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Particle Swarm Optimization—An Adaptation for the Control of Robotic Swarms

George Rossides, Benjamin Metcalfe, Alan J. Hunter

2021Robotics37 citationsDOIOpen Access PDF

Abstract

Particle Swarm Optimization (PSO) is a numerical optimization technique based on the motion of virtual particles within a multidimensional space. The particles explore the space in an attempt to find minima or maxima to the optimization problem. The motion of the particles is linked, and the overall behavior of the particle swarm is controlled by several parameters. PSO has been proposed as a control strategy for physical swarms of robots that are localizing a source; the robots are analogous to the virtual particles. However, previous attempts to achieve this have shown that there are inherent problems. This paper addresses these problems by introducing a modified version of PSO, as well as introducing new guidelines for parameter selection. The proposed algorithm links the parameters to the velocity and acceleration of each robot, and demonstrates obstacle avoidance. Simulation results from both MATLAB and Gazebo show close agreement and demonstrate that the proposed algorithm is capable of effective control of a robotic swarm and obstacle avoidance.

Topics & Concepts

Particle swarm optimizationMaxima and minimaObstacle avoidanceMulti-swarm optimizationRobotSwarm behaviourAccelerationComputer scienceSwarm roboticsObstacleCollision avoidanceMATLABMotion controlControl theory (sociology)Mathematical optimizationControl (management)Artificial intelligenceMobile robotMathematicsAlgorithmPhysicsCollisionClassical mechanicsLawOperating systemPolitical scienceComputer securityMathematical analysisMetaheuristic Optimization Algorithms ResearchDistributed Control Multi-Agent SystemsRobotic Path Planning Algorithms
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