Modified Unscented Kalman Filter for Relative Navition of Space Target Acquisition, Tracking and Control

Jianbing Kang, Ai Zhang, Zhao-Ru Shi, Yuanming Miao, X. Zhao, Chao Zhang
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引用次数: 1

Abstract

At present, the trend of improving the mobility of fast acquisition, long-term tracking and high-precision control has been formed in China. The continuous observation ability of non-cooperative targets and good imaging performance in motion are important trends in the development of optical remote sensing technology. Aiming at the high-precision observation and real-time tracking requirements of high orbit space satellites, this paper studies the high-precision relative navigation of space non cooperative targets. In order to solve the problem that the estimation accuracy of Unscented Kalman filter (UKF) decreases when the system visibility is low, a modified Unscented Kalman filter (MUKF) based on the visibility is proposed. This algorithm defines a system visibility characterization method based on the error gain matrix of the filtering process, and proposes the visibility scaling parameter based on this method, The filter gain covariance matrix is adjusted online, so that the algorithm can adjust the weight of state prediction and system observation online according to the observability of the current time. Numerical simulation shows that compared with UKF, the estimation accuracy of MUKF is improved by about 4 times, and MUKF stabilizes faster and has higher accuracy.
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用于空间目标捕获、跟踪和控制的改进无气味卡尔曼滤波
目前,国内已形成了快速采集、长时间跟踪、高精度控制的机动性提升趋势。对非合作目标的连续观测能力和良好的运动成像性能是光学遥感技术发展的重要趋势。针对高轨道空间卫星的高精度观测和实时跟踪需求,研究了空间非合作目标的高精度相对导航。为了解决Unscented卡尔曼滤波器(UKF)在系统可见性较低时估计精度降低的问题,提出了一种基于可见性的改进Unscented卡尔曼滤波器(MUKF)。该算法定义了一种基于滤波过程误差增益矩阵的系统可见性表征方法,并在此基础上提出了可见性缩放参数,在线调整滤波器增益协方差矩阵,使算法能够根据当前时间的可观测性在线调整状态预测和系统观测的权重。数值仿真表明,与UKF相比,MUKF的估计精度提高了约4倍,且稳定速度更快,精度更高。
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