Estimation of System Reliability Using a Semiparametric Model
Wu
Leon Li
author
Columbia University. Computer Science
Columbia University. Center for Computational Learning Systems
Teravainen
Timothy Kaleva
author
Columbia University. Statistics
Kaiser
Gail E.
author
Columbia University. Computer Science
Anderson
Roger N.
author
Columbia University. Center for Computational Learning Systems
Boulanger
Albert G.
author
Columbia University. Center for Computational Learning Systems
Rudin
Cynthia
author
Columbia University. Computer Science
originator
contributor
text
Technical reports
New York
Department of Computer Science, Columbia University
2011
An important problem in reliability engineering is to predict the failure rate, that is, the frequency with which an engineered system or component fails. This paper presents a new method of estimating failure rate using a semiparametric model with Gaussian process smoothing. The method is able to provide accurate estimation based on historical data and it does not make strong a priori assumptions of failure rate pattern (e.g., constant or monotonic). Our experiments of applying this method in power system failure data compared with other models show its efficacy and accuracy. This method can be used in estimating reliability for many other systems, such as software systems or components.
Computer science
Columbia University Computer Science Technical Reports
CUCS-015-11
http://hdl.handle.net/10022/AC:P:10670
English
NNC
NNC
2011-07-08 12:08:15 -0400
2011-07-08 12:22:19 -0400
4621
eng