Online porosity prediction in laser welding of aluminum alloys based on a multi-fidelity deep learning framework

被引:11
|
作者
Ma, Deyuan [1 ]
Jiang, Ping [1 ]
Shu, Leshi [1 ]
Gong, Zhaoliang [1 ]
Wang, Yilin [1 ]
Geng, Shaoning [1 ]
机构
[1] Huazhong Univ Sci & Technol, Sch Mech Sci & Engn, State Key Lab Digital Mfg Equipment & Technol, Wuhan 430074, Hubei, Peoples R China
基金
中国国家自然科学基金;
关键词
Aluminum alloys laser welding; Porosity prediction; Multi-fidelity deep learning framework; Sparse auto-encoder; Fusion features; Deep belief network; NEURAL-NETWORKS; INSTABILITY; DEFECTS;
D O I
10.1007/s10845-022-02033-9
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Pore is one kind of the typical defects in aluminum alloys laser welding. Porosity is an important indicator for evaluating welding quality, and porosity assessment has attracted increasing attention. This paper presents a multi-fidelity deep learning framework (MFDLF) that enables online porosity prediction without post-weld destructive inspection or radioactive detection. In the proposed approach, the maximum temperature on the bottom wall of the keyhole acquired by numerical simulation is used as the data of fidelity 1 (F1), and the coherent optical measurement technology is used to acquire the keyhole depth as the data of fidelity 2 (F2). After extracting the respective four fluctuation characteristics of the multi-fidelity data separately, a sparse auto-encoder (SAE) is used to fuse the four characteristics into an overall feature. Based on the obvious correspondence between porosity and multi-fidelity fusion features, the MFDLF is constructed with tandem two deep belief network (DBN) models, where the former DBN utilizes process parameters to predict the overall feature of F1 data (Feature 1) that is difficult to obtain in real time. Feature 1 is combined with the overall feature of F2 data (Feature 2) that can be obtained online to predict porosity through the latter DBN. The results show that the MFDLF can predict porosity with significantly higher accuracy than the models constructed using only single-fidelity data.
引用
收藏
页码:55 / 73
页数:19
相关论文
共 50 条
  • [31] Aleatory uncertainty quantification based on multi-fidelity deep neural networks
    Li, Zhihui
    Montomoli, Francesco
    RELIABILITY ENGINEERING & SYSTEM SAFETY, 2024, 245
  • [32] A MACHINE LEARNING FRAMEWORK FOR PHYSICS-BASED MULTI-FIDELITY MODELING AND HEALTH MONITORING FOR A COMPOSITE WING
    Makkar, Gaurav
    Smith, Cameron
    Drakoulas, George
    Kopsaftopoulous, Fotis
    Gandhi, Farhan
    PROCEEDINGS OF ASME 2022 INTERNATIONAL MECHANICAL ENGINEERING CONGRESS AND EXPOSITION, IMECE2022, VOL 1, 2022,
  • [33] A multi-fidelity transfer learning strategy based on multi-channel fusion
    Zhang, Zihan
    Ye, Qian
    Yang, Dejin
    Wang, Na
    Meng, Guoxiang
    JOURNAL OF COMPUTATIONAL PHYSICS, 2024, 506
  • [34] Transfer learning and multi-fidelity modeling of laser-driven particle acceleration
    Djordjevic, B. Z.
    Kim, J.
    Wilks, S. C.
    Ludwig, J.
    Myers, C.
    Kemp, A. J.
    Swanson, K. K.
    Zeraouli, G.
    Grace, E. S.
    Simpson, R. A.
    Rusby, D.
    Antoine, A. F.
    Bremer, P. -t.
    Thiagarajan, J.
    Anirudh, R.
    Williams, G. J.
    Ma, T.
    Mariscal, D. A.
    PHYSICS OF PLASMAS, 2023, 30 (04)
  • [35] Efficient aerodynamic shape optimization using transfer learning based multi-fidelity deep neural network
    Wu, Ming-Yu
    He, Xian-Jun
    Sun, Xiao-Hui
    Tong, Ting-Shuai
    Chen, Zhi-Hua
    Zheng, Chun
    PHYSICS OF FLUIDS, 2024, 36 (11)
  • [36] A physics-embedded deep-learning framework for efficient multi-fidelity modeling applied to guided wave based structural health monitoring
    Nerlikar, Vivek
    Miorelli, Roberto
    Recoquillay, Arnaud
    d'Almeida, Oscar
    ULTRASONICS, 2024, 141
  • [37] An active learning multi-fidelity metamodeling method based on the bootstrap estimator
    Wu, Yuda
    Hu, Jiexiang
    Zhou, Qi
    Wang, Shengyi
    Jin, Peng
    AEROSPACE SCIENCE AND TECHNOLOGY, 2020, 106
  • [38] Calibration and Validation Framework for Selective Laser Melting Process Based on Multi-Fidelity Models and Limited Experiment Data
    Olleak, Alaa
    Xi, Zhimin
    JOURNAL OF MECHANICAL DESIGN, 2020, 142 (08)
  • [39] DDDAS-based multi-fidelity simulation framework for supply chain systems
    Celik, Nurcin
    Lee, Seungho
    Vasudevan, Karthik
    Son, Young-Jun
    IIE TRANSACTIONS, 2010, 42 (05) : 325 - 341
  • [40] Leveraging deep reinforcement learning for design space exploration with multi-fidelity surrogate model
    Li, Haokun
    Wang, Ru
    Wang, Zuoxu
    Li, Guannan
    Wang, Guoxin
    Yan, Yan
    JOURNAL OF ENGINEERING DESIGN, 2024,