Distributed Multitarget Search and Track Assignment With Consensus-Based Coordination

Sensors Journal, IEEE  (2015)

引用 29|浏览14
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摘要
This paper presents a distributed, consensus-based approach to optimize radar resource management for ballistic missile surveillance and tracking. Radar search, target detection, and target tracking are described using a nonlinear, three-dimensional model. Target tracking includes an estimate of the resources required to reduce target uncertainty to support engagements. Each radar determines its preferred radar-to-target assignment using a probabilistic optimization algorithm that balances radar loading and minimizes the total radar usage. Under heightened track demand, radar search sectors degrade symmetrically about a designated threat axis. A unique global radar-to-target assignment that is robust to resource estimation error is generated by a distributed consensus algorithm. Performance of the coordinated algorithm is compared with uncoordinated alternatives via Monte Carlo simulations.
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关键词
monte carlo methods,missiles,optimisation,radar tracking,search radar,monte carlo simulations,ballistic missile surveillance,ballistic missile tracking,consensus based coordination,distributed consensus algorithm,distributed multitarget search,global radar-to-target assignment,heightened track demand,probabilistic optimization algorithm,radar loading,radar resource management,radar search,radar search sectors,radar usage,resource estimation error,target detection,target tracking,track assignment,cooperative systems,graph theory,networks,optimization methods,radar
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