The attitude inversion method of geostationary satellites based on unscented particle filter |
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Authors: | Xiaoping Du Yang Wang Heng Hu Ruixin Gou Hao Liu |
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Affiliation: | 1. Department of Space Command, Equipment Academy, Beijing 101416, PR China;2. Department of Graduate Management, Equipment Academy, Beijing 101416, PR China;3. 93575 Troops, Beijing 101416, PR China |
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Abstract: | The attitude information of geostationary satellites is difficult to be obtained since they are presented in non-resolved images on the ground observation equipment in space object surveillance. In this paper, an attitude inversion method for geostationary satellite based on Unscented Particle Filter (UPF) and ground photometric data is presented. The inversion algorithm based on UPF is proposed aiming at the strong non-linear feature in the photometric data inversion for satellite attitude, which combines the advantage of Unscented Kalman Filter (UKF) and Particle Filter (PF). This update method improves the particle selection based on the idea of UKF to redesign the importance density function. Moreover, it uses the RMS-UKF to partially correct the prediction covariance matrix, which improves the applicability of the attitude inversion method in view of UKF and the particle degradation and dilution of the attitude inversion method based on PF. This paper describes the main principles and steps of algorithm in detail, correctness, accuracy, stability and applicability of the method are verified by simulation experiment and scaling experiment in the end. The results show that the proposed method can effectively solve the problem of particle degradation and depletion in the attitude inversion method on account of PF, and the problem that UKF is not suitable for the strong non-linear attitude inversion. However, the inversion accuracy is obviously superior to UKF and PF, in addition, in the case of the inversion with large attitude error that can inverse the attitude with small particles and high precision. |
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Keywords: | Photometric data Inversion Geostationary satellite Attitude Unscented Kalman Filter Particle Filter |
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