4.7 Article

Unifying Consensus and Covariance Intersection for Efficient Distributed State Estimation Over Unreliable Networks

Journal

IEEE TRANSACTIONS ON ROBOTICS
Volume 37, Issue 5, Pages 1525-1538

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TRO.2021.3064102

Keywords

Network topology; Dispersion; Atmospheric modeling; Optimization; Topology; Scalability; Protocols; Consensus estimation; covariance intersection (CI); distributed state estimation (DSE)

Categories

Funding

  1. National Science Foundation [ECCS-1637889, IIS-1453652]
  2. National Natural Science Foundation of China [61801213]

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This article introduces and studies a recursive information consensus filter for decentralized dynamic state estimation in unreliable communication networks. The hybrid method achieves consensus over priors and new information, producing unbiased conservative estimates that outperform traditional methods.
This article presents and studies a recursive information consensus filter for decentralized dynamic state estimation under circumstances in which the communication network is unreliable. Local estimators are assumed to have access only to local information, and no structure is assumed about the topology of the communication network, which need not be connected at all times. The filter is a hybrid approach: it uses iterative covariance intersection to reach consensus over priors, which might become correlated, while consensus over new information is handled using weights based on a Metropolis-Hastings Markov chain. We establish bounds for estimation performance and show that this hybrid method produces unbiased conservative estimates that are better than covariance intersection. The performance of the hybrid method is evaluated extensively, including comparisons with competing algorithms, with a hypothetical full history yardstick, and centralized performance. We conduct an assessment on a realistic atmospheric dispersion problem and also on more carefully crafted settings to help characterize particular aspects of the performance.

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