Cao Lu, Tang Yu, Chen Xiaoqian, Zhao Yong
The State Key Laboratory of Astronautic Dynamics, China Xi׳an Satellite Control Center, Xi׳an 710043, China.
College of Aerospace Science and Engineering National University of Defense Technology, Changsha 410073, China.
ISA Trans. 2015 Jul;57:189-204. doi: 10.1016/j.isatra.2015.02.006. Epub 2015 Mar 2.
In this paper, the Unscented Predictive Filter (UPF) is derived based on unscented transformation for nonlinear estimation, which breaks the confine of conventional sigma-point filters by employing Kalman filter as subject investigated merely. In order to facilitate the new method, the algorithm flow of UPF is given firstly. Then, the theoretical analyses demonstrate that the estimate accuracy of the model error and system for the UPF is higher than that of the conventional PF. Moreover, the authors analyze the stochastic boundedness and the error behavior of Unscented Predictive Filter (UPF) for general nonlinear systems in a stochastic framework. In particular, the theoretical results present that the estimation error remains bounded and the covariance keeps stable if the system׳s initial estimation error, disturbing noise terms as well as the model error are small enough, which is the core part of the UPF theory. All of the results have been demonstrated by numerical simulations for a nonlinear example system.
本文基于无迹变换推导了用于非线性估计的无迹预测滤波器(UPF),它突破了传统西格玛点滤波器仅将卡尔曼滤波器作为研究对象的局限。为了便于理解这种新方法,首先给出了UPF的算法流程。然后,理论分析表明,UPF对模型误差和系统的估计精度高于传统PF。此外,作者在随机框架下分析了一般非线性系统的无迹预测滤波器(UPF)的随机有界性和误差行为。特别地,理论结果表明,如果系统的初始估计误差、干扰噪声项以及模型误差足够小,估计误差将保持有界且协方差保持稳定,这是UPF理论的核心部分。所有结果都通过一个非线性示例系统的数值模拟得到了验证。