Optimal Dynamic Coverage Infrastructure for Large-Scale Fleets of Reconnaissance UAVs
Yaniv Altshuler, Alex Pentland, Shlomo Bekhor, Yoram Shiftan, Alfred, Bruckstein

TL;DR
This paper introduces an analytical method to optimize large-scale reconnaissance drone swarms for maximum coverage and threat detection efficiency, considering costs, drone types, and specific search scenarios.
Contribution
It presents a novel approach for generating provably optimal drone deployment strategies tailored to various search scenarios and threat estimations.
Findings
Optimized drone deployment reduces detection costs.
Model validated on Israeli transportation network data.
Strategy adapts to different threat and drone performance parameters.
Abstract
Current state of the art in the field of UAV activation relies solely on human operators for the design and adaptation of the drones' flying routes. Furthermore, this is being done today on an individual level (one vehicle per operators), with some exceptions of a handful of new systems, that are comprised of a small number of self-organizing swarms, manually guided by a human operator. Drones-based monitoring is of great importance in variety of civilian domains, such as road safety, homeland security, and even environmental control. In its military aspect, efficiently detecting evading targets by a fleet of unmanned drones has an ever increasing impact on the ability of modern armies to engage in warfare. The latter is true both traditional symmetric conflicts among armies as well as asymmetric ones. Be it a speeding driver, a polluting trailer or a covert convoy, the basic…
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Taxonomy
TopicsUAV Applications and Optimization · Robotic Path Planning Algorithms · Distributed Control Multi-Agent Systems
