DocumentCode :
697323
Title :
Fault detection and identification based on dissimilarity of process data
Author :
Kano, Manabu ; Hasebe, Shinji ; Hashimoto, Iori ; Ohno, Hiromu
Author_Institution :
Dept. of Chem. Eng., Kyoto Univ., Kyoto, Japan
fYear :
2001
fDate :
4-7 Sept. 2001
Firstpage :
1888
Lastpage :
1893
Abstract :
Multivariate statistical process control (MSPC) has been widely used for process monitoring. When a fault is detected, it is important to identify an actual cause of the fault. Fault identification methods are classified into two groups by availability of historical data sets obtained from faulty situations. When such historical data sets are not available, contributions from process variables to a monitored index can be used for identifying the variables that contribute significantly to an out-of-control value of the index. On the other hand, when historical data sets are available, a fault can be identified by comparing a data set representing the current faulty situation and historical data sets representing past faulty situations. In recent years, a new MSPC method termed "DISSIM," which is based on the dissimilarity of process data, has been developed. In the present work, DISSIM is extended for fault identification with or without historical data sets. The fault detection and identification performance of DISSIM is compared with that of the conventional MSPC using principal component analysis by applying those methods to monitoring problems of a continuous-stirred-tank-reactor (CSTR) process. The simulated results show that DISSIM as well as cMSPC functions well for fault detection and that DISSIM works better than cMSPC for fault identification.
Keywords :
chemical reactors; fault diagnosis; identification; principal component analysis; process monitoring; statistical process control; CSTR process; DISSIM; MSPC; continuous-stirred-tank-reactor process; fault detection; fault identification; index out-of-control value; multivariate statistical process control; principal component analysis; process data dissimilarity; process monitoring; Covariance matrices; Fault detection; Indexes; Monitoring; Principal component analysis; Process control; Reliability; contribution plot; diagnosis; fault detection; fault identification; pattern recognition; statistical process control;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Control Conference (ECC), 2001 European
Conference_Location :
Porto
Print_ISBN :
978-3-9524173-6-2
Type :
conf
Filename :
7076197
Link To Document :
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