Robust Strong Tracking Cubature Kalman Filter for Attitude Estimation of Failed Spacecraft

H. Ma, Zhen Lu, X. Zhang, W. Liao
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Abstract

The malfunction of attitude control system will lead to continuous attitude tumble of on-orbit spacecraft, which brings two problems to attitude estimation, one is the large initial error, and the other is the status mutation. Focusing on the above two issues, a robust strong tracking cubature Kalman filter (RSTCKF) is proposed in this paper to obtain the high-precision and real-time attitude knowledge of failed spacecraft. On the one hand, the multiplicative quaternion is adopted in the whole filter process instead of the additive one to keep the quaternion normalized, which increases the numerical stability of CKF; on the other hand, the time-varying multiple fading factors are introduced to adjust the different channels of prediction error covariance matrix, which strengthens the tracking ability of CKF to status mutation. Numerical simulations verify the effectiveness of the developed algorithm.
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失效航天器姿态估计的鲁棒强跟踪Cubature Kalman滤波
姿态控制系统的故障将导致在轨航天器的姿态持续翻滚,这给姿态估计带来两个问题,一是初始误差大,二是状态突变。针对上述两个问题,本文提出了一种鲁棒强跟踪cubature Kalman滤波器(RSTCKF),用于获取故障航天器的高精度实时姿态信息。一方面,在整个滤波过程中采用乘法四元数代替加性四元数,保持了四元数的归一化,增加了CKF的数值稳定性;另一方面,引入时变多重衰落因子对不同信道的预测误差协方差矩阵进行调整,增强了CKF对状态突变的跟踪能力。数值仿真验证了该算法的有效性。
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