DocumentCode :
1862968
Title :
Modifying Ant Colony Optimization
Author :
Nonsiri, Sarayut ; Supratid, Siriporn
Author_Institution :
Fac. of Inf. Technol., Rangsit Univ., Pathumthani
fYear :
2008
fDate :
25-27 June 2008
Firstpage :
95
Lastpage :
100
Abstract :
Ant colony optimization (ACO) allows fast near optimal solutions to be found. It is useful in industrial environments where computational resources and time are limited. Like several search methods, being trapped in local optima within a search space currently is still nontrivial difficulty for ACO. In order to relieve such a difficulty, this paper focuses on modifying ant colony optimization by performing a couple of operations: i) during runtime, adjusting the parameter Q0, which relates to exploitation and exploration in the local search of ACO. ii) immediately getting away from the trap by reinitializing Q0 in a way of exploration. Modifying ACO by using genetic algorithm (GA) is one of several ways to accomplish i) and ii). Such a modification is called here ACO-GA. As well as GA, particle swarm optimization (PSO) could be applied in the modification of ACO in a similar manner. The latter modification is referred as ACO-PSO. The comparison is made using the NP-hard Traveling Salesperson Problem (TSP) which represents the fundamental principle of such optimizations as cost and time minimization in several industrial applications. The results show that the modifications of ACO surpass over the traditional ACO in terms of accuracy rate and iteration utilization. In the average of the TSP problems applied here, ACO-PSO generates 39.163% better than ACO-GA regarding the iteration consumption. One of the experiments also indicates that reinitializing Q0 may not help improving the solution. The evolution of Q0 is well enough to find the near optimum. In addition, it is also found that for the large number of nodes, the high exploration is required for achieving the minimum fitness or the least total distances.
Keywords :
genetic algorithms; particle swarm optimisation; travelling salesman problems; NP-hard traveling salesperson problem; genetic algorithm; local search; modifying ant colony optimization; particle swarm optimization; Ant colony optimization; Computer industry; Cost function; Evolutionary computation; Genetic algorithms; Minimization; NP-hard problem; Particle swarm optimization; Runtime; Search methods; Ant Colony Optimization; Genetic Algorithms; Particle Swarm Optimization; TSP problems;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Soft Computing in Industrial Applications, 2008. SMCia '08. IEEE Conference on
Conference_Location :
Muroran
Print_ISBN :
978-1-4244-3782-5
Electronic_ISBN :
978-4-9904-2590-6
Type :
conf
DOI :
10.1109/SMCIA.2008.5045942
Filename :
5045942
Link To Document :
بازگشت