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Nonlinear Estimation of Sensor Faults With Unknown Dynamics for a Fixed Wing Unmanned Aerial Vehicle

机译:固定机翼无人驾驶飞行器未知动力学传感器故障的非线性估计

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In this paper, the estimation of additive inertial navigation sensor faults with unknown dynamics is considered with application to the longitudinal navigation and control of a fixed wing unmanned aerial vehicle. The faulty measurement is on the pitch angle. A jump Markov regularized particle filter is proposed for fault and state estimation of the nonlinear aircraft dynamics, with a Markovian jump strategy to manage the probabilistic transitions between the fault free and faulty modes. The jump strategy uses a small number of sentinel particles to continue testing the alternate hypothesis under both fault free and faulty modes. The proposed filter is shown to outperform the regularized particle filter for this application in terms of fault estimation accuracy and convergence time for scenarios involving both abrupt and incipient faults, without prior knowledge of the fault models. The state estimation is also more accurate and robust to faults using the proposed approach. The root-mean-square error for the altitude is reduced by 77% using the jump Markov regularized particle filter under a pitch sensor fault amplitude of up to 10 degrees. Performance enhancement compared to the regularized particle filter was found to be more pronounced when fault amplitudes increase.
机译:本文认为,应用于固定翼无人驾驶飞行器的纵向导航和控制,考虑了具有未知动力学的附加惯性导航传感器故障的估计。故障测量在俯仰角上。提出了跳跃马尔可夫正规化粒子滤波器,用于非线性飞机动力学的故障和状态估计,Markovian跳跃策略来管理故障和错误模式之间的概率转换。跳线策略使用少量的Sentinel粒子继续在无故障和故障模式下测试交替假设。该提出的滤波器显示在故障估计精度和涉及突然突发性故障的情况下的故障估计精度和收敛时间方面优于此应用的正则化粒子滤波器,而无需先验知识故障模型。使用所提出的方法,状态估计也更准确和鲁棒到故障。在俯仰传感器故障幅度下的跳跃马尔可夫正则粒子过滤器高达10度,高度的根均方误差减少了77%。当故障幅度增加时,发现与正则化粒子滤波器相比的性能增强更加明显。

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