Evolving a Repertoire of Controllers for a Multi-function Swarm

Forfatter
Engebråten, Sondre Andreas
Moen, Jonas
Yakimenko, Oleg
Glette, Kyrre
Publisert
2018
Emneord
Kunstig intelligens
Roboter
Svermteknologi
Permalenke
http://hdl.handle.net/123456789/68759
http://hdl.handle.net/20.500.12242/1807
DOI
10.1007/978-3-319-77538-8_49
Samling
Articles
Description
Engebråten, Sondre Andreas; Moen, Hans Jonas Fossum; Yakimenko, Oleg; Glette, Kyrre. Evolving a Repertoire of Controllers for a Multi-function Swarm. Lecture Notes in Computer Science 2018 ;Volum 10784. s. 734-749
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Sammendrag
Automated design of swarm behaviors with a top-down approach is a challenging research question that has not yet been fully addressed in the robotic swarm literature. This paper seeks to explore the possibility of using an evolutionary algorithm to evolve, rather than hand code, a wide repertoire of behavior primitives enabling more effective control of a large group or swarm of unmanned systems. We use the MAP-elites algorithm to generate a repertoire of controllers with varying abilities and behaviors allowing the swarm to adapt to user-defined preferences by selection of a new appropriate controller. To test the proposed method we examine two example applications: perimeter surveillance and network creation. Perimeter surveillance require agents to explore, while network creation requires them to disperse without losing connectivity. These are distinct application that have drastically different requirements on agent behavior, and are a good benchmark for our swarm controller optimization framework. We show a performance comparison between a simple weighted controller and a parametric controller. Evolving controllers allows for specifying desired behaviors top-down, in terms of objectives to solve, rather than bottom-up.
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