DocumentCode :
1354946
Title :
Statistical Analysis of a Compound Power-Law Model for Repairable Systems
Author :
Engelhardt, Max ; Bain, Lee J.
Author_Institution :
Department of Mathematics and Statistics; University of Missouri; Rolla, Missouri 65401 USA.
Issue :
4
fYear :
1987
Firstpage :
392
Lastpage :
396
Abstract :
A compound (mixed) Poisson distribution is sometimes used as an alternative to the Poisson distribution for count data. Such a compound distribution, which has a negative binomial form, occurs when the population consists of Poisson distributed individuals, but with intensities which have a gamma distribution. A similar situation can occur with a repairable system when failure intensities of each system are different. A more general situation is considered where the system failures are distributed according to nonhomogeneous Poisson processes having Power Law intensity functions with gamma distributed intensity parameter. If the failures of each system in a population of repairable systems are distributed according to a Power Law process, but with different intensities, then a compound Power Law process provides a suitable model. A test, based on the ratio of the sample variance to the sample mean of count data from s-independent systems, provides a convenient way to determine if a compound model is appropriate. When a compound Power Law model is indicated, the maximum likelihood estimates of the shape parameters of the individual systems can be computed and homogeneity can be tested. If equality of the shape parameters is indicated, then it is possible to test whether the systems are homogeneous Poisson processes versus a nonhomogeneous alternative. If deterioration within systems is suspected, then the alternative in which the shape parameter exceeds unity would be appropriate, while if systems are undergoing reliability growth the alternative would be that the shape parameter is less than unity.
Keywords :
Accidents; Hazards; Maximum likelihood estimation; Power system modeling; Power system reliability; Production facilities; Shape; Statistical analysis; System testing; Virtual manufacturing; Compound model; Maximum likelihood estimation; Mixed model; Power-law process;
fLanguage :
English
Journal_Title :
Reliability, IEEE Transactions on
Publisher :
ieee
ISSN :
0018-9529
Type :
jour
DOI :
10.1109/TR.1987.5222421
Filename :
5222421
Link To Document :
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