Multiple operational mode prediction at milling tool-tip based on transfer learning

Journal of Intelligent Manufacturing(2024)

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摘要
Understanding the tool-tip dynamics is crucial for evaluating the performance in milling and essential for chatter prediction; obtaining and predicting tool-tip modes efficiently and accurately is thus essential, especially when the milling parameters or tool-holder assembly change. However, there is currently no such efficient and explainable method with high generalization ability for obtaining and predicting the tool-tip modes considering the above change. To address this issue, the stochastic subspace identification (SSI) method is initially used to acquire multiple operational modes more efficient and cost-effective than traditional methods under varying milling parameters. Subsequently, machine learning (ML) models are trained to predict the above modes under varying spindle speeds and axial cutting depth. Moreover, when changes occur in the tool-holder assembly, a transfer learning (TL) model based on receptance coupling substructure analysis (RCSA) theory is proposed to re-establish the modes prediction model efficiently with the above data. The TL model has a modal frequency prediction error below 2
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关键词
Machine dynamics,Multiple operational modes,Transfer learning,Chatter
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