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Team optimal decentralized estimation by multiple agents with partial history sharing information structure

Team optimal decentralized estimation by multiple agents with partial history sharing information... In this paper, we study the team optimal decentralized estimation with partial history sharing information structure. There exist N$$ N $$ agents that have their own observations and share partial history observations to each other. The main contributions include two aspects: One is to give the iterative equations of the common estimation, which is the conditional expectation of state with respect to the common information for all agents and the innovation of the local information for each agent; the other is to provide the structure of the team optimal decentralized estimation, that is, the linear combination of the common estimation and the innovation of the local information. The novelty lies in that the estimation can be obtained at one time by defining an augmented state. In particular, the result is reduced to the well‐known centralized estimation when all the information is sharing for all the agents. http://www.deepdyve.com/assets/images/DeepDyve-Logo-lg.png Asian Journal of Control Wiley

Team optimal decentralized estimation by multiple agents with partial history sharing information structure

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References (39)

Publisher
Wiley
Copyright
© 2023 Chinese Automatic Control Society and John Wiley & Sons Australia, Ltd
ISSN
1561-8625
eISSN
1934-6093
DOI
10.1002/asjc.3168
Publisher site
See Article on Publisher Site

Abstract

In this paper, we study the team optimal decentralized estimation with partial history sharing information structure. There exist N$$ N $$ agents that have their own observations and share partial history observations to each other. The main contributions include two aspects: One is to give the iterative equations of the common estimation, which is the conditional expectation of state with respect to the common information for all agents and the innovation of the local information for each agent; the other is to provide the structure of the team optimal decentralized estimation, that is, the linear combination of the common estimation and the innovation of the local information. The novelty lies in that the estimation can be obtained at one time by defining an augmented state. In particular, the result is reduced to the well‐known centralized estimation when all the information is sharing for all the agents.

Journal

Asian Journal of ControlWiley

Published: Nov 1, 2023

Keywords: communication delay; partial history sharing information structure; team optimal decentralized estimation

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