Title :
Nonlinear PCA With the Local Approach for Diesel Engine Fault Detection and Diagnosis
Author :
Wang, Xun ; Kruger, Uwe ; Irwin, George W. ; McCullough, Geoff ; McDowell, Neil
Author_Institution :
Queen´´s Univ. Belfast, Belfast
Abstract :
This brief examines the application of nonlinear statistical process control to the detection and diagnosis of faults in automotive engines. In this statistical framework, the computed score variables may have a complicated nonparametric distribution function, which hampers statistical inference, notably for fault detection and diagnosis. This brief shows that introducing the statistical local approach into nonlinear statistical process control produces statistics that follow a normal distribution, thereby enabling a simple statistical inference for fault detection. Further, for fault diagnosis, this brief introduces a compensation scheme that approximates the fault condition signature. Experimental results from a Volkswagen 1.9-L turbo-charged diesel engine are included.
Keywords :
automotive components; diesel engines; fault diagnosis; nonlinear control systems; normal distribution; principal component analysis; statistical process control; Volkswagen 1.9-L turbo-charged diesel engine; automotive engines; diesel engine fault diagnosis; engine fault detection; nonlinear PCA; nonlinear statistical process control; normal distribution; statistical inference; Automotive engineering; Diesel engines; Distributed computing; Distribution functions; Fault detection; Fault diagnosis; Gaussian distribution; Principal component analysis; Process control; Statistical distributions; Automotive engines; fault detection and diagnosis (FDD); nonlinear statistical process control; normal distribution; statistical inference; statistical local approach;
Journal_Title :
Control Systems Technology, IEEE Transactions on
DOI :
10.1109/TCST.2007.899744