Copyright © 2001 Elsevier Science B.V. All rights reserved.
Parallel Ant Colonies for the quadratic assignment problem
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
- 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; email: talbi@lifl.fr






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