2023
DOI: 10.1049/2023/9915769
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A Fast Fully Parallel Ant Colony Optimization Algorithm Based on CUDA for Solving TSP

Zhi Zeng,
Yuxing Cai,
Kwok L. Chung
et al.

Abstract: In view of the known problems of parameter sensitivity, local optimum, and slow convergence in the ant colony optimization (ACO), we aim to improve the performance of the ACO. To solve the traveling salesman problem (TSP) quickly with accurate results, we propose a fully parallel ACO (FP-ACO). Based on the max–min ant system (MMAS), we initiate a compensation mechanism for pheromone to constrain its value, guarantee the correctness of results and avoid a local optimum, and further enhance the convergence abili… Show more

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