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A Minimalistic Approach to Segregation in Robot Swarms

2019-01-29
Peter Mitrano, Jordan Burklund, Michael Giancola, Carlo Pinciroli

Abstract

We present a decentralized algorithm to achieve segregation into an arbitrary number of groups with swarms of autonomous robots. The distinguishing feature of our approach is in the minimalistic assumptions on which it is based. Specifically, we assume that (i) Each robot is equipped with a ternary sensor capable of detecting the presence of a single nearby robot, and, if that robot is present, whether or not it belongs to the same group as the sensing robot; (ii) The robots move according to a differential drive model; and (iii) The structure of the control system is purely reactive, and it maps directly the sensor readings to the wheel speeds with a simple ‘if’ statement. We present a thorough analysis of the parameter space that enables this behavior to emerge, along with conditions for guaranteed convergence and a study of non-ideal aspects in the robot design.

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URL

http://arxiv.org/abs/1901.10423

PDF

http://arxiv.org/pdf/1901.10423


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