Abstract

Due to the improvement of the quality of industrial products, zero-failure data often occurs during the reliability life test or in the service environment, and such problems cannot be handled using traditional reliability estimation methods. Regarding the processing and analysis of zero-failure data, the confidence limit assessment methods were proposed by some researchers. Based on the existing research, a confidence limit method set (CLMS) is established in the Weibull distribution for reliability estimation of zero-failure data. The method set includes the unilateral confidence limit method and optimal confidence limit method, so that almost all existing grouping types of zero-failure data can be quickly evaluated, and multiple methods can be used in parallel to deal with the same problem. The effectiveness and high efficiency of the CLMS combined with numerical simulation examples have been verified, and the possibility of analyzing multiple groups of zero-failure data with a confidence limit method suitable for processing single group of zero-failure data is expanded. Finally, the actual effect of the method set is verified by the single group of zero-failure data of rolling bearings and the multiple groups of zero-failure data of torque motors. The results of the example evaluation show that the CLMS has obvious advantages in practical engineering applications.

Highlights

  • For high-reliability industrial products, it takes quite a long time to test their samples failure data

  • Chen proposed the reliability assessment confidence limit method under the condition of zero-failure data in the 1990s and proposed that the lower confidence limits of the reliability and reliable life are under the exponential distribution, Weibull distribution, and normal distribution [6]

  • Based on the existing research, a confidence limit method set (CLMS) is established in the Weibull distribution for reliability estimation of zero-failure data. e method set includes the unilateral confidence limit method and optimal confidence limit method, so that almost all existing grouping types of zerofailure data can be quickly evaluated, and multiple methods can be used in parallel to deal with the same problem

Read more

Summary

Introduction

For high-reliability industrial products, it takes quite a long time to test their samples failure data. Fu and Zhang [9] proposed a zero-failure data reliability analysis method with a known lower bound of shape parameters under the condition that the product life is subject to the Weibull distribution and gave a concrete expression of the one-side confidence lower limit of service life and reliability. Based on the existing research, a confidence limit method set (CLMS) is established in the Weibull distribution for reliability estimation of zero-failure data. The reliability estimation for zero-failure data based on confidence limit analysis method for industrial products is discussed. After nearly 80 years of research and application, the statistical analysis of a large number of engineering test data samples proves that Weibull distribution model plays an important role in the research of product life distribution type and reliability assessment [20].

The Grouping Type of Zero-Failure Data
Unilateral Confidence Limit Assessment Method
Optimal Confidence Limit Assessment Method
Establishing the Confidence Limit Method Set
Simulation Verification and Discussion
Case Study
Full Text
Paper version not known

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call

Disclaimer: All third-party content on this website/platform is and will remain the property of their respective owners and is provided on "as is" basis without any warranties, express or implied. Use of third-party content does not indicate any affiliation, sponsorship with or endorsement by them. Any references to third-party content is to identify the corresponding services and shall be considered fair use under The CopyrightLaw.