6533b833fe1ef96bd129c1b9

RESEARCH PRODUCT

Data-Driven Adaptive Observer for Fault Diagnosis

Hamid Reza KarimiXuebo YangShen Yin

subject

VDP::Mathematics and natural science: 400::Mathematics: 410::Applied mathematics: 413EngineeringMathematical problemArticle Subjectbusiness.industryGeneral Mathematicslcsh:MathematicsVDP::Technology: 500General EngineeringControl engineeringFault (power engineering)lcsh:QA1-939Adaptive observerData-drivenStuck-at faultlcsh:TA1-2040Fault modelbusinesslcsh:Engineering (General). Civil engineering (General)

description

Published version of an article from the journal: Mathematical Problems in Engineering. Also available from the publisher:http://dx.doi.org/10.1155/2012/832836 This paper presents an approach for data-driven design of fault diagnosis system. The proposed fault diagnosis scheme consists of an adaptive residual generator and a bank of isolation observers, whose parameters are directly identified from the process data without identification of complete process model. To deal with normal variations in the process, the parameters of residual generator are online updated by standard adaptive technique to achieve reliable fault detection performance. After a fault is successfully detected, the isolation scheme will be activated, in which each isolation observer serves as an indicator corresponding to occurrence of a particular type of fault in the process. The thresholds can be determined analytically or through estimating the probability density function of related variables. To illustrate the performance of proposed fault diagnosis approach, a laboratory-scale three-tank system is finally utilized. It shows that the proposed data-driven scheme is efficient to deal with applications, whose analytical process models are unavailable. Especially, for the large-scale plants, whose physical models are generally difficult to be established, the proposed approach may offer an effective alternative solution for process monitoring.

10.1155/2012/832836https://doaj.org/article/94f9150560fe4a4aa7ee797db300e0d0