Set‐based fault detection and isolation for detectable linear parameter‐varying systems

Abstract

In the context of fault detection and isolation of linear parameter‐varying systems, a challenging task appears when the dynamics and the available measurements render the model unobservable, which invalidates the use of standard set‐valued observers. Two results are obtained in this paper, namely, using a left‐coprime factorization, one can achieve set‐valued estimates with ultimately bounded hyper‐volume and convergence dependent on the slowest unobservable mode; and by rewriting the set‐valued observer equations and taking advantage of a coprime factorization, it is possible to have a low‐complexity fault detection and isolation method. Performance is assessed through simulation, illustrating, in particular, the detection time for various types of faults. 

ICB Affiliated Authors

Authors
Daniel Silvestre, Paulo Rosa, João P. Hespanha and Carlos Silvestre
Date
Type
Peer-Reviewed Article
Journal
International Journal of Robust and Nonlinear Control
Volume
27
Pages
4381-4397