不确定线性动态系统分布式融合滤波器的比较

J. Yoon, S. Bae, V. Shin
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引用次数: 0

摘要

研究了一类具有不确定性的线性离散动态系统的分布式融合滤波问题。所有的融合滤波算法都是基于融合公式,该融合公式表示具有矩阵或标量权重的局部卡尔曼估计的加权和。采用凸组合、最优融合、协方差交叉和中值融合四种算法计算融合权值。从估计精度和计算量两方面讨论了两种融合算法的比较结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of Distributed Fusion Filters for Linear Dynamic System with Uncertainty
In this paper, a distributed fusion filtering problem for a linear discrete-time dynamic system with uncertainty is considered. All fusion filtering algorithms are based on fusion formulas which represent a weighted sum of the local Kalman estimates with matrix or scalar weights. The fusion weights are calculated by using four algorithms: convex combination, optimal fusion, covariance intersection, and median fusion. The comparison results of the fusion algorithms are discussed in terms of estimation accuracy and computation cost.
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