材料科学技术(英文版)2022,Vol.128Issue(33) :31-43.

A generic and extensible model for the martensite start temperature incorporating thermodynamic data mining and deep learning framework

Chenchong Wang Kaiyu Zhu Peter Hedstr?m Yong Li Wei Xu
材料科学技术(英文版)2022,Vol.128Issue(33) :31-43.

A generic and extensible model for the martensite start temperature incorporating thermodynamic data mining and deep learning framework

Chenchong Wang 1Kaiyu Zhu 1Peter Hedstr?m 2Yong Li 1Wei Xu1
扫码查看

作者信息

  • 1. State Key Laboratory of Rolling and Automation,Northeastern University,Shenyang 110819,China
  • 2. Department of Materials Science and Engineering,KTH Royal Institute of Technology,Stockholm 100 44,Sweden
  • 折叠

Abstract

The martensite start temperature is a critical parameter for steels with metastable austenite.Although numerous models have been developed to predict the martensite start(Ms)temperature,the complexity of the martensitic transformation greatly limits their performance and extensibility.In this work,we ap-ply deep data mining of thermodynamic calculations and deep learning to develop a generic model for Ms prediction.Deep data mining was used to establish a hierarchical database with three levels of in-formation.Then,a convolutional neural network model,which can accurately treat the hierarchical data structure,was used to obtain the final model.By integrating thermodynamic calculations,traditional ma-chine learning and deep learning modeling,the final predictor model shows excellent generalizability and extensibility,i.e.model performance both within and beyond the composition range of the original database.The effects of 15 alloying elements were considered successfully using the proposed method-ology.The work suggests that,with the help of deep data mining considering the physical mechanisms,deep learning methods can partially mitigate the challenge with limited data in materials science and provide a means for solving complex problems with small databases.

Key words

Martensite transformation/Data mining/Deep learning/Extensibility/Small-sample problem

引用本文复制引用

基金项目

国家自然科学基金(51801019)

国家自然科学基金(U1808208)

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72
段落导航相关论文