A hybrid approach using chaotic dynamics and global search algorithms for combinatorial optimization problems
スポンサーリンク
概要
- 論文の詳細を見る
Chaotic dynamics have been effectively applied to improve various heuristic algorithms for combinatorial optimization problems in many studies. Currently, the most used chaotic optimization scheme is to drive heuristic solution search algorithms applicable to large-scale problems by chaotic neurodynamics including the tabu effect of the tabu search. Alternatively, meta-heuristic algorithms are used for combinatorial optimization by combining a neighboring solution search algorithm, such as tabu, gradient, or other search method, with a global search algorithm, such as genetic algorithms (GA), ant colony optimization (ACO), or others. In these hybrid approaches, the ACO has effectively optimized the solution of many benchmark problems in the quadratic assignment problem library. In this paper, we propose a novel hybrid method that combines the effective chaotic search algorithm that has better performance than the tabu search and global search algorithms such as ACO and GA. Our results show that the proposed chaotic hybrid algorithm has better performance than the conventional chaotic search and conventional hybrid algorithms. In addition, we show that chaotic search algorithm combined with ACO has better performance than when combined with GA.
著者
-
Hasegawa Mikio
Dept. of Electrical Engineering, Tokyo University of Science
-
Igeta Hideki
Dept. of Electrical Engineering, Tokyo University of Science
関連論文
- A hybrid approach using chaotic dynamics and global search algorithms for combinatorial optimization problems
- Performance of heuristic methods driven by chaotic dynamics for ATSP and applications to DNA fragment assembly