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Theoretical Paper

A prognosis model for wear prediction based on oil-based monitoring

Pages 887-893 | Received 01 Aug 2005, Accepted 01 Jan 2006, Published online: 21 Dec 2017
 

Abstract

This paper reports on the development of a wear prediction model based on stochastic filtering and hidden Markov theory. It is assumed that observations at discrete time points are available such as metal concentrations from oil-based monitoring, which are related to the true underlying state of the system which is unobservable. The system state is represented by a generic term of wear which is modelled by a continuous hidden Markov Chain using a Beta distribution. We formulated a recursive model to predict the current and future system state given past observed monitoring information to date. The model is useful to wear-based monitoring such as oil analysis. Numerical examples are presented in the paper based on simulated and real data.

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