材料科学技术(英文版)2022,Vol.107Issue(12) :207-215.

A hybrid machine learning model for predicting continuous cooling transformation diagrams in welding heat-affected zone of low alloy steels

Xiaoxiao Geng Xinping Mao Hong-Hui Wu Shuize Wang Weihua Xue Guanzhen Zhang Asad Ullah Hao Wang
材料科学技术(英文版)2022,Vol.107Issue(12) :207-215.

A hybrid machine learning model for predicting continuous cooling transformation diagrams in welding heat-affected zone of low alloy steels

Xiaoxiao Geng 1Xinping Mao 2Hong-Hui Wu 2Shuize Wang 2Weihua Xue 3Guanzhen Zhang 4Asad Ullah 5Hao Wang6
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作者信息

  • 1. Beijing Advanced Innovation Center for Materials Genome Engineering,Collaborative Innovation Center of Steel Technology,University of Science and Technology Beijing,Beijing 100083,China;School of Materials Science and Engineering,University of Science and Technology Beijing,Beijing 100083,China
  • 2. Beijing Advanced Innovation Center for Materials Genome Engineering,Collaborative Innovation Center of Steel Technology,University of Science and Technology Beijing,Beijing 100083,China
  • 3. School of Materials Science and Engineering,Liaoning Technical University,Fuxin 123000,China
  • 4. Metals and Chemistry Research Institute,China Academy of Railway Sciences,Beijing 100081,China
  • 5. Department of Mathematical Sciences,Karakoram International University,Gilgit-Baltistan,15100,Pakistan
  • 6. School of Materials Science and Engineering,University of Science and Technology Beijing,Beijing 100083,China
  • 折叠

Abstract

Continuous cooling transformation diagrams in synthetic weld heat-affected zone(SH-CCT diagrams)show the phase transition temperature and hardness at different cooling rates,which is an important basis for formulating the welding process or predicting the performance of welding heat-affected zone.However,the experimental determination of SH-CCT diagrams is a time-consuming and costly process,which does not conform to the development trend of new materials.In addition,the prediction of SH-CCT diagrams using metallurgical models remains a challenge due to the complexity of alloying elements and welding processes.So,in this study,a hybrid machine learning model consisting of multilayer per-ceptron classifier,k-Nearest Neighbors and random forest is established to predict the phase transforma-tion temperature and hardness of low alloy steel using chemical composition and cooling rate.Then the SH-CCT diagrams of 6 kinds of steels are calculated by the hybrid machine learning model.The results show that the accuracy of the classification model is up to 100%,the predicted values of the regression models are in good agreement with the experimental results,with high correlation coefficient and low error value.Moreover,the mathematical expressions of hardness in welding heat-affected zone of low alloy steel are calculated by symbolic regression,which can quantitatively express the relationship be-tween alloy composition,cooling time and hardness.This study demonstrates the great potential of the material informatics in the field of welding technology.

Key words

Continuous cooling transformation/Heat-affected zone/Machine learning/Symbolic regression

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基金项目

National Key Research and Development Program of China(2016YFB0700501)

国家自然科学基金(51571020)

出版年

2022
材料科学技术(英文版)
中国金属学会 中国材料研究学会 中国科学院金属研究所

材料科学技术(英文版)

CSTPCDCSCDSCI
影响因子:0.657
ISSN:1005-0302
参考文献量33
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