학술논문


Improved kernel principal component analysis for fault detection
Document Type
Article
Source
In Expert Systems With Applications 2008 34(2):1210-1219
Subject
Language
ISSN
0957-4174
Abstract
This paper improves kernel principal component analysis (KPCA) for fault detection from two aspects. Firstly, a feature vector selection (FVS) scheme based on a geometrical consideration is given to reduce the computational complexity of KPCA when the number of samples becomes large. Secondly, a KPCA plus Fisher discriminant analysis (FDA) scheme is adopted to improve the fault detection performance of KPCA. Simulation results are given to show the effectiveness of these improvements for fault detection performance in terms of low computational cost and high fault detection rate.