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http://dx.doi.org/10.5369/JSST.2019.28.5.277

Distributed Fusion Estimation for Sensor Network  

Song, Il Young (Laser Applied System, Hanwha Corporation Defense R&D Center)
Song, Jin Mo (Laser Applied System, Hanwha Corporation Defense R&D Center)
Jeong, Woong Ji (Laser Applied System, Hanwha Corporation Defense R&D Center)
Gong, Myoung Sool (Laser Applied System, Hanwha Corporation Defense R&D Center)
Publication Information
Journal of Sensor Science and Technology / v.28, no.5, 2019 , pp. 277-283 More about this Journal
Abstract
In this paper, we propose a distributed fusion estimation for sensor networks using a receding horizon strategy. Communication channels were modelled as Markov jump systems, and a posterior probability distribution for communication channel characteristics was calculated and incorporated into the filter to allow distributed fusion estimation to handle path loss observation situations automatically. To implement distributed fusion estimation, a Kalman-Consensus filter was then used to obtain the average consensus, based on the estimates of sensors randomly distributed across sensor networks. The advantages of the proposed algorithms were then verified using a large-scale sensor network example.
Keywords
Distributed fusion; Fusion formula; Kalman filter; Multi-sensor; Sliding window;
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