Lin Honglei, Sun Shuli
School of Electronics Engineering, Heilongjiang University, Harbin 150080, China.
Sensors (Basel). 2016 Jul 23;16(8):1155. doi: 10.3390/s16081155.
This paper is concerned with the state estimation problem for a class of non-uniform sampling systems with missing measurements where the state is updated uniformly and the measurements are sampled randomly. A new state model is developed to depict the dynamics at the measurement sampling points within a state update period. A non-augmented state estimator dependent on the missing rate is presented by applying an innovation analysis approach. It can provide the state estimates at the state update points and at the measurement sampling points within a state update period. Compared with the augmented method, the proposed algorithm can reduce the computational burden with the increase of the number of measurement samples within a state update period. It can deal with the optimal estimation problem for single and multi-sensor systems in a unified way. To improve the reliability, a distributed suboptimal fusion estimator at the state update points is also given for multi-sensor systems by using the covariance intersection fusion algorithm. The simulation research verifies the effectiveness of the proposed algorithms.
本文关注一类具有测量缺失的非均匀采样系统的状态估计问题,其中状态均匀更新,测量随机采样。开发了一种新的状态模型来描述状态更新周期内测量采样点处的动态。通过应用创新分析方法,提出了一种依赖于缺失率的非增广状态估计器。它可以在状态更新周期内提供状态更新点和测量采样点处的状态估计。与增广方法相比,所提算法可随着状态更新周期内测量样本数量的增加而减轻计算负担。它可以统一处理单传感器和多传感器系统的最优估计问题。为提高可靠性,还利用协方差交叉融合算法为多传感器系统给出了状态更新点处的分布式次优融合估计器。仿真研究验证了所提算法的有效性。