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Multi Robot Path Planning Parameter Analysis Based on Particle Swarm Optimization (PSO) in an Intricate Unknown Environments

Shubham Shukla, NK Shukla, Vibhav Kumar Sachan

Year
2019
Citations
8

Abstract

Through Particle Swarm Optimization (PSO) path planning in an intricate environment turns out to be a novel approach for robot's multi path planning. Automation and detection capabilities of robots are the major challenges, to overcome these problems optimized path needs to be established. Robot path planning is one of the main problem that deals with the computation of collision free path for the given robot (agent) with the map, which helps it to operate. When the environment is known and the target location is estimated then only the path establishment is possible. The work we have presented on our paper totally focusses on the path planning problem. We have taken only one case into consideration, according to it the robot (agent) tracks the coordinated targets and reach towards the unknown environment through obstacle avoidance technique when the location of the target is unknown. Important parameters that we have taken to asses these algorithms are: (a) Number of visited node we consider as (Move). (b) Area explored considered as (Coverage). (c) Distance travelled considered as (Energy) and time elapsed as (Time).

Keywords

Motion planningRobotParticle swarm optimizationObstaclePath (computing)Computer scienceObstacle avoidanceMathematical optimizationAutomationMobile robot

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