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Extended and unscented Kalman filters for the identification of uncertainties in a process

机译:扩展和无编号的卡尔曼过滤器,用于确定过程中的不确定性

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This paper describes the application of extended and unscented Kalman filters for the identification of uncertainties in a process. The extended Kalman filter (EKF) is an optimal linear recursive algorithm that offers a solution to the filtering problem. The EKF is based on a first-order Taylor expansion to approximate the measurement and process models. This approach may cause the estimation process to diverge. Consequently, alternatives (e.g., the unscented Kalman filter, UKF) based on a fixed number of points to represent a Gaussian distribution have been introduced. The EKF and UKF have been applied for the identification of uncertainty in the attitude determination process for small satellites based on noisy measurements collected from Sun sensors and three-axis magnetometers. Simulation results indicate that the EKF and UKF perform equally well when small initial errors are present. However, when large errors are introduced, the UKF leads to a faster convergence and achieves a higher more accurate estimate of the state of the system.
机译:本文描述了扩展和无迹卡尔曼滤波器的用于在过程中的不确定性的识别的应用程序。扩展卡尔曼滤波器(EKF)是线性的递归算法的最佳的提议的过滤问题的解决方案。 EKF的是基于一阶泰勒展开式来近似测量和过程模型。这种做法可能会导致估计过程发散。因此,(例如,无迹卡尔曼滤波,UKF)基于固定数量的点来表示的高斯分布的已被引入的替代品。 EKF和UKF已经应用在用于基于来自太阳传感器和三轴磁力计采集的噪声测量小卫星姿态确定处理的识别的不确定性。仿真结果表明,EKF和UKF执行同样好时小的初始存在错误。然而,引入了较大的误差的情况下,UKF导致更快的收敛,并实现了系统的状态的更高更准确的估计。

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