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引用次数: 21
摘要
本文的目的是开发一种可量化的MAP (Maximum a Posterior)航迹融合算法的性能评价方法。目标是在没有广泛的蒙特卡罗模拟的情况下提供分析聚变性能。这个想法是发展稳态聚变性能的方法。研究了简单凸组合、交叉协方差组合(CC)、信息矩阵(IM)和MAP融合等融合算法,并提出了几种性能评价方法。但它们中的大多数不是基于实际动态系统的稳态。本文对MAP融合算法进行了类似的分析。在静态情况下(即单次迭代),MAP或best - linear Unbiased Estimate (BLUE)融合公式提供了在线性高斯假设下给定局部估计的最佳线性最小均方估计(LMMSE)。然而,在动态情况下,需要递归融合迭代,对性能的影响并不明显。本文提出了一个系统的分析过程来评估该算法在两种不同通信策略下的性能。具体来说,考虑了有反馈和无反馈的分层融合。给出了不同通信模式下融合算法稳态性能的理论曲线。它们为不同的操作条件提供性能界限。
The purpose of this paper is to develop a quantifiable performance evaluation method for MAP (Maximum A Posterior) track fusion algorithm. The goal is to provide analytical fusion performance without extensive Monte Carlo simulations. The idea is to develop methodologies for steady state fusion performance. Several fusion algorithms such as simple convex combination, cross-covariance combination (CC), information matrix (IM), and MAP fusion have been studied and several performance evaluation methods have been proposed. But most of them are not based on the steady state of an actual dynamic system. This paper conducts similar analysis for MAP fusion algorithm. It has been shown that the MAP or Best-Linear Unbiased Estimate (BLUE) fusion formula provides the best linear minimum mean squared estimates (LMMSE) given local estimates under the linear Gaussian assumption in a static situation (i.e., single iteration). However, in a dynamic situation, recursive fusion iterations are needed and the impact on the performance is not obvious. This paper proposes a systematic analytical procedure to evaluate the performance of such algorithm under two different communication strategies. Specifically, hierarchical fusion with and without feedback is considered. Theoretical curves for the steady state performance of the fusion algorithm with various communication patterns are given. They provide performance bounds for different operating conditions.