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An Evolutionary Algorithm to Optimise a Distributed UAV Swarm Formation System

Daniel H. Stolfi, Grégoire Danoy

发表年份
2022
引用次数
19
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摘要

In this article, we present a distributed robot 3D formation system optimally parameterised by a hybrid evolutionary algorithm (EA) in order to improve its efficiency and robustness. To achieve that, we first describe the novel distributed formation algorithm3 (DFA3), the proposed EA, and the two crossover operators to be tested. The EA hyperparameterisation is performed by using the irace package and the evaluation of the three case studies featuring three, five, and ten unmanned aerial vehicles (UAVs) is performed through realistic simulations by using ARGoS and ten scenarios evaluated in parallel to improve the robustness of the configurations calculated. The optimisation results, reported with statistical significance, and the validation performed on 270 unseen scenarios show that the use of a metaheuristic is imperative for such a complex problem despite some overfitting observed under certain circumstances. All in all, the UAV swarm self-organised itself to achieve stable formations in 95% of the scenarios studied with a plus/minus ten percent tolerance.

关键词

OverfittingRobustness (evolution)CrossoverEvolutionary algorithmComputer scienceSwarm behaviourMathematical optimizationAlgorithmArtificial intelligenceMathematics

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