Parallel Artificial Bee Colony Algorithm for the Traveling Salesman Problem

Artificial Bee Colony Algorithm (ABCA) is a novel swarm intelligence algorithm which a colony of artificial bees cooperate in finding good solutions for numerical optimization problems and combinatorial optimization problems. Traveling Salesman Problem (TSP) is a famous combinatorial optimization problem which has been used in many fields such as network communication, transportation, manufacturing and logistics. However, it requires a considerably large amount of computational time and resources for solving TSP. To dealing with this problem, we present a Parallel Artificial Bee Colony Algorithm (PABCA) in several computers which operation system is Linux based on the Message Passing Interface (MPI). The entire artificial bee colony is divided into several subgroups by PABCA equally. Each subgroup performs an ABCA for TSP on each processor node, respectively. Each sub-colony on every processor node communicates the current best fitness function and parameters of current best fitness function according to ring topological structure during calculation process. Some well-known benchmark problems in TSP are used to evaluate the performance of ABCA and PABCA. Meanwhile, the performance of PABCA is compared with Genetic Algorithm (GA) and Particle Swarm Optimization (PSO). Experimental results show that the PABCA can obtain solutions with equal precision and reduce the time of computation obviously in comparison with serial ABCA. And PABCA have much better performance in contrast with GA and PSO.

[1]  Weixin Ling,et al.  An Adaptive Parameter Control Strategy for Ant Colony Optimization , 2007, 2007 International Conference on Computational Intelligence and Security (CIS 2007).

[2]  Yueguang Li,et al.  An artificial fish swarm algorithm and its application , 2015, ICIS 2015.

[3]  Patrick R. McMullen,et al.  Ant colony optimization techniques for the vehicle routing problem , 2004, Adv. Eng. Informatics.

[4]  Tirimula Rao Benala,et al.  A novel approach to image edge enhancement using Artificial Bee Colony optimization algorithm for hybridized smoothening filters , 2009, 2009 World Congress on Nature & Biologically Inspired Computing (NaBIC).

[5]  D. Karaboga,et al.  Artificial Bee Colony (ABC) Algorithm on Training Artificial Neural Networks , 2007, 2007 IEEE 15th Signal Processing and Communications Applications.

[6]  Xin Guan,et al.  An Improved Artificial Fish Swarm Algorithm and its Application , 2012 .

[7]  Thomas A. Runkler,et al.  Rescheduling and optimization of logistic processes using GA and ACO , 2008, Eng. Appl. Artif. Intell..

[8]  Jiang-wei Zhang,et al.  Improved Enhanced Self-Tentative PSO algorithm for TSP , 2010, 2010 Sixth International Conference on Natural Computation.

[9]  Mingyan Jiang,et al.  Parallel Artificial Fish Swarm Algorithm , 2012 .

[10]  Liu Juan,et al.  Improved Variable Precision Rough Set Model and its Application to Distance Learning , 2007 .

[11]  Mingyan Jiang,et al.  Optimal Tuning of Robust Controller Based on Artificial Bee Colony Algorithm , 2012 .

[12]  Samuel Pierre,et al.  Assigning cells to switches in mobile networks using an ant colony optimization heuristic , 2005, Comput. Commun..

[13]  Chelliah Sriskandarajah,et al.  A review of TSP based approaches for flowshop scheduling , 2006, Eur. J. Oper. Res..