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Group-based control of large-scale micro-robot swarms with on-board Physical Finite-State Machines

2022-08-18 03:21:01
Siyu Li, Milos Zefran, Igor Paprotny

Abstract

An important problem in microrobotics is how to control a large group of microrobots with a global control signal. This paper focuses on controlling a large-scale swarm of MicroStressBots with on-board physical finite-state machines. We introduce the concept of group-based control, which makes it possible to scale up the swarm size while reducing the complexity both of robot fabrication as well as swarm control. We prove that the group-based control system is locally accessible in terms of the robot positions. We further hypothesize based on extensive simulations that the system is globally controllable. A nonlinear optimization strategy is proposed to control the swarm by minimizing control effort. We also propose a probabilistically complete collision avoidance method that is suitable for online use. The paper concludes with an evaluation of the proposed methods in simulations.

Abstract (translated)

URL

https://arxiv.org/abs/2208.08614

PDF

https://arxiv.org/pdf/2208.08614.pdf


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