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首页> 外文期刊>International Journal of Advanced Robotic Systems >Robust fault diagnosis and fault-tolerant control for nonlinear quadrotor unmanned aerial vehicle system with unknown actuator faults
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Robust fault diagnosis and fault-tolerant control for nonlinear quadrotor unmanned aerial vehicle system with unknown actuator faults

机译:具有未知执行器故障的非线性四轮电机无人空中飞行器系统的强大故障诊断和容错控制

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This article addresses the problem that quadrotor unmanned aerial vehicle (UAV) actuator faults, including smallamplitude bias faults and gain degradation, cannot be detected in time. A hybrid observer, which combines the fast convergence from adaptive observer and the strong robustness from sliding mode observer, is proposed to detect and estimate UAV actuator faults accurately with model uncertainties and disturbances. A nonlinear quadrotor UAV model with model uncertainties and disturbances is considered and a more precise unified expression for actuator faults that do not require knowing where the upper or lower bound is provided. The original system is decomposed into two subsystems by coordinate transformation to improve detection accuracy for small amplitude bias faults and avoid external influences. The hybrid observer is then designed to estimate subsystem states and faults with good stability by selecting a Lyapunov function. A fault-tolerant controller is obtained depending on fault estimation by compensating the normal controller (proportion integral differential [PID] controller). Several numerical simulations confirmed that unknown actuator faults can be accurately detected, estimated, and compensated for even under disturbance conditions.
机译:本文解决了Quadrotor无人机(UAV)执行器故障,包括小型偏差故障和增益劣化,不能及时检测到问题。一种混合观察者,将快速收敛与自适应观察者的快速收敛性与滑动模式观察者相结合,以便准确地检测和估计UAV执行器故障,以模型的不确定性和干扰。考虑了具有模型不确定性和干扰的非线性四体电机UAV模型,并且对于在提供上部或下限的位置,不需要知道的执行器故障更精确的统一表达式。原始系统通过坐标转换分解成两个子系统,以提高小幅度偏置故障的检测精度并避免外部影响。然后,混合观测器设计用于通过选择Lyapunov函数来估计具有良好稳定性的子系统状态和故障。通过补偿普通控制器(比例积分差分[PID]控制器),根据故障估计获得容错控制器。几个数值模拟证实,即使在干扰条件下,也可以精确地检测到未知的执行器故障,估计和补偿。

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