An algorithm applied the Turing pattern model to control active swarm robots using only information from neighboring modules
Takeshi Ishida

TL;DR
This paper presents a novel algorithm that applies the Turing pattern model to control swarm robots using only local neighbor information, enabling self-organization, shape maintenance, movement, and self-replication.
Contribution
The proposed method uniquely integrates Turing pattern principles into swarm robot control, allowing modules to self-organize and move based solely on local information without identifiers or global coordinates.
Findings
Successfully maintained module group shape during movement
Achieved modules moving towards light sources
Demonstrated self-replication in simulation
Abstract
Swarm robots, inspired by the emergence of animal herds, are robots that assemble a large number of modules and self-organize themselves to form specific morphologies and exhibit specific functions. These modular robots perform relatively simple actions and controls, and create macroscopic morphologies and functions through the interaction of a large number of modular robots. This research focuses on such self-organizing robots or swarm robots. The proposed algorithm is a model that applies the Turing pattern, one of the self-organization models, to make a group of modules accumulate and stay within a certain region. The proposed method utilizes the area within the spots of the Turing pattern as the aggregation region of the modules. Furthermore, it considers the value corresponding to the concentration distribution within the spotted pattern of the Turing pattern model (referred to as…
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Taxonomy
TopicsModular Robots and Swarm Intelligence · Distributed Control Multi-Agent Systems · Micro and Nano Robotics
