基于信息一致性的平方根型分布式非线性滤波器

Jun Liu, Yu Liu, Kai Dong, Shun Sun, Ziran Ding, Qichao Li
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引用次数: 0

摘要

研究了传感器网络中的分布式非线性状态估计问题。针对系统模型的非线性、一致性迭代产生的冗余以及传感器视场有限造成的天真等问题,提出了一种基于信息一致性的平方根分布式非线性滤波器(SRDICF)。它是在信息加权共识协议的基础上开发的,嵌入了信息矩阵的平方根分解。选择了cubature规则来近似非线性贝叶斯滤波范式中涉及的高斯加权积分。然后对局部先验信息和度量信息赋予不同的权重,初始化共识项。最后,通过充分的一致性迭代获得各节点的全局估计。实验结果表明,在存在naïve节点和信息冗余的情况下,SRDICF具有更高的估计精度、更快的收敛速度和更好的数值稳定性。此外,SRDICF在一致性迭代较少的情况下获得了与集中式方案相当的估计精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Square-root Version Distributed Nonlinear Filter Based on Information Consensus
This paper studies the problem of distributed nonlinear state estimation in sensor networks. To solve the problems of nonlinearity in system model, redundancy caused by consensus iterations, and naivety resulting from limited field of view (FOV) of sensors, a novel square-root version distributed nonlinear filter based on information consensus (SRDICF) is proposed. It is developed based on the information weighted consensus protocol with embedded square-root decomposition of the information matrices. The cubature rule is chosen to approximate the Gaussian weighted integral involved in the nonlinear Bayesian filtering paradigm. Then different weights are assigned to the local prior and measurement information to initialize the consensus terms. Finally, the global estimate of each node is acquired with sufficient consensus iterations. The experimental results illustrate that the SRDICF achieves higher estimation accuracy, faster convergence rate and better numerical stability in the existence of naïve nodes and information redundancy. In addition, the SRDICF attains comparable estimation accuracy to the centralized scheme with fewer consensus iterations.
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