A Bayesian least-squares support vector machine method for predicting the remaining useful life of a microwave component

Rapid and accurate lifetime prediction of critical components in a system is important to maintaining the system’s reliable operation. To this end, many lifetime prediction methods have been developed to handle various failure-related data collected in different situations. Among these methods, mach...

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Bibliographic Details
Main Authors: Fuqiang Sun, Xiaoyang Li, Haitao Liao, Xiankun Zhang
Format: Article
Language:English
Published: SAGE Publishing 2017-01-01
Series:Advances in Mechanical Engineering
Online Access:https://doi.org/10.1177/1687814016685963
Description
Summary:Rapid and accurate lifetime prediction of critical components in a system is important to maintaining the system’s reliable operation. To this end, many lifetime prediction methods have been developed to handle various failure-related data collected in different situations. Among these methods, machine learning and Bayesian updating are the most popular ones. In this article, a Bayesian least-squares support vector machine method that combines least-squares support vector machine with Bayesian inference is developed for predicting the remaining useful life of a microwave component. A degradation model describing the change in the component’s power gain over time is developed, and the point and interval remaining useful life estimates are obtained considering a predefined failure threshold. In our case study, the radial basis function neural network approach is also implemented for comparison purposes. The results indicate that the Bayesian least-squares support vector machine method is more precise and stable in predicting the remaining useful life of this type of components.
ISSN:1687-8140