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Time-varying fault diagnosis for asynchronous multisensor systems based on augmented IMM and strong tracking filtering. (English) Zbl 1403.93182

Summary: A fault detection, isolation, and estimation approach is proposed in this paper based on Interactive MultiModel (IMM) fusion filtering and Strong Tracking Filtering (STF) for asynchronous multisensors dynamic systems. Time-varying fault is considered and a candidate fault model is built by augmenting the unknown fault amplitude directly into the system state for each kind of possible fault mode. By doing this, the dilemma of predetermining the fault extent as model design parameters in traditional IMM-based approaches is avoided. After that, the time-varying fault amplitude is estimated based on STF using its strong ability to track abrupt changes and robustness against model uncertainties. Through fusing information from multiple sensors, the performance of fault detection, isolation, and estimation is approved. Finally, a numerical simulation is performed to demonstrate the feasibility and effectiveness of the proposed method.

MSC:

93E11 Filtering in stochastic control theory
93E10 Estimation and detection in stochastic control theory
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