Journal of Process Control, Vol.18, No.5, 479-490, 2008
Fault detection and identification with a new feature selection based on mutual information
This paper presents a fault diagnosis procedure based on discriminant analysis and mutual information. In order to obtain good classification performances, a selection of important features is done with a new developed algorithm based on the mutual information between variables. The application of the new fault diagnosis procedure on a benchmark problem, the Tennessee Eastman Process, shows better results than other well known published methods. (c) 2007 Elsevier Ltd. All rights reserved.