Statistical Models to Analyze Failure, Wear, Fatigue, and Degradation Data with Explanatory Variables

被引:10
|
作者
Bagdonavicius, Vilijandas [2 ]
Nikulin, Mikhail [1 ]
机构
[1] Univ Victor Segalen Bordeaux 2, UFR Sci & Modelisat, Bordeaux, France
[2] Vilnius Univ, Dept Stat, Vilnius, Lithuania
关键词
Covariates; Degradation; Failure time regression; Reliability; Wear; ACCELERATED DEGRADATION; REGRESSION-MODELS; INFERENCE; RELIABILITY;
D O I
10.1080/03610920902947519
中图分类号
O21 [概率论与数理统计]; C8 [统计学];
学科分类号
020208 ; 070103 ; 0714 ;
摘要
Failures of highly reliable units are rare. One way of obtaining a complementary reliability information is to do accelerated life testing (ALT), i.e., to use a higher level of experimental factors, hence to obtain failures quickly. Another way of obtaining complementary reliability information is to measure some parameters which characterize the aging or wear of the product in time. Statistical inference from ALT is possible if failure time regression models relating failure time distribution with external explanatory variables (covariates, stresses) influencing the reliability are well chosen. Statistical inference from failure time-degradation data with covariates needs even more complicated models relating failure time distribution not only with external but also with internal explanatory variables (degradation, wear) which explain the state of units before the failures. In the last case, models for degradation process distribution are needed, too. In this article, we discuss the most used failure time regression models used for analysis of failure time and failure time-degradation data with covariates.
引用
收藏
页码:3031 / 3047
页数:17
相关论文
共 42 条
  • [31] Different statistical models to analyze epidemiological observational longitudinal data: An example from the Amsterdam Growth and Health Study
    Twisk, JWR
    INTERNATIONAL JOURNAL OF SPORTS MEDICINE, 1997, 18 : S216 - S224
  • [32] Inference from accelerated degradation and failure data based on Gaussian process models
    Padgett, WJ
    Tomlinson, MA
    LIFETIME DATA ANALYSIS, 2004, 10 (02) : 191 - 206
  • [33] Inference from Accelerated Degradation and Failure Data Based on Gaussian Process Models
    W. J. Padgett
    Meredith A. Tomlinson
    Lifetime Data Analysis, 2004, 10 : 191 - 206
  • [34] Statistical inference for partially linear errors-in-variables panel data models with fixed effects
    He, Bangqiang
    Yu, Minxiu
    Zhou, Jinming
    SYSTEMS SCIENCE & CONTROL ENGINEERING, 2021, 9 (01) : 1 - 10
  • [35] Statistical analysis of bivariate failure time data with Marshall-Olkin Weibull models
    Li, Yang
    Sun, Jianguo
    Song, Shuguang
    COMPUTATIONAL STATISTICS & DATA ANALYSIS, 2012, 56 (06) : 2041 - 2050
  • [36] Insights into the Effects of Violating Statistical Assumptions for Dimensionality Reduction for Chemical "-omics" Data with Multiple Explanatory Variables (Vol 8, pg 22042, 2023)
    Brown, Amber O.
    Green, Peter J.
    Frankham, Greta J.
    Stuart, Barbara H.
    Ueland, Maiken
    ACS OMEGA, 2024, 9 (13): : 15724 - 15724
  • [37] Enamel wear evolution: Evaluation using statistical mixed models for 2D profilometry data
    Meireles, Agnes Batista
    Alvernaz Marques Ferreira, Janaina Luciana
    Bastos, Flivia de Souza
    Bonato, Leticia
    de Las Casas, Estevam Barbosa
    PROCEEDINGS OF THE INSTITUTION OF MECHANICAL ENGINEERS PART L-JOURNAL OF MATERIALS-DESIGN AND APPLICATIONS, 2019, 233 (08) : 1500 - 1509
  • [38] Bayesian Local Influence of Generalized Failure Time Models with Latent Variables and Multivariate Censored Data
    Ouyang, Ming
    Song, Xinyuan
    JOURNAL OF CLASSIFICATION, 2020, 37 (02) : 298 - 316
  • [39] Statistical inference for varying-coefficient partially linear errors-in-variables models with missing data
    Xu, Hong-Xia
    Fan, Guo-Liang
    Wu, Cheng-Xin
    Chen, Zhen-Long
    COMMUNICATIONS IN STATISTICS-THEORY AND METHODS, 2019, 48 (22) : 5621 - 5636
  • [40] Bayesian Local Influence of Generalized Failure Time Models with Latent Variables and Multivariate Censored Data
    Ming Ouyang
    Xinyuan Song
    Journal of Classification, 2020, 37 : 298 - 316