Micromachines (Oct 2023)

Tool Wear State Recognition Based on One-Dimensional Convolutional Channel Attention

  • Zhongling Xue,
  • Liang Li,
  • Ni Chen,
  • Wentao Wu,
  • Yuhang Zou,
  • Nan Yu

DOI
https://doi.org/10.3390/mi14111983
Journal volume & issue
Vol. 14, no. 11
p. 1983

Abstract

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Tool wear state recognition is an important part of tool condition monitoring (TCM). Online tool wear monitoring can avoid wasteful early tool changes and degraded workpiece quality due to later tool changes. This study incorporated an attention mechanism implemented by one-dimensional convolution in a convolutional neural network for improving the performance of the tool wear recognition model (1DCCA-CNN). The raw multichannel cutting signals were first preprocessed and three time-domain features were extracted to form a new time-domain sequence. CNN was used for deep feature extraction of temporal sequences. A novel 1DCNN-based channel attention mechanism was proposed to weigh the channel dimensions of deep features to enhance important feature channels and capture key features. Compared with the traditional squeeze excitation attention mechanism, 1DCNN can enhance the information interaction between channels. The performance of the model was validated on the PHM2010 public cutting dataset. The excellent performance of the proposed 1DCCA-CNN was verified by the improvement of 4% and 5% compared to the highest level of existing research results on T1 and T3 datasets, respectively.

Keywords