Data-Driven Prognostics Using Random Forests: Prediction of Tool Wear

被引:0
|
作者
Wu, Dazhong [1 ]
Jennings, Connor [1 ]
Terpenny, Janis [1 ]
Gao, Robert [2 ]
Kumara, Soundar [1 ]
机构
[1] Penn State Univ, Dept Ind & Mfg Engn, University Pk, PA 16802 USA
[2] Case Western Reserve Univ, Dept Mech & Aerosp Engn, Cleveland, OH 44106 USA
关键词
Tool wear prediction; Predictive modeling; Machine learning; Random forests (RFs); Support vector machines (SVMs); Artificial neural networks (ANNs); Prognostics and health management; ARTIFICIAL-NEURAL-NETWORKS; FLANK WEAR; MAINTENANCE; REGRESSION; MODEL; PROGRESSION; SIGNALS; SYSTEM; ONLINE;
D O I
暂无
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Manufacturers have faced an increasing need for the development of predictive models that help predict mechanical failures and remaining useful life of a manufacturing system or its system components. Model-based or physics-based prognostics develops mathematical models based on physical laws or probability distributions, while an in-depth physical understanding of system behaviors is required. In practice, however, some of the distributional assumptions do not hold true. To overcome the limitations of model-based prognostics, data-driven methods have been increasingly applied to machinery prognostics and maintenance management, transforming legacy manufacturing systems into smart manufacturing systems with artificial intelligence. While earlier work demonstrated the effectiveness of data-driven approaches, most of these methods applied to prognostics and health management (PHM) in manufacturing are based on artificial neural networks (ANNs) and support vector regression (SVR). With the rapid advancement in artificial intelligence, various machine learning algorithms have been developed and widely applied in many engineering fields. The objective of this research is to explore the ability of random forests (RFs) to predict tool wear in milling operations. The performance of ANNs, SVR, and RFs are compared using an experimental dataset. The experimental results have shown that RFs can generate more accurate predictions than ANNs and SVR in this experiment.
引用
收藏
页数:9
相关论文
共 50 条
  • [31] Temporal data-driven failure prognostics using BiGRU for optical networks
    Zhang, Chunyu
    Wang, Danshi
    Wang, Lingling
    Song, Jianan
    Liu, Songlin
    Li, Jin
    Guan, Luyao
    Liu, Zhuo
    Zhang, Min
    [J]. JOURNAL OF OPTICAL COMMUNICATIONS AND NETWORKING, 2020, 12 (08) : 277 - 287
  • [32] A Flexible Data-Driven Prognostics Model Using System Performance Metrics
    -Gonzalez, Abel Diaz
    Coursey, Austin
    Quinones-Grueiro, Marcos
    Biswas, Gautam
    [J]. IFAC PAPERSONLINE, 2024, 58 (04): : 222 - 227
  • [33] A data-driven approach for tool wear recognition and quantitative prediction based on radar map feature fusion
    Li, Xuebing
    Liu, Xianli
    Yue, Caixu
    Liu, Shaoyang
    Zhang, Bowen
    Li, Rongyi
    Liang, Steven Y.
    Wang, Lihui
    [J]. MEASUREMENT, 2021, 185
  • [34] Hybrid physics data-driven model-based fusion framework for machining tool wear prediction
    Gao, Tianhong
    Zhu, Haiping
    Wu, Jun
    Lu, Zhiqiang
    Zhang, Shaowen
    [J]. INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2024, 132 (3-4): : 1481 - 1496
  • [35] Hybrid physics data-driven model-based fusion framework for machining tool wear prediction
    Tianhong Gao
    Haiping Zhu
    Jun Wu
    Zhiqiang Lu
    Shaowen Zhang
    [J]. The International Journal of Advanced Manufacturing Technology, 2024, 132 : 1481 - 1496
  • [36] Data-driven control of wave energy systems using random forests and deep neural networks
    Pasta, Edoardo
    Carapellese, Fabio
    Faedo, Nicolas
    Brandimarte, Paolo
    [J]. APPLIED OCEAN RESEARCH, 2023, 140
  • [37] Data-driven Fluid Simulations using Regression Forests
    Ladicky, L'ubor
    Jeong, SoHyeon
    Solenthaler, Barbara
    Pollefeys, Marc
    Gross, Markus
    [J]. ACM TRANSACTIONS ON GRAPHICS, 2015, 34 (06):
  • [38] A Comparative Study on Machine Learning Algorithms for Smart Manufacturing: Tool Wear Prediction Using Random Forests
    Wu, Dazhong
    Jennings, Connor
    Terpenny, Janis
    Gao, Robert X.
    Kumara, Soundar
    [J]. JOURNAL OF MANUFACTURING SCIENCE AND ENGINEERING-TRANSACTIONS OF THE ASME, 2017, 139 (07):
  • [39] Data-driven Prognostics for PEMFC Systems by Different Echo State Network Prediction Structures
    Hua, Zhiguang
    Zheng, Zhixue
    Pera, Marie-Cecile
    Gao, Fei
    [J]. 2020 IEEE TRANSPORTATION ELECTRIFICATION CONFERENCE & EXPO (ITEC), 2020, : 495 - 500
  • [40] A tool wear monitoring method based on data-driven and physical output
    Qin, Yiyuan
    Liu, Xianli
    Yue, Caixu
    Wang, Lihui
    Gu, Hao
    [J]. ROBOTICS AND COMPUTER-INTEGRATED MANUFACTURING, 2025, 91