Title :
Global path planning for mobile robots in large-scale grid environments using genetic algorithms
Author :
Alajlan, Maram ; Koubaa, Anis ; Chaari, Imen ; Bennaceur, Hachemi ; Ammar, Achraf
Author_Institution :
Res. Unit of Sci. & Technol, Al-Imam Mohamed bin Saud Univ., Saudi Arabia
Abstract :
Global path planning is considered as a fundamental problem for mobile robots. In this paper, we investigate the capabilities of genetic algorithms (GA) for solving the global path planning problem in large-scale grid maps. First, we propose a GA approach for efficiently finding an (or near) optimal path in the grid map. We carefully designed GA operators to optimize the search process. We also conduct a comprehensive statistical evaluation of the proposed GA approach in terms of solution quality, and we compare it against the well-known A* algorithm as a reference. Extensive simulation results show that GA is able to find the optimal paths in large environments equally to A* in almost all the simulated cases.
Keywords :
genetic algorithms; large-scale systems; mobile robots; path planning; statistical analysis; A* algorithm; GA; genetic algorithms; global path planning; large-scale grid environments; large-scale grid maps; mobile robots; statistical evaluation; Biological cells; Genetic algorithms; Mobile robots; Path planning; Sociology; Statistics;
Conference_Titel :
Individual and Collective Behaviors in Robotics (ICBR), 2013 International Conference on
Conference_Location :
Sousse
DOI :
10.1109/ICBR.2013.6729271