Publication | Closed Access
State and fault estimation for nonlinear recurrent neural network systems: Experimental testing on a three‐tank system
20
Citations
24
References
2020
Year
Reliability EngineeringEngineeringMachine LearningFault EstimationState ObserverDiscrete RnnProcess ControlThree‐tank SystemSystems EngineeringObserver DesignFault-tolerant ControlComputer ScienceH ∞ ObserverFault DetectionRecurrent Neural NetworkControl Systems
Abstract An observer is presented for the simultaneous estimation of the system state and actuator and sensor faults of a discrete recurrent neural network (RNN) system. The presented approach enables disturbance attenuation and guarantees observer convergence. First, the discrete RNN is converted to a discrete linear parameter varying (LPV) model. Then, the LPV model is further transformed into a descriptor system by extending the system state and sensor fault. Next, an H ∞ observer is presented for the simultaneous estimation of the extended state and actuator fault of the descriptor system. Finally, the problem of observer design is translated into solving a linear matrix inequality. Experimental tests on a three‐tank system have validated the effectiveness and correctness of the presented method.
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