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Particle Filtering for Gyroless Attitude/Angular Rate Estimation Algorithm

机译:无陀螺姿态/角速率估计算法的粒子滤波

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A novel spacecraft attitude and angular rate estimation algorithm is proposed using particle filter (PF) with the modified Rodrigues parameters (MRPs) representing the attitude, under both gyroless and gyro-disable modes. Belonging to the class of Monte Carlo sequential methods, the filter uses the unscented Kalman filter (UKF) to generate importance proposal distribution. It can not only avoid the limitation of the UKF which can only apply to Gaussian distribution, but also avoid the limitation of the standard PF which can not include the new measurements. A special procedure is developed to account for the curse of the dimensionality related to the PF in existence of augmented state vector. MRPs are used for attitude representations. The singularity problem associated with the MRPs is addressed as well using switching method. Simulation results demonstrate that the estimation algorithm has faster convergence rate and higher accuracy compared with the recently presented UKF, and it shows a reduction of about 10% in computational load compared with that using the quaternion estimation algorithm.
机译:提出了一种新的航天器姿态和角速率估计算法,该算法使用具有改进的Rodrigues参数(MRP)表示姿态的粒子滤波器(PF)在无陀螺和无陀螺两种模式下进行。属于Monte Carlo顺序方法的类别,该过滤器使用无味的Kalman过滤器(UKF)来生成重要性建议分布。它不仅可以避免仅适用于高斯分布的UKF的局限性,而且可以避免不包含新测量值的标准PF的局限性。开发了一种特殊的程序来解决存在增强状态向量的情况下与PF相关的维数的诅咒。 MRP用于态度表示。还使用切换方法解决了与MRP相关的奇异性问题。仿真结果表明,与最近提出的UKF相比,该估计算法具有更快的收敛速度和更高的精度,并且与使用四元数估计算法相比,它的计算量减少了约10%。

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