Abstract

As the amount and scale of cities in Traveling Salesman Problem (TSP) rise, the algorithmic complexity is exponentially increasing. The difficulty is how to design a suitable algorithm to solve large-scale TSPs. A Cooperative Co-evolutionary Ant Colony Optimization algorithm (CC-ACO) is proposed in this paper based on the concept of divide and conquer. The Iterative Self-Organizing Data Analysis (ISODATA) clustering algorithm tackles the problem by dividing it into a set of smaller and simpler sub-components and the ACO algorithms are designed for optimizing them separately. Numerical tests are then conducted to investigate algorithms, analyze results, and compare performances. The simulation findings show a significant efficiency of the suggested algorithm on the TSPLIB data set. Finally, we extend the large-scale TSP problem to the field of art and use the presented algorithm to optimize the path of discrete pixels in the picture, showing the artistic painting of the TSP art project.

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