Intelligent tool wear monitoring and multi-step prediction based on deep learning model

被引:113
|
作者
Cheng, Minghui [1 ]
Jiao, Li [2 ]
Yan, Pei [2 ]
Jiang, Hongsen [1 ]
Wang, Ruibin [1 ]
Qiu, Tianyang [2 ]
Wang, Xibin [2 ]
机构
[1] Beijing Inst Technol, Sch Mech Engn, 5 Zhongguancun South St, Beijing 100081, Peoples R China
[2] Beijing Inst Technol, Key Lab Fundamental Sci Adv Machining, 5 Zhongguancun South St, Beijing 100081, Peoples R China
关键词
Feature normalization; Attention mechanism; Tool wear monitoring; Multi-step prediction; Deep learning; REMAINING USEFUL LIFE; GAUSSIAN PROCESS REGRESSION; MACHINE HEALTH; NEURAL-NETWORK; PROGNOSTICS; STATE;
D O I
10.1016/j.jmsy.2021.12.002
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
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.
引用
收藏
页码:286 / 300
页数:15
相关论文
共 50 条
  • [31] Multi-step Prediction for Learning Invariant Representations in Reinforcement Learning
    Xu, Xinyue
    Lv, Kai
    Dong, Xingye
    Han, Sheng
    Lin, Youfang
    2021 INTERNATIONAL CONFERENCE ON HIGH PERFORMANCE BIG DATA AND INTELLIGENT SYSTEMS (HPBD&IS), 2021, : 202 - 206
  • [32] Deep learning model on rates of change for multi-step ahead streamflow forecasting
    Tan, Woon Yang
    Lai, Sai Hin
    Pavitra, Kumar
    Teo, Fang Yenn
    El-Shafie, Ahmed
    JOURNAL OF HYDROINFORMATICS, 2023, 25 (05) : 1667 - 1689
  • [33] Multi-step commodity forecasts using deep learning
    Bora, Siddhartha S.
    Katchova, Ani L.
    AGRICULTURAL FINANCE REVIEW, 2024, 84 (4/5) : 269 - 296
  • [34] Transfer Learning for Multi-Step Resource Utilization Prediction
    Parera, Claudia
    Liao, Qi
    Malanchini, Ilaria
    Wellington, Dan
    Redondi, Alessandro E. C.
    Cesana, Matteo
    2020 IEEE 31ST ANNUAL INTERNATIONAL SYMPOSIUM ON PERSONAL, INDOOR AND MOBILE RADIO COMMUNICATIONS (IEEE PIMRC), 2020,
  • [35] A multi-step regularity assessment and joint prediction system for ordering time series based on entropy and deep learning
    Zhou, Yichen
    Han, Wenhe
    Zhou, Heng
    Autonomous Intelligent Systems, 2024, 4 (01):
  • [36] Multi-step Prediction of Photovoltaic Power Based on Multi-view Features Extraction and Multi-task Learning
    Chen, Dianhao
    Zang, Haixiang
    Liu, Jingxuan
    Wei, Zhinong
    Sun, Guoqiang
    Li, Xinxin
    Gaodianya Jishu/High Voltage Engineering, 2024, 50 (09): : 3924 - 3933
  • [37] Research on tool wear prediction based on temperature signals and deep learning
    He, Zhaopeng
    Shi, Tielin
    Xuan, Jianping
    Li, Tianxiang
    WEAR, 2021, 478
  • [38] An autoencoder wavelet based deep neural network with attention mechanism for multi-step prediction of plant growth
    Alhnaity, Bashar
    Kollias, Stefanos
    Leontidis, Georgios
    Jiang, Shouyong
    Schamp, Bert
    Pearson, Simon
    INFORMATION SCIENCES, 2021, 560 : 35 - 50
  • [39] Research progress on intelligent monitoring of tool condition based on deep learning
    Cao, Dahu
    Liu, Wei
    Ge, Jimin
    Du, Shishuai
    Liu, Wang
    Deng, Zhaohui
    Chen, Jia
    INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2024, 134 (5-6) : 2129 - 2150
  • [40] Response Prediction Based on Temporal and Spatial Deep Learning Model for Intelligent Structural Health Monitoring
    Du, Bowen
    Lin, Chunming
    Sun, Leilei
    Zhao, Yangping
    Li, Linchao
    IEEE INTERNET OF THINGS JOURNAL, 2022, 9 (15): : 13364 - 13375