2024
DOI: 10.1088/1361-6501/ad95ad
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Multi-source domain generalization tool wear prediction based on wide convolution weighted antagonism

Honghao Fu,
Zisheng Li,
Xiaoping Xiao
et al.

Abstract: While traditional deep learning models achieve high accuracy in predicting tool wear under consistent working conditions, actual production processes frequently involve varying conditions due to different processing methods. The wear data of different working conditions have a large difference in distribution, so that the wear signal of milling cutter trained in one working condition can only predict the wear value of the working condition, which will cause a large waste of material and manpower for actual pro… Show more

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