Home /Research /Extended PSO Based Collaborative Searching for Robotic Swarms With Practical Constraints
SWARM

Extended PSO Based Collaborative Searching for Robotic Swarms With Practical Constraints

Jian Yang, Xin Wang, Péter Bauer

Year
2019
Citations
54
Access
Open access

Abstract

Applying swarm intelligence to actual swarm robotic systems is a challenging task especially with adequately consideration of corresponding practical constraints. Under the restrictions of the field-of-view limited relative positioning, local sensing and communication, kinematic limitations as well as anti-collision issues, this paper presents a constrained particle swarm optimization (PSO) based collaborative searching method for robotic swarms. Besides, the proposed method follows the concept of evolution speed and a modified aggregation degree to determine the adaptive weights in the robotic PSO model. The modified aggregation degree is associated with the number of members in one's field-of-view. Unlike the traditional position update method, the proposed method updates the forward speed and angular velocity of the robot using the non-holonomic model to realize the motion control of each robot. The simulation results show that the proposed method has the potential for the practical implementation of collaborative searching tasks for robotic swarms in different types of environments.

Keywords

Computer scienceParticle swarm optimizationSwarm roboticsKinematicsSwarm behaviourRobotField (mathematics)Artificial intelligenceHolonomicPosition (finance)

Related papers

Browse all SWARM papers