Intelligent milling tool wear estimation based on machine learning algorithms

被引:0
|
作者
Yunus Emre Karabacak
机构
[1] Karadeniz Technical University,Mechanical Engineering Department
关键词
Milling tool wear; Vibration; Acoustic emission; Machine learning; Data-driven model;
D O I
暂无
中图分类号
学科分类号
摘要
This study introduces an innovative approach to estimate tool wear in milling operations across diverse operational settings, employing a multi-sensor signal feature analysis. The method’s novelty lies in its selection of varied milling operational conditions for tool wear estimation and the utilization of distinct data sources to extract features. Tool wear estimation was conducted by analyzing multi-sensor signal data collected and processed under different working conditions. Features from both the time and frequency domains of sensor signals were extracted, and tool wear estimation was conducted comparatively using contemporary machine learning algorithms. The features obtained from different sources were incorporated into the dataset in single, paired, and triple combinations, with subsequent evaluation of the results. The proposed approach underwent validation using the NASA Ames milling dataset and the 2010 PHM Data Challenge dataset. The results showcase the remarkable success of this method in regression, especially across diverse operational conditions. The highest regression success rates were achieved using the VAM-ANN model (R = 0.981290, MSE = 0.0044047) for case 1, and the VFA-ANN model (R = 0.985628, MSE = 0.002943) for case 2. It was observed that the combination of different signal sources significantly enhances the model’s overall performance.
引用
收藏
页码:835 / 850
页数:15
相关论文
共 50 条
  • [21] Intelligent vision based wear forecasting on surfaces of machine tool elements
    Tobias Schlagenhauf
    Niklas Burghardt
    [J]. SN Applied Sciences, 2021, 3
  • [22] Tool Wear Prediction in Computer Numerical Control Milling Operations via Machine Learning
    Shurrab, Saeed
    Almshnanah, Abdulkarem
    Duwairi, Rehab
    [J]. 2021 12TH INTERNATIONAL CONFERENCE ON INFORMATION AND COMMUNICATION SYSTEMS (ICICS), 2021, : 220 - 227
  • [23] Tool Wear Monitoring for Complex Part Milling Based on Deep Learning
    Zhang, Xiaodong
    Han, Ce
    Luo, Ming
    Zhang, Dinghua
    [J]. APPLIED SCIENCES-BASEL, 2020, 10 (19): : 1 - 20
  • [24] Research on tool wear detection based on machine vision in end milling process
    Zhang, Jilin
    Zhang, Chen
    Guo, Song
    Zhou, Laishui
    [J]. PRODUCTION ENGINEERING-RESEARCH AND DEVELOPMENT, 2012, 6 (4-5): : 431 - 437
  • [25] Research on tool wear detection based on machine vision in end milling process
    Jilin Zhang
    Chen Zhang
    Song Guo
    Laishui Zhou
    [J]. Production Engineering, 2012, 6 (4-5) : 431 - 437
  • [26] An online tool wear detection system in dry milling based on machine vision
    Hou, Qiulin
    Sun, Jie
    Lv, Zhenyu
    Huang, Panling
    Song, Ge
    Sun, Chao
    [J]. INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2019, 105 (1-4): : 1801 - 1810
  • [27] An online tool wear detection system in dry milling based on machine vision
    Qiulin Hou
    Jie Sun
    Zhenyu Lv
    Panling Huang
    Ge Song
    Chao Sun
    [J]. The International Journal of Advanced Manufacturing Technology, 2019, 105 : 1801 - 1810
  • [28] Tool Wear and Tool Life Estimation Based on Linear Regression Learning
    Karuppusamy, Naveen Senniappan
    Pandian, Pal P.
    Lee, Hyun-Soon
    Kang, Bo-Yeong
    [J]. 2015 IEEE INTERNATIONAL CONFERENCE ON MECHATRONICS AND AUTOMATION, 2015, : 17 - 21
  • [29] Deep learning-based CNC milling tool wear stage estimation with multi-signal analysis
    Karabacak, Yunus Emre
    [J]. EKSPLOATACJA I NIEZAWODNOSC-MAINTENANCE AND RELIABILITY, 2023, 25 (03):
  • [30] The monitoring of micro milling tool wear conditions by wear area estimation
    Zhu, Kunpeng
    Yu, Xiaolong
    [J]. MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2017, 93 : 80 - 91