Tracking mulitple targets with multiple radars using Distributed
Auctions
- URL: http://arxiv.org/abs/2307.16477v1
- Date: Mon, 31 Jul 2023 08:14:29 GMT
- Title: Tracking mulitple targets with multiple radars using Distributed
Auctions
- Authors: Pierre Larrenie, C\'edric Buron (LABISEN-KLAIM), Fr\'ed\'eric
Barbaresco
- Abstract summary: We introduce a highly resilient algorithm for radar coordination based on decentralized and collaborative bundle auctions.
Our approach allows to track simultaneously multiple targets, and to use up to two radars tracking the same target to improve accuracy.
- Score: 0.0
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Coordination of radars can be performed in various ways. To be more resilient
radar networks can be coordinated in a decentralized way. In this paper, we
introduce a highly resilient algorithm for radar coordination based on
decentralized and collaborative bundle auctions. We first formalize our problem
as a constrained optimization problem and apply a market-based algorithm to
provide an approximate solution. Our approach allows to track simultaneously
multiple targets, and to use up to two radars tracking the same target to
improve accuracy. We show that our approach performs sensibly as well as a
centralized approach relying on a MIP solver, and depending on the situations,
may outperform it or be outperformed.
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