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Robust adaptive unscented Kalman filter for attitude estimation of pico satellites

机译:用于微微卫星姿态估计的鲁棒自适应无味卡尔曼滤波器

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摘要

Unscented Kalman filter (UKF) is a filtering algorithm that gives sufficiently good estimation results for the estimation problems of nonlinear systems even when high nonlinearity is in question. However, in case of system uncertainty or measurement malfunctions, the UKF becomes inaccurate and diverges by time. This study introduces a fault-tolerant attitude estimation algorithm for pico satellites. The algorithm uses a robust adaptive UKF, which performs correction for the process noise covariance (Q-adaptation) or measurement noise covariance (R-adaptation) depending on the type of the fault. By the use of a newly proposed adaptation scheme for the conventional UKF algorithm, the fault is detected and isolated, and the essential adaptation procedure is followed in accordance with the fault type. The proposed algorithm is tested as a part of the attitude estimation algorithm of a pico satellite.
机译:Unscented Kalman滤波器(UKF)是一种滤波算法,即使在有高非线性问题时,也能为非线性系统的估计问题提供足够好的估计结果。但是,在系统不确定或测量故障的情况下,UKF会变得不准确并且会随时间变化。本研究介绍了微卫星的容错姿态估计算法。该算法使用鲁棒的自适应UKF,该UKF根据故障类型对过程噪声协方差(Q-adaptation)或测量噪声协方差(R-adaptation)进行校正。通过使用针对传统UKF算法的新提出的自适应方案,可以检测并隔离故障,并根据故障类型遵循基本的自适应过程。将该算法作为微微卫星姿态估计算法的一部分进行了测试。

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