Publication | Open Access
Neural Network-Based Adaptive Control for Spacecraft Under Actuator Failures and Input Saturations
66
Citations
35
References
2019
Year
EngineeringRobust ControlSpacecraft Attitude ControlStabilityFault-tolerance CapabilitySystems EngineeringFault-tolerant ControlTracking ControlNonlinear ControlActuator FailuresRigid BodiesModel UncertaintiesMechatronicsIntelligent ControlAerospace EngineeringInput SaturationsMechanical SystemsBusinessAdaptive Control
In this article, we develop attitude tracking control methods for spacecraft as rigid bodies against model uncertainties, external disturbances, subsystem faults/failures, and limited resources. A new intelligent control algorithm is proposed using approximations based on radial basis function neural networks (RBFNNs) and adopting the tunable parameter-based variable structure (TPVS) control techniques. By choosing different adaptation parameters elaborately, a series of control strategies are constructed to handle the challenging effects due to actuator faults/failures and input saturations. With the help of the Lyapunov theory, we show that our proposed methods guarantee both finite-time convergence and fault-tolerance capability of the closed-loop systems. Finally, benefits of the proposed control methods are illustrated through five numerical examples.
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