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Modified Ant Colony Optimization Algorithm with Uniform Mutation using Self-Adaptive Approach for Travelling Salesman Problem

机译:利用自适应方法进行均匀突变的改进蚁群优化算法

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Ant Colony Optimization (ACO) algorithm is a novel meta-heuristic algorithm that has been widely used for different combinational optimization problem and inspired by the foraging behavior of real ant colonies. It has strong robustness and easy to combine with other methods in optimization. In this paper, an efficient modified ant colony optimization algorithm with uniform mutation using self-adaptive approach for the travelling salesman problem (TSP) has been proposed. Here mutation operator is used for enhancing the algorithm escape from local optima. The algorithm converges to the final optimal solution, by accumulating most effective sub-solutions. Experimental results show that the proposed algorithm is better than the algorithm previously proposed.
机译:蚁群优化(ACO)算法是一种新型的元启发式算法,已广泛用于不同的组合优化问题,并受到真实蚁群的觅食行为的启发。它具有强大的稳健性,易于优化的其他方法结合。本文已经提出了一种利用自适应突变的有效修改的蚁群优化算法,用于使用自适应方法进行行驶推销人员问题(TSP)。这里突变运算符用于增强算法从本地OptimA逃生。该算法通过累积最有效的子解决方案收敛到最终最佳解决方案。实验结果表明,该算法优于先前提出的算法。

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