Feature selection for predicting tool wear of machine tools

被引:0
|
作者
Wen-Nan Cheng
Chih-Chun Cheng
Yao-Hsuan Lei
Ping-Chun Tsai
机构
[1] National Chung Cheng University,Advanced Institute of Manufacturing with High
关键词
Feature ranking; Feature screening; Singular value decomposition; Tool wear;
D O I
暂无
中图分类号
学科分类号
摘要
In this study, the vibration transmitted solely from a spindle to the worktable is proposed to be a crucial feature of wear prediction models for machine tools. To validate the effectiveness of the proposed feature, a feature ranking and screening methodology was also used for developing a tool wear prediction model. First, the features extracted from vibration signals were ranked according to their contributions to tool wear prediction. The features were then filtered through a screening process based on singular value decomposition to eliminate redundant features, which exhibited collinearity with features of higher rankings. The aim of the aforementioned steps was to use a relatively small number of highly appropriate features to create an accurate real-time tool wear prediction model. The results indicated that the accuracy of the tool wear prediction model based on the proposed feature ranking and screening methodology is higher than that of models without feature ranking or screening. Moreover, the proposed feature was proven to be more important and effective than other features.
引用
收藏
页码:1483 / 1501
页数:18
相关论文
共 50 条
  • [21] Machine Learning Feature Selection for Predicting High Concentration Therapeutic Antibody Aggregation
    Lai, Pin-Kuang
    Fernando, Amendra
    Cloutier, Theresa K.
    Kingsbury, Jonathan S.
    Gokarn, Yatin
    Halloran, Kevin T.
    Calero-Rubio, Cesar
    Trout, Bernhardt L.
    JOURNAL OF PHARMACEUTICAL SCIENCES, 2021, 110 (04) : 1583 - 1591
  • [22] Wear particle image analysis: feature extraction, selection and classification by deep and machine learning
    Vivek, Joseph
    Venkatesh, Naveen S.
    Mahanta, Tapan K.
    Sugumaran, V
    Amarnath, M.
    Ramteke, Sangharatna M.
    Marian, Max
    INDUSTRIAL LUBRICATION AND TRIBOLOGY, 2024, 76 (05) : 599 - 607
  • [23] Item response theory as a feature selection and interpretation tool in the context of machine learning
    Adrienne S. Kline
    Theresa J. B. Kline
    Joon Lee
    Medical & Biological Engineering & Computing, 2021, 59 : 471 - 482
  • [24] A Machine Learning-Based Approach for Predicting Tool Wear in Industrial Milling Processes
    Van Herreweghe, Mathias
    Verbeke, Mathias
    Meert, Wannes
    Jacobs, Tom
    MACHINE LEARNING AND KNOWLEDGE DISCOVERY IN DATABASES, ECML PKDD 2019, PT II, 2020, 1168 : 414 - 425
  • [25] Item response theory as a feature selection and interpretation tool in the context of machine learning
    Kline, Adrienne S.
    Kline, Theresa J. B.
    Lee, Joon
    MEDICAL & BIOLOGICAL ENGINEERING & COMPUTING, 2021, 59 (02) : 471 - 482
  • [26] CORROSIVE WEAR OF WOODCUTTING TOOLS .1. EFFECTS OF TOOL MATERIALS ON THE CORROSIVE WEAR OF SPUR MACHINE-BITS
    FUKUDA, H
    BANSHOYA, K
    MURASE, Y
    MOKUZAI GAKKAISHI, 1992, 38 (08): : 764 - 770
  • [27] Feature weighting as a tool for unsupervised feature selection
    Panday, Deepak
    de Amorim, Renato Cordeiro
    Lane, Peter
    INFORMATION PROCESSING LETTERS, 2018, 129 : 44 - 52
  • [28] PREDICTING WEAR ON DROP FORGING TOOLS.
    Schneider, Rolf
    Wireworld international, 1985, 27 (09): : 186 - 189
  • [29] MULTISENSOR INTEGRATION - AN AUTOMATIC FEATURE-SELECTION AND STATE IDENTIFICATION METHODOLOGY FOR TOOL WEAR ESTIMATION
    GUINEA, D
    RUIZ, A
    BARRIOS, LJ
    COMPUTERS IN INDUSTRY, 1991, 17 (2-3) : 121 - 130
  • [30] Robust Tool Wear Monitoring Using Systematic Feature Selection in Turning Processes With Consideration of Uncertainties
    Zhang, Bin
    Katinas, Christopher
    Shin, Yung C.
    JOURNAL OF MANUFACTURING SCIENCE AND ENGINEERING-TRANSACTIONS OF THE ASME, 2018, 140 (08):