Title :
Input — Output Classification Mapping for the fault detection, identification and accommodation
Author :
Barakat, M. ; Lefebvre, Dimitri ; Khalil, Mohamad ; Mustapha, Barakat ; Druaux, Fabrice
Author_Institution :
GREAH, Le Havre Univ., Le Havre, France
Abstract :
Early detection and isolation of faults can help avoid major system breakdowns. This paper presents a non parametric fault diagnosis method to detect and isolate faults in industrial environment. The proposed Input Output Classification Mapping (IOCM) algorithm is based on mapping the input parameters from Gaussian hidden layer functions of an RBF neural network to an output layer. In result the input data of each situation is clustered in a specific surface so every machine state, whether it is normal or faulty it will be represented with its own output layer. Parameters are extracted from input signals or input sub-signals after applying wavelet decomposition and then classified using IOCM. The two techniques before and after decomposition are applied on mechanical system and Tennessee Eastman Challenge Process (TECP) chemical reactor to detect and identify the faults.
Keywords :
chemical reactors; condition monitoring; pattern classification; production engineering computing; radial basis function networks; wavelet transforms; Gaussian hidden layer functions; RBF neural network; TECP chemical reactor; Tennessee Eastman challenge process; fault accommodation; fault detection; fault identification; industrial environment; input-output classification mapping; nonparametric fault diagnosis method; radial basis function network; Fault detection; diagnosis; input output classification mapping; wavelet decomposition;
Conference_Titel :
Systems Man and Cybernetics (SMC), 2010 IEEE International Conference on
Conference_Location :
Istanbul
Print_ISBN :
978-1-4244-6586-6
DOI :
10.1109/ICSMC.2010.5641763