In-process cutting tool remaining useful life evaluation based on operational reliability assessment

被引:0
作者
Huibin Sun
Xianzhi Zhang
Weilong Niu
机构
[1] Northwestern Polytechnical University,Key Laboratory of Contemporary Design and Integrated Manufacturing Technology, Ministry of Education
[2] Kingston University,School of Mechanical and Automotive Engineering
来源
The International Journal of Advanced Manufacturing Technology | 2016年 / 86卷
关键词
Cutting tools; Operational reliability assessment; Remaining useful life evaluation;
D O I
暂无
中图分类号
学科分类号
摘要
In this paper, a method for evaluating the remaining useful life of an individual cutting tool while the tool is in process is proposed. The method is based on the operational reliability of a cutting tool which is used to assess its ability to complete a machining operation. Sensitive features extracted from force, vibration and acoustic emission signals are used to form characteristic matrices. Based on the kernel principal component analysis method, subspace matrices can be developed by reducing redundant information. The principal angle between the matrices of the normal state and the running state in the subspace is calculated. The cosine value of the minimum principal angle is used to assess the tool operational reliability. The remaining useful life of a cutting tool can be evaluated when the operational reliability assessment result is one of the back propagation neural network model’s input parameters together with some machining parameters. A chaotic genetic algorithm is used to optimize the initial weights and thresholds of the model with improved ergodicity and recurrence properties. The chaotic variables are introduced to improve the global searching ability and convergence speed. A case study is presented to validate the performance of the proposed method. The remaining useful life of an individual cutting tool can be evaluated quantitatively without the need of large samples and probability or statistic techniques.
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页码:841 / 851
页数:10
相关论文
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  • [1] Taylor FW(1906)On the art of cutting metals Trans ASME 28 31-248
  • [2] Karandikar JM(2014)Tool life prediction using Bayesian updating. Part 1: milling tool life model using a discrete grid method Precis Eng 38 9-17
  • [3] Abbas AE(2012)Tool condition monitoring based on numerous signal features Int J Adv Manuf Technol 59 73-81
  • [4] Schmitz TL(2014)Tool wear model based on least squares support vector machines and Kalman filter Prod Eng Res Dev 8 101-109
  • [5] Jemielniak K(2014)Tool wear prediction considering uncovered data based on partial least square regression J Mech Sci Technol 28 317-322
  • [6] Urbański T(2014)Novel tool wear monitoring method in ultra-precision raster milling using cutting chips Precis Eng 38 555-560
  • [7] Kossakowska J(2015)Multi-scale hybrid HMM for tool wear condition monitoring Int J Adv Manuf Technol 25 2526-2537
  • [8] Bombiński S(2011)Reliability estimation for cutting tools based on logistic regression model using vibration signals Mech Syst Signal Process 12 12964-12987
  • [9] Zhang HY(2012)Operation reliability assessment for cutting tools by applying a proportional covariate model to condition monitoring information Sensors 71 1197-1208
  • [10] Zhang C(2014)Reliability assessment of cutting tool life based on surrogate approximation methods Int J Adv Manuf Technol 59 463-471