Litcius/Paper detail

Fuzzy Fault Detection for Markov Jump Systems With Partly Accessible Hidden Information: An Event-Triggered Approach

Cheng Peng, Shuping He, Vladimir Stojanović, Xiaoli Luan, Fei Liu

2021IEEE Transactions on Cybernetics180 citationsDOI

Abstract

This article addresses the design issue of fuzzy asynchronous fault detection filter (FAFDF) for a class of nonlinear Markov jump systems by an event-triggered (ET) scheme. The ET scheme can be applied to cut down the transmission times from the system to FAFDF. It is assumed that the system modes cannot be obtained synchronously by the filter, and instead, there is a detector that can measure the estimated modes of the system. The asynchronous phenomenon between the system and the filter is characterized via a hidden Markov model with partly accessible mode detection probabilities. Applying the Lyapunov function methods, sufficient conditions for the presence of FAFDF are obtained. Finally, an application of a wheeled mobile manipulator with hybrid joints is employed to clarify that the devised FAFDF can detect the faults without any incorrect alarm.

Topics & Concepts

Control theory (sociology)Asynchronous communicationComputer scienceFault detection and isolationFilter (signal processing)Hidden Markov modelFuzzy logicEvent (particle physics)False alarmLyapunov functionFault (geology)Nonlinear systemTransmission (telecommunications)Markov chainAlgorithmArtificial intelligenceMachine learningControl (management)Computer visionPhysicsQuantum mechanicsSeismologyGeologyComputer networkTelecommunicationsActuatorFault Detection and Control SystemsStability and Control of Uncertain SystemsFuzzy Logic and Control Systems
Fuzzy Fault Detection for Markov Jump Systems With Partly Accessible Hidden Information: An Event-Triggered Approach | Litcius