Distributed Coverage Control of Multi-Agent Networks with Guaranteed Collision Avoidance in Cluttered Environments
Alaa Z.Abdulghafoor, Efstathios Bakolas

TL;DR
This paper introduces a distributed control algorithm for multi-agent networks that achieves spatial coverage according to a time-varying density function while guaranteeing collision avoidance in cluttered environments, using obstacle-aware Voronoi tessellations.
Contribution
It presents a novel two-level control framework combining high-level density interpolation with low-level collision-free deployment using modified Voronoi cells.
Findings
Effective coverage in cluttered environments demonstrated in simulations
Collision avoidance maintained at all times during deployment
Analytical solution for high-level coverage density interpolation
Abstract
We propose a distributed control algorithm for a multi-agent network whose agents deploy over a cluttered region in accordance with a time-varying coverage density function while avoiding collisions with all obstacles they encounter. Our algorithm is built on a two-level characterization of the network. The first level treats the multi-agent network as a whole based on the distribution of the locations of its agents over the spatial domain. In the second level, the network is described in terms of the individual positions of its agents. The aim of the multi-agent network is to attain a spatial distribution that resembles that of a reference coverage density function (high-level problem) by means of local (microscopic) interactions of its agents (low-level problem). In addition, as the agents deploy, they must avoid collisions with all the obstacles in the region at all times. Our…
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Taxonomy
TopicsDistributed Control Multi-Agent Systems · Energy Efficient Wireless Sensor Networks · Pesticide and Herbicide Environmental Studies
