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doi:10.1016/S0167-739X(99)00124-7    
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Copyright © 2001 Elsevier Science B.V. All rights reserved.

Parallel Ant Colonies for the quadratic assignment problem

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E. -G. TalbiCorresponding Author Contact Information, E-mail The Corresponding Author, a, O. Rouxb, C. FonluptE-mail The Corresponding Author, b and D. Robillardb

a LIFL URA-369 CNRS/Université de Lille 1, Bat.M3 59655, Villeneuve d’Ascq Cedex, France

b LIL, Université du Littoral, BP 719, Calais, France


Available online 8 January 2001.

Abstract

Ant Colonies optimization take inspiration from the behavior of real ant colonies to solve optimization problems. This paper presents a parallel model for ant colonies to solve the quadratic assignment problem (QAP). The cooperation between simulated ants is provided by a pheromone matrix that plays the role of a global memory. The exploration of the search space is guided by the evolution of pheromones levels, while exploitation has been boosted by a tabu local search heuristic. Special care has also been taken in the design of a diversification phase, based on a frequency matrix. We give results that have been obtained on benchmarks from the QAP library. We show that they compare favorably with other algorithms dedicated for the QAP.

Author Keywords: Metaheuristics; Ant colonies; Tabu search; Parallel algorithm; Quadratic assignment problem; Combinatorial optimization

Article Outline

1. Introduction
2. Ant colonies for combinatorial optimization
3. Ant colonies for the quadratic assignment problem
3.1. The quadratic assignment problem
3.2. Application to the quadratic assignment problem
3.2.1. Initialization
3.2.2. Solution construction
3.2.3. Local search
3.2.4. Update of the pheromone matrix
3.2.5. Diversification
4. Parallel ant colonies
5. Experimental results
5.1. Comparison with HAS-QAP
5.2. Impact of the cooperation between agents
5.3. Comparison with other algorithms
6. Conclusion and future work
References
Vitae




Corresponding Author Contact Information Corresponding author; email: talbi@lifl.fr


 
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