
doi: 10.1002/rnc.6682
AbstractIn this paper, a fault isolation, diagnosis and fault tolerant control algorithm is proposed for nonlinear multiple multiplicative faults stochastic distribution control systems employing Takagi–Sugeno fuzzy system. To obtain the detailed fault information, a fault detection algorithm is introduced to discover the fault occurrence time. Then a fault isolation observer is built to produce the residual, and the error system is separated to subsystems affected only by disturbance and multiplicative faults. Moreover, a fault estimation scheme is presented to obtain the fault magnitude information. When faults occur, the system output probability density function will deviate from the desired distribution. So the model predictive control fault tolerant control scheme is needed to minimize the impact of faults as much as possible to make sure that the post fault output probability density function track the desired probability density function. The validity of the designed algorithm is demonstrated through a simulation example, where the fault tolerant control algorithm ensures that the system output probability density function still track the given output probability density function despite the complex case of multiple multiplicative faults occurring simultaneously.
Fuzzy control/observation systems, model predictive control, nonlinear stochastic distribution control systems, Sensitivity (robustness), Nonlinear systems in control theory, Stochastic systems in control theory (general), fault isolation, fault-tolerant control, multiplicative faults, fault estimation
Fuzzy control/observation systems, model predictive control, nonlinear stochastic distribution control systems, Sensitivity (robustness), Nonlinear systems in control theory, Stochastic systems in control theory (general), fault isolation, fault-tolerant control, multiplicative faults, fault estimation
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