Identification of Milling Cutter Wear State under Variable Working Conditions Based on Optimized SDP
Hao Chang,
Feng Gao,
Yan Li
et al.
Abstract:Traditional data-driven tool wear state recognition methods rely on complete data under targeted working conditions. However, in actual cutting operations, working conditions vary, and data for many conditions lack labels, with data distribution characteristics differing between conditions. To address these issues, this article proposes a method for recognizing the wear state of milling cutters under varying working conditions based on an optimized symmetrized dot pattern (SDP). This method utilizes complete d… Show more
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