Fault Detection Identification and Isolation via high-gain observer in a Semi Continuous Stirred Tank Reactor

نویسندگان

  • Amira ABDELKADER
  • Moez BOUSSADA
  • Koffi FIATY
  • Hassan HAMMOURI
  • Ahmed Said NOURI
چکیده

This paper deals with Fault Detection Identification and Isolation (FDII) in actuators and system (component) applied to a Semi Continuous Stirred Tank Reactor(SCSTR). The proposed FDII is based on high gain observers, for detecting faults of actuators and system component. This algorithm has the advantage of detecting multiple faults simultaneously. The observer is constructed from a sub-model, the number of observers is related by number of actuator or/and system component how we want estimate. The signals used in our study derived from a real system.

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تاریخ انتشار 2016