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Ant Colony Optimization algorithm for robot path planning

Michael Brand, Michael Masuda, Nicole Wehner, Xiao-Hua Yu

Year
2010
Citations
179

Abstract

Path planning is an essential task for the navigation and motion control of autonomous robot manipulators. This NP-complete problem is difficult to solve, especially in a dynamic environment where the optimal path needs to be rerouted in real-time when a new obstacle appears. The ACO (Ant Colony Optimization) algorithm is an optimization technique based on swarm intelligence. This paper investigates the application of ACO to robot path planning in a dynamic environment. Two different pheromone re-initialization schemes are compared and computer simulation results are presented.

Keywords

Ant colony optimization algorithmsMotion planningInitializationPath (computing)RobotComputer scienceObstacle avoidanceSwarm intelligenceObstacleMobile robot

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