森林和极端梯度增强四种机器学习算法,基于实验数据和物理模型的推断值建立动态再结晶预测模型。结果表明,在提供大量数据的情况下,机器学习方法可以更好地对模型进行数值描述。为了扩大应用范围,我们从SAE52100钢铸态的中心和表面动态再结晶模型中获得数据,并从文献中推断出热轧状态的值。当引入SHAP方法揭示各输入特征对机器学习模型预测结果的影响机制时,发现Cr元素的测试结果与理论不匹配,主要原因是Cr元素数据规模小,对晶粒尺寸和次生枝晶间距的依赖性强。
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