TY - JOUR
T1 - Intelligent tool wear monitoring and multi-step prediction based on deep learning model
AU - Cheng, Minghui
AU - Jiao, Li
AU - Yan, Pei
AU - Jiang, Hongsen
AU - Wang, Ruibin
AU - Qiu, Tianyang
AU - Wang, Xibin
N1 - Publisher Copyright:
© 2021 The Society of Manufacturing Engineers
PY - 2022/1
Y1 - 2022/1
N2 - In modern manufacturing industry, tool wear monitoring plays a significant role in ensuring product quality and machining efficiency. Numerous data-driven models based on deep learning have been developed to improve the accuracy of tool wear monitoring. However, tool wear monitoring under variable working conditions is rarely investigated. More importantly, for data-driven smart manufacturing, it is more meaningful and challenging to simultaneously achieve tool wear monitoring and multi-step prediction. To address the aforementioned issue, a novel framework based on feature normalization, attention mechanism, and deep learning algorithms was proposed for tool wear monitoring and multi-step prediction. Feature normalization was introduced to eliminate the dependence of local features on cutting conditions, and the attention mechanism was applied to enhance valuable information and weaken redundant information. Then a parallel convolutional neural network (parallel CNN) structure with different layers followed by Bi-directional long short term memory (BiLSTM) was developed for tool condition monitoring. Finally, based on the monitored tool wear values, a new tool condition prediction model based on the dense residual neural network (ResNetD) was proposed for short-term and long-term prediction of tool wear. Tool wear experiments under different combinations of cutting parameters were conducted to verify the proposed model, and the results showed that the proposed model has great advantages in efficiency and robustness compared with other data-driven models.
AB - In modern manufacturing industry, tool wear monitoring plays a significant role in ensuring product quality and machining efficiency. Numerous data-driven models based on deep learning have been developed to improve the accuracy of tool wear monitoring. However, tool wear monitoring under variable working conditions is rarely investigated. More importantly, for data-driven smart manufacturing, it is more meaningful and challenging to simultaneously achieve tool wear monitoring and multi-step prediction. To address the aforementioned issue, a novel framework based on feature normalization, attention mechanism, and deep learning algorithms was proposed for tool wear monitoring and multi-step prediction. Feature normalization was introduced to eliminate the dependence of local features on cutting conditions, and the attention mechanism was applied to enhance valuable information and weaken redundant information. Then a parallel convolutional neural network (parallel CNN) structure with different layers followed by Bi-directional long short term memory (BiLSTM) was developed for tool condition monitoring. Finally, based on the monitored tool wear values, a new tool condition prediction model based on the dense residual neural network (ResNetD) was proposed for short-term and long-term prediction of tool wear. Tool wear experiments under different combinations of cutting parameters were conducted to verify the proposed model, and the results showed that the proposed model has great advantages in efficiency and robustness compared with other data-driven models.
KW - Attention mechanism
KW - Deep learning
KW - Feature normalization
KW - Multi-step prediction
KW - Tool wear monitoring
UR - http://www.scopus.com/inward/record.url?scp=85120686987&partnerID=8YFLogxK
U2 - 10.1016/j.jmsy.2021.12.002
DO - 10.1016/j.jmsy.2021.12.002
M3 - Article
AN - SCOPUS:85120686987
SN - 0278-6125
VL - 62
SP - 286
EP - 300
JO - Journal of Manufacturing Systems
JF - Journal of Manufacturing Systems
ER -