Dynamic Deep Learning to Predict Mechanical Properties of High-Strength Low-Alloy Steels

被引:1
作者
Cao, Yang [1 ]
Wu, Siwei [1 ]
Tang, Shuai [1 ]
Cao, Guangming [1 ]
Zhang, Chengde [1 ]
Hedstrom, Peter [2 ]
Zhou, Xiaoguang [1 ]
Liu, Zhenyu [1 ]
机构
[1] Northeastern Univ, State Key Lab Rolling & Automat, Shenyang 110819, Peoples R China
[2] KTH Royal Inst Technol, Dept Mat Sci & Engn, S-10044 Stockholm, Sweden
来源
METALLURGICAL AND MATERIALS TRANSACTIONS A-PHYSICAL METALLURGY AND MATERIALS SCIENCE | 2025年 / 56卷 / 01期
基金
美国国家科学基金会;
关键词
MICROSTRUCTURE; TEMPERATURE; PRECIPITATION; MODE;
D O I
10.1007/s11661-024-07633-z
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Modeling the relationship of properties with composition, process, and microstructure is important to designing and developing new steel products. As traditional Machine Learning (ML) relies only on digital data, it is incapable of treating multimodal information. In this paper, a Deep Learning (DL) method is proposed to predict mechanical properties of High-Strength Low-Alloy (HSLA) steels, in which both microstructural evolution during hot rolling and transformations during cooling are taken into account. Continuous Cooling Transformation (CCT) diagrams are generated based on hot rolling parameters and compositions and superimposed with Cooling Path (CP) curves to represent the dynamic changes of transformed products, which is perceived and processed by the Convolutional Neural Network (CNN) as inputs. By doing so, the multimodal model for predicting mechanical properties of high-grade pipeline steels was developed, which demonstrates superior prediction accuracy and stability over traditional data-driven ML models. Also, reverse visualization is performed to work out hotspots in cooling processes, which clearly demonstrates the interpretability of the DL model. This framework provides useful guidance for designing production routes of HSLA steels and can also be implemented for other high-strength steels.
引用
收藏
页码:168 / 179
页数:12
相关论文
共 40 条
[1]   Physical metallurgy guided deep learning for yield strength of hot-rolled steel based on the small labeled dataset [J].
Cao, Guangming ;
Liu, Zhenyu ;
Cui, Chunyuan ;
Cao, Yang ;
Liu, Jianjun ;
Dong, Zishuo ;
Wu, Siwei .
MATERIALS & DESIGN, 2022, 223
[2]   Modeling Continuous Cooling Transformations for HSLA Steels With Physical Metallurgy Guided Hereditary Machine Learning [J].
Cao, Yang ;
Cao, Guangming ;
Cui, Chunyuan ;
Li, Xin ;
Wu, Siwei ;
Liu, Zhenyu .
METALLURGICAL AND MATERIALS TRANSACTIONS A-PHYSICAL METALLURGY AND MATERIALS SCIENCE, 2023, 54 (12) :4891-4904
[3]   Accelerating the Discovery of New DP Steel Using Machine Learning-Based Multiscale Materials Simulations [J].
Chehade, Abdallah A. ;
Belgasam, Tarek M. ;
Ayoub, Georges ;
Zbib, Hussein M. .
METALLURGICAL AND MATERIALS TRANSACTIONS A-PHYSICAL METALLURGY AND MATERIALS SCIENCE, 2020, 51 (06) :3268-3279
[4]   A strategy combining machine learning and physical metallurgical principles to predict mechanical properties for hot rolled Ti micro-alloyed steels [J].
Cui, Chunyuan ;
Cao, Guangming ;
Li, Xin ;
Gao, Zhiwei ;
Liu, Jianjun ;
Liu, Zhenyu .
JOURNAL OF MATERIALS PROCESSING TECHNOLOGY, 2023, 311
[5]   The coupling machine learning for microstructural evolution and rolling force during hot strip rolling of steels [J].
Cui, Chunyuan ;
Cao, Guangming ;
Li, Xin ;
Gao, Zhiwei ;
Zhou, Xiaoguang ;
Liu, Zhenyu .
JOURNAL OF MATERIALS PROCESSING TECHNOLOGY, 2022, 309
[6]   Quantitative Short-Term Precipitation Model Using Multimodal Data Fusion Based on a Cross-Attention Mechanism [J].
Cui, Yingjie ;
Qiu, Yunan ;
Sun, Le ;
Shu, Xinyao ;
Lu, Zhenyu .
REMOTE SENSING, 2022, 14 (22)
[7]   Modelling the kinetics of strain induced precipitation in Nb microalloyed steels [J].
Dutta, B ;
Palmiere, EJ ;
Sellars, CM .
ACTA MATERIALIA, 2001, 49 (05) :785-794
[9]  
Fu R., arXiv preprint arXiv. 2020, V2008, P02312, DOI [10.48550/arXiv.2008.02312, DOI 10.48550/ARXIV.2008.02312]
[10]   Deep Multimodal Representation Learning: A Survey [J].
Guo, Wenzhong ;
Wang, Jianwen ;
Wang, Shiping .
IEEE ACCESS, 2019, 7 :63373-63394