Integrated SVD/EKF attitude estimation with UD factorization of the measurement noise covariance

Demet Cilden Guler, C. Hajiyev
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引用次数: 1

Abstract

This paper describes singular value decomposition (SVD) aided extended Kalman filter (EKF) for nanosatellite's attitude estimation. The development of the filter kinematic/dynamic model, and the measurement models of the sun sensors, and the magnetometers which are used to generate vector measurements is presented. Vector measurements are used in SVD for satellite attitude determination purpose. In the proposed method EKF inputs are coming from SVD as the linear measurements of attitude angles and their error covariance. In this step, UD is factorizing the attitude angles error covariance with forming the measurements in order to obtain the appropriate inputs for the EKF. Results are presented and analyzed in addition that the necessity of the sub-step which is the UD factorization on the measurement covariance is discussed. On the whole, the filter meets the expected accuracy, and robustness.
结合测量噪声协方差UD分解的SVD/EKF姿态估计
本文研究了基于奇异值分解(SVD)辅助扩展卡尔曼滤波(EKF)的纳米卫星姿态估计方法。介绍了滤波器的运动学/动力学模型的发展,以及用于矢量测量的太阳敏感器和磁强计的测量模型。矢量测量是SVD中用于卫星姿态确定的一种方法。在该方法中,EKF输入来自奇异值分解,作为姿态角及其误差协方差的线性测量。在此步骤中,UD将姿态角误差协方差分解为形成测量值,以获得EKF的适当输入。对结果进行了分析,并讨论了对测量协方差进行UD因子分解的必要性。总体而言,该滤波器满足预期的精度和鲁棒性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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