SWARM
Bee-inspired foraging in an embodied swarm (Demonstration)
Sjriek Alers, Daan Bloembergen, Daniel Hennes, Steven de Jong, Michael Kaisers, Nyree Lemmens, Karl Tuyls, Gerhard Weiß
- Year
- 2011
- Citations
- 3
Abstract
We show the emergence of Swarm Intelligence in physical robots. We transfer an optimization algorithm which is based on beeforaging behavior to a robotic swarm. In simulation this algorithm has already been shown to be more effective, scalable and adaptive than algorithms inspired by ant foraging. In addition to this advantage, bee-inspired foraging does not require (de-)centralized simulation of environmental parameters (e.g. pheromones).
Keywords
ForagingSwarm intelligenceSwarm roboticsSwarm behaviourComputer scienceScalabilityArtificial intelligenceRobotAnt roboticsMachine learning
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