2023
DOI: 10.3390/pr11061785
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Synthetic Minority Oversampling Enhanced FEM for Tool Wear Condition Monitoring

Abstract: Recent advances in artificial intelligence (AI) technology have led to increasing interest in the development of AI-based tool wear condition monitoring methods, heavily relying on large training samples. However, the high cost of tool wear experiment and the uncertainty of tool wear change in the machining process lead to the problems of sample missing and insufficiency in the model training stage, which seriously affects the identification accuracy of many AI models. In this paper, a novel identification met… Show more

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