Litcius/Paper detail

State and fault estimation for nonlinear recurrent neural network systems: Experimental testing on a three‐tank system

Xiaoxiao Zhang, Xuexin Feng, Zonglei Mu, Youqing Wang

2020The Canadian Journal of Chemical Engineering21 citationsDOI

Abstract

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.

Topics & Concepts

Control theory (sociology)CorrectnessObserver (physics)Nonlinear systemActuatorArtificial neural networkConvergence (economics)State (computer science)Fault (geology)Recurrent neural networkFault detection and isolationLinear matrix inequalityComputer scienceEngineeringControl engineeringMathematicsAlgorithmArtificial intelligenceControl (management)Mathematical optimizationEconomicsGeologyEconomic growthPhysicsQuantum mechanicsSeismologyFault Detection and Control SystemsTarget Tracking and Data Fusion in Sensor NetworksAdaptive Control of Nonlinear Systems