A self-learning method with domain knowledge integration for intelligent welding sequence planning.

Journal: Scientific reports
Published Date:

Abstract

Due to the emergence of mass personalized production, intelligent welding systems must achieve high levels of productivity and flexibility. Therefore, a self-learning welding-task sequencing method that is driven by data and knowledge was developed during this study. First, a minimized dataset of welding sequences, which is required to predict the welding deformation, was designed according to the number and directions of the welds included in the welding tasks. The dataset consisted of a finite number of welding sequences and their corresponding welding deformation data. Then, an algorithm to predict the welding deformation was developed. To improve the interpretability of the results, domain knowledge was integrated into the construction and training processes of a self-learning model. Finally, a case study regarding bracket welding was investigated. With FEA as the benchmark, the maximum relative error of the welding deformation predicted by the algorithm designed to predict the welding deformation was 8%. The maximum deformation of the optimal welding-task sequence output by the self-learning welding-task sequencing method driven by data and knowledge was 32.31% less than that produced by the rule-based reasoning method. The study results demonstrate that the proposed welding-task sequencing method is effective for welding sequence planning of laser welding bracket structures.

Authors

  • Weidong Shen
    College of Mechanical Engineering, Taiyuan University of Technology, Taiyuan, 030024, China. shenweidong@tyut.edu.cn.
  • Xuewen Wang
    Institute of Flexible Electronics, Northwestern Polytechnical University, Xi'an, 710072, China.
  • Juanli Li
    College of Mechanical Engineering, Taiyuan University of Technology, Taiyuan, 030024, China.
  • Yong Wang
    State Key Laboratory of Chemical Biology and Drug Discovery, Department of Applied Biology and Chemical Technology, The Hong Kong Polytechnic University Hunghom Kowloon Hong Kong P. R. China kwok-yin.wong@polyu.edu.hk.
  • Xiaojun Qiao
    Taiyuan Heavy Machinery Group Co., Ltd., Taiyuan, 030000, China.

Keywords

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