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Relative dynamics estimation of non-cooperative spacecraft with unknown orbit elements and inertial tensor 被引量:4

Relative dynamics estimation of non-cooperative spacecraft with unknown orbit elements and inertial tensor
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摘要 The state estimation for relative motion with respect to non-cooperative spacecraft in ren- dezvous and docking (RVD) is a challenging problem. In this paper, a completely non-cooperative case is considered, which means that both orbit elements and inertial tensor of target spacecraft are unknown. By formulating the equations of relative translational dynamics in the orbital plane of chaser spacecraft, the issue of unknown orbit elements is solved. And for the problem for unknown inertial tensor, we propose a novel robust estimator named interaction cubature Kalman filter (InCKF) to handle it. The novel filter consists of multiple concurrent CKFs interlacing with a max- imum a posteriori (MAP) estimator. The initial estimations provided by the multiple CKFs are used in a Bayesian framework to form description of posteriori probability about inertial tensor and the MAP estimator is applied to giving the optimal estimation. By exploiting special property of spherical-radial (SR) rule, a novel method with respect to approximating the likelihood probability of inertial tensor is presented. In addition, the issue about vision sensor's location inconformity with center mass of chaser spacecraft is also considered. The performance of this filter is demonstrated by the estimation problem of RVD at the final phase. And the simulation results show that the perfor- mance of InCKF is better than that of extended Kalman filter (EKF) and the estimation accuracy of oose and attitude is relatively high even in the comoletely non-coooerative case. The state estimation for relative motion with respect to non-cooperative spacecraft in ren- dezvous and docking (RVD) is a challenging problem. In this paper, a completely non-cooperative case is considered, which means that both orbit elements and inertial tensor of target spacecraft are unknown. By formulating the equations of relative translational dynamics in the orbital plane of chaser spacecraft, the issue of unknown orbit elements is solved. And for the problem for unknown inertial tensor, we propose a novel robust estimator named interaction cubature Kalman filter (InCKF) to handle it. The novel filter consists of multiple concurrent CKFs interlacing with a max- imum a posteriori (MAP) estimator. The initial estimations provided by the multiple CKFs are used in a Bayesian framework to form description of posteriori probability about inertial tensor and the MAP estimator is applied to giving the optimal estimation. By exploiting special property of spherical-radial (SR) rule, a novel method with respect to approximating the likelihood probability of inertial tensor is presented. In addition, the issue about vision sensor's location inconformity with center mass of chaser spacecraft is also considered. The performance of this filter is demonstrated by the estimation problem of RVD at the final phase. And the simulation results show that the perfor- mance of InCKF is better than that of extended Kalman filter (EKF) and the estimation accuracy of oose and attitude is relatively high even in the comoletely non-coooerative case.
出处 《Chinese Journal of Aeronautics》 SCIE EI CAS CSCD 2016年第2期479-491,共13页 中国航空学报(英文版)
基金 financial support provided by the National Natural Science Foundation of China(Nos.61174037,61573115) the National Basic Research Program of China(No.2012CB821205)
关键词 Cubature Kalman filter MAP estimator Non-cooperative spacecraft Relative motion Stereo vision Cubature Kalman filter MAP estimator Non-cooperative spacecraft Relative motion Stereo vision
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