Title :
Confidence Intervals for Reliability and Quantile Functions With Application to NASA Space Flight Data
Author :
Heard, Astrid ; Pensky, Marianna
Author_Institution :
NASA
Abstract :
This paper considers the construction of confidence intervals for a cumulative distribution function F(z), and its inverse quantile function F-1(u), at some fixed points z, and u on the basis of an i.i.d. sample Xlowbar={Xi}i=1 n, where n is relatively small. The sample is modeled as having a flexible, generalized gamma distribution with all three parameters being unknown. Hence, the technique can be considered as an alternative to nonparametric confidence intervals, when X is a continuous random variable. The confidence intervals are constructed on the basis of Jeffreys noninformative prior. Performance of the resulting confidence intervals is studied via Monte Carlo simulations, and compared to the performance of nonparametric confidence intervals based on binomial proportion. It is demonstrated that the confidence intervals are robust; when data comes from Poisson or geometric distributions, confidence intervals based on a generalized gamma distribution outperform nonparametric confidence intervals. The theory is applied to the assessment of the reliability of the Pad Hypergol Servicing System of the Shuttle Orbiter
Keywords :
Monte Carlo methods; Poisson distribution; binomial distribution; nonparametric statistics; reliability; space vehicles; Monte Carlo simulations; NASA space flight; Pad Hypergol Servicing System; Poisson distribution; Shuttle Orbiter; binomial proportion; continuous random variable; cumulative distribution function; generalized gamma distribution; geometric distribution; inverse quantile function; nonparametric confidence intervals; reliability assessment; Distribution functions; Maximum likelihood estimation; NASA; Probability density function; Random variables; Reliability theory; Robustness; Safety; Space shuttles; Space vehicles; Confidence intervals; Jeffreys non-informative prior; generalized gamma distribution;
Journal_Title :
Reliability, IEEE Transactions on
DOI :
10.1109/TR.2006.884590