Recursive filters for a partially observable system subject to random failure



Advances in Applied Probability

Recursive filters for a partially observable system subject to random failure

Daming Lin and Viliam Makis

Source: Adv. in Appl. Probab. Volume 35, Number 1 (2003), 207-227.

Abstract

We consider a failure-prone system which operates in continuous time and is subject to condition monitoring at discrete time epochs. It is assumed that the state of the system evolves as a continuous-time Markov process with a finite state space. The observation process is stochastically related to the state process which is unobservable, except for the failure state. Combining the failure information and the information obtained from condition monitoring, and using the change of measure approach, we derive a general recursive filter, and, as special cases, we obtain recursive formulae for the state estimation and other quantities of interest. Up-dated parameter estimates are obtained using the EM algorithm. Some practical prediction problems are discussed and an illustrative example is given using a real dataset.

Primary Subjects: 60K10
Secondary Subjects: 60G35, 90B25
Keywords: Partly observable system; continuous-discrete model; change of measure; recursive filter; parameter estimation; condition-based maintenance

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Links and Identifiers

Permanent link to this document: http://projecteuclid.org/euclid.aap/1046366106
Digital Object Identifier: doi:10.1239/aap/1046366106
Mathematical Reviews number (MathSciNet): MR1975511
Zentralblatt MATH identifier: 1036.60079


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