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Annealing Ant Colony Optimization with Mutation Operator for Solving TSP

机译:用突变算子来解决TSP的退火蚁群优化

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Ant Colony Optimization (ACO) has been successfully applied to solve a wide range of combinatorial optimization problems such as minimum spanning tree, traveling salesman problem, and quadratic assignment problem. Basic ACO has drawbacks of trapping into local minimum and low convergence rate. Simulated annealing (SA) and mutation operator have the jumping ability and global convergence; and local search has the ability to speed up the convergence. Therefore, this paper proposed a hybrid ACO algorithm integrating the advantages of ACO, SA, mutation operator, and local search procedure to solve the traveling salesman problem. The core of algorithm is based on the ACO. SA and mutation operator were used to increase the ants population diversity from time to time and the local search was used to exploit the current search area efficiently. The comparative experiments, using 24 TSP instances from TSPLIB, show that the proposed algorithm outperformed some well-known algorithms in the literature in terms of solution quality.
机译:蚂蚁殖民地优化(ACO)已成功应用于解决广泛的组合优化问题,如最小生成树,旅行推销员问题和二次分配问题。基本ACO具有陷入局部最小和低收敛速度的缺点。模拟退火(SA)和突变算子具有跳跃能力和全球收敛;本地搜索能够加快收敛。因此,本文提出了一种整合ACO,SA,突变操作员和本地搜索程序的优势的混合ACO算法,以解决旅行推销员问题。算法的核心基于ACO。 SA和突变操作员用于增加蚂蚁群体多样性,并且使用本地搜索来利用当前搜索区域有效利用。使用来自TSPLIB的24个TSP实例的比较实验表明,在溶液质量方面,该算法在文献中表现出一些着名的算法。

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