Author/Authors :
Athanassios Kassidas، نويسنده , , Paul A. Taylor and John F. MacGregor، نويسنده ,
Title Of Article :
Off-line diagnosis of deterministic faults in continuous dynamic multivariable processes using speech recognition methods
Latin Abstract :
Faults or special events which occur occasionally in continuous processes generate dynamic patterns in a
large number of process variables. However, the patterns arising from the same fault can exhibit different
time durations (depending on the operating conditions), magnitudes and directions. Any robust fault
diagnosis method must be able to correctly classify these faults under these different conditions. This paper
presents an off-line fault diagnosis method based on pattern recognition principles for multivariate
dynamic data. The method consist of a filtering and scaling step, where the magnitude dependent information
is removed, and a similarity assessment step via dynamic time warping (DTW). DTW is a flexible
pattern matching method used in the area of speech recognition. The method presented in this paper is
designed to classify faults independently of their magnitude, duration, direction and plant production
level. As a further feature extraction step, principal component analysis is used to reduce the dimension of
the multivariate problem and enhance the distance-based classification. Case studies from the Tennessee
Eastman plant are used to test the method and to illustrate its advantages and limitations,
NaturalLanguageKeyword :
Principal component analysis , Fault diagnosis , Dynamic time warping , Tennessee-Eastman simulation
JournalTitle :
Studia Iranica