DocumentCode
749963
Title
Nonparametric bootstrapping of the reliability function for multiple copies of a repairable item modeled by a birth process
Author
Quigley, John ; Walls, Lesley
Author_Institution
Dept. of Manage. Sci., Univ. of Strathclyde, Glasgow, UK
Volume
54
Issue
4
fYear
2005
Firstpage
604
Lastpage
611
Abstract
Nonparametric bootstrap inference is developed for the reliability function estimated from censored, nonstationary failure time data for multiple copies of repairable items. We assume that each copy has a known, but not necessarily the same, observation period; and upon failure of one copy, design modifications are implemented for all copies operating at that time to prevent further failures arising from the same fault. This implies that, at any point in time, all operating copies will contain the same set of faults. Failures are modeled as a birth process because there is a reduction in the rate of occurrence at each failure. The data structure comprises a mix of deterministic & random censoring mechanisms corresponding to the known observation period of the copy, and the random censoring time of each fault. Hence, bootstrap confidence intervals & regions for the reliability function measure the length of time a fault can remain within the item until realization as failure in one of the copies. Explicit formulae derived for the re-sampling probabilities greatly reduce dependency on Monte-Carlo simulation. Investigations show a small bias arising in re-sampling that can be quantified & corrected. The variability generated by the re-sampling approach approximates the variability in the underlying birth process, and so supports appropriate inference. An illustrative example describes application to a problem, and discusses the validity of modeling assumptions within industrial practice.
Keywords
Monte Carlo methods; bootstrapping; failure analysis; maintenance engineering; reliability theory; Kaplan-Meier; Monte-Carlo simulation; birth process; censored data; confidence interval; data structure; failure analysis; nonparametric bootstrapping; nonstationary failure time data; random censoring mechanism; reliability function; repairable items; resampling probability; Calendars; Data structures; Fault detection; Fault diagnosis; Helium; Length measurement; Object detection; Probability density function; Spatial databases; Time measurement; Bootstrap; Kaplan-Meier; censored data; confidence intervals; reliability function;
fLanguage
English
Journal_Title
Reliability, IEEE Transactions on
Publisher
ieee
ISSN
0018-9529
Type
jour
DOI
10.1109/TR.2005.858097
Filename
1546567
Link To Document