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Ant colony optimization algorithm with mutation mechanism and its applications

机译:具有变异机制的蚁群优化算法及其应用

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Mutated ant colony optimization (MACO) algorithm is proposed by introducing the mutation mechanism to the ACO algorithm, and is applied to the traveling salesman problem (TSP) and multiuser detection in this paper. Ant colony optimization (ACO) algorithms have already successfully been used in combinatorial optimization, however, as the pheromone accumulates, we may not get a global optimum because it can get stuck in a local minimum resulting in a bad steady state. The presented MACO algorithm can enlarge searching range and avoid local minima by randomly changing one or more elements of the local best solution, which is the mutation operation in genetic algorithm. As the mutation operation is simple to implement, the performance of MACO is superior with almost the same computational complexity. MACO is applied to TSP and multiuser detection, and via computer simulations it is shown that MACO has much better performance in solving these two problems than ACO algorithms.
机译:通过将变异机制引入ACO算法中,提出了一种变异蚁群算法(MACO),并将其应用于旅行商问题(TSP)和多用户检测。蚁群优化(ACO)算法已经成功地用于组合优化,但是,随着信息素的累积,我们可能无法获得全局最优值,因为它可能陷入局部最小值,从而导致不良的稳态。提出的MACO算法可以通过随机改变局部最优解的一个或多个元素来扩大搜索范围,避免局部极小,这是遗传算法中的变异操作。由于变异操作易于实现,因此MACO的性能优越,并且计算复杂度几乎相同。 MACO被应用于TSP和多用户检测,并且通过计算机仿真显示,MACO在解决这两个问题上的性能比ACO算法好得多。

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