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Reliability Modelling of CNC Machine Tools Based on the Improved Maximum Likelihood Estimation Method

Author

Listed:
  • Zhaojun Yang
  • Dong Zhu
  • Chuanhai Chen
  • Hailong Tian
  • Jinyan Guo
  • Shizheng Li

Abstract

The existing standard reliability models for computerized numerical control (CNC) machine tools are not satisfactory and they fall short of predicting failure rates or lifetime of key functional parts of CNC machine tools. This is attributed to two reasons: the small sample size of failure data and a large truncated ratio of the censored failure data. Improved correction method (ICM), maximum likelihood estimation (MLE), and empirical maximum likelihood estimation (EMLE) are presented and compared with each other in this study. In order to improve the shortage of reliability models developed by the traditional methods, an improved maximum likelihood estimation method (IMLE) is proposed through enlarging censored failure data. Moreover, the correction factors of mean ratio to extend censored time are designed, by which the censored failure data can be close to the true time between failures (TBF). Furthermore, a solution method of correction factors considering amount of calculation is proposed to meet the requirements of calculation precision. Finally, verification by the orthogonal experiment is simulated to verify the proposed model. The verifying test results show that the proposed method can be applied in reliability modelling for not only CNC machine tools but also the key functional parts of CNC machine tools.

Suggested Citation

  • Zhaojun Yang & Dong Zhu & Chuanhai Chen & Hailong Tian & Jinyan Guo & Shizheng Li, 2018. "Reliability Modelling of CNC Machine Tools Based on the Improved Maximum Likelihood Estimation Method," Mathematical Problems in Engineering, Hindawi, vol. 2018, pages 1-11, May.
  • Handle: RePEc:hin:jnlmpe:4260508
    DOI: 10.1155/2018/4260508
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