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Model-based Robust Fault Diagnosis for Satellite Control Systems Using Learning and Sliding Mode Approaches

机译:基于模型的使用学习和滑动模式方法对卫星控制系统的鲁棒故障诊断

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—In this paper, our recent work on robust modelbased fault diagnosis (FD) for several satellite control systems using learning and sliding mode approaches are summarized. Firstly, a variety of nonlinear mathematical models for these satellite control systems are described and analyzed for the purpose of fault diagnosis. These satellite control systems are classified into two classes of nonlinear dynamical systems. Then, several fault diagnostic observers using sliding mode and learning approaches are presented. Sliding mode with time-varying switching gains, second order sliding mode, and high order sliding mode differentiators are respectively used in the proposed diagnostic observers to deal with modeling uncertainties. Neural model-based and iterative learning algorithms-based online learning estimators are respectively used in the diagnostic observers for the purpose of isolating and estimating faults. Finally, conclusions and future work on the health monitoring and fault diagnosis for satellite control systems are provided.
机译:- 在本文中,我们始终总结了我们最近关于使用学习和滑动模式方法的几种卫星控制系统的强大型号的故障诊断(FD)的工作。首先,描述和分析用于故障诊断的目的的各种用于这些卫星控制系统的非线性数学模型。这些卫星控制系统分为两类非线性动力系统。然后,提出了使用滑模和学习方法的几个故障诊断观察者。具有时变开关增益的滑动模式,二阶滑动模式和高阶滑动模式差分分别用于建议的诊断观察员,以处理建模不确定性。基于神经模型和迭代学习算法的在线学习估计分别用于诊断观察者,以便隔离和估计故障。最后,提供了对卫星控制系统的健康监测和故障诊断的结论和未来的工作。

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