Robot swarm for efficient area coverage inspired by ant foraging: The case of adaptive switching between brownian motion and lévy flight
Published in ASME 2017 Dynamic Systems and Control Conference, 2017
Design of robot swarms inspired by self-organization in social insect groups is currently an active research area with a diverse portfolio of potential applications. In this work, the authors propose a control law for efficient area coverage by a robot swarm in a 2D spatial domain, inspired by the unique dynamical characteristics of ant foraging. The novel idea pursued in the effort is that dynamic, adaptive switching between Brownian motion and Lévy flight in the stochastic component of the search increases the efficiency of the search. Influence of different pheromone (the virtual chemotactic agent that drives the foraging) threshold values for switching between Lévy flights and Brownian motion is studied using two performance metrics — area coverage and visit entropy. The results highlight the advantages of the switching strategy for the control framework, particularly in cases when the object of the search is scarce in quantity or getting depleted in real-time.
Recommended Citation:
@inproceedings{deshpande2017robot, title={Robot swarm for efficient area coverage inspired by ant foraging: The case of adaptive switching between brownian motion and l{\'e}vy flight}, author={Deshpande, Aditya and Kumar, Manish and Ramakrishnan, Subramanian}, booktitle={ASME 2017 Dynamic Systems and Control Conference}, pages={V002T14A009--V002T14A009}, year={2017}, organization={American Society of Mechanical Engineers} }