Specialization as an optimal strategy under varying external conditions
M. Ani Hsieh, Ádám Halász, Ekin D. Cubuk, Sam Schoenholz, Alcherio Martinoli
- Year
- 2009
- Citations
- 18
Abstract
We present an investigation of specialization when considering the execution of collaborative tasks by a robot swarm. Specifically, we consider the stick-pulling problem first proposed by Martinoli et al. [1], [2] and develop a macroscopic analytical model for the swarm executing a set of tasks that require the collaboration of two robots. We show, for constant external conditions, maximum productivity can be achieved by a single species swarm with carefully chosen operational parameters. While the same applies for a two species swarm, we show how specialization is a strategy best employed for changing external conditions.
Keywords
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