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A Physics-Informed Neural Network framework with strong robustness to low-accuracy physical models for predicting adhesive wear of self-made BNNC milling tool

  • Shengyue Tan
  • , Dongqian Wang*
  • , Yongliang Liu
  • , Yonglin Cai
  • , Jia Wei
  • , Lei Wang
  • , Uwe Teicher
  • , Albrecht Hänel
  • , Steffen Ihlenfeldt
  • , Zhiqiang Liang
  • *此作品的通讯作者
  • Beijing Jiaotong University
  • State Key Laboratory of Special Vehicle Design and Manufacturing Integration Technology
  • WHZ Westsächsische Hochschule Zwickau
  • Fraunhofer Institute for Machine Tools and Forming Technology
  • Technische Universität Dresden
  • Beijing Institute of Technology

科研成果: 期刊稿件文章同行评审

摘要

In high-speed hard milling, flank wear prediction of ultra-hard tools is necessary, where accuracy and stability are the two key indicators. Physics-Informed Neural Network (PINN) improves the prediction stability by embedding consistent physical laws into the training process. However, when low-accuracy physical models are commonly employed to constrain the solution space, optimization paths may be misled. This limits the performance of PINNs and their weighted frameworks. To address the issue of low-accuracy physical model misleading the optimization direction, a novel framework termed Physics-Informed Weighted Neural Network based on Prediction Error of Physics-driven models (PIWNN-PEP) is proposed. PIWNN-PEP can enhance the robustness of PINN against low-accuracy models. Furthermore, to capture long-term and complex dependencies over long time scales, a collaborative network xLSTM-Informer (xICNet) with a stacked mLSTM-sLSTM-Informer architecture is established, of which xICNet directly builds a mapping between multidimensional cutting forces and wear values within the PIWNN-PEP framework. The experimental result demonstrates that the proposed method prominently enhances robustness to low-accuracy physical models, compared with existing weighted PINN frameworks. The average tool wear prediction error remains below 1 μm.

源语言英语
页(从-至)285-301
页数17
期刊Journal of Manufacturing Processes
160
DOI
出版状态已出版 - 28 2月 2026
已对外发布

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