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Marginalized particle filter for spacecraft attitude estimation from vector measurements

机译:用于矢量姿态估计的航天器姿态估计的边缘化粒子滤波器

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摘要

An algorithm based on the marginalized particle filters (MPF) is given in details in this paper to solve the spacecraft attitude estimation problem: attitude and gyro bias estimation using the biased gyro and vector observations. In this algorithm, by marginalizing out the state appearing linearly in the spacecraft model, the Kalman filter is associated with each particle in order to reduce the size of the state space and computational burden. The distribution of attitude vector is approximated by a set of particles and estimated using particle filter, while the estimation of gyro bias is obtained for each one of the attitude particles by applying the Kalman filter. The efficiency of this modified MPF estimator is verified through numerical simulation of a fully actuated rigid body. For comparison, unscented Kalman filter (UKF) is also used to gauge the performance of MPF. The results presented in this paper clearly demonstrate that the MPF is superior to UKF in coping with the nonlinear model.
机译:本文详细介绍了一种基于边缘化粒子滤波的算法,以解决航天器姿态估计问题:利用偏向陀螺和矢量观测进行姿态和陀螺偏向估计。在该算法中,通过边缘化线性出现在航天器模型中的状态,卡尔曼滤波器与每个粒子相关联,以减少状态空间的大小和计算负担。姿态矢量的分布由一组粒子近似,并使用粒子滤波器进行估算,而每个姿态粒子的陀螺仪偏差估算都可以通过应用卡尔曼滤波器获得。通过对全驱动刚体进行数值模拟,可以验证这种改进的MPF估计器的效率。为了进行比较,无味卡尔曼滤波器(UKF)也用于评估MPF的性能。本文提出的结果清楚地表明,MPF在处理非线性模型方面优于UKF。

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