替代性信息素放置策略——对蚁群算法的改进

Kemal Lutvica, S. Konjicija
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引用次数: 3

摘要

本文对蚁群优化(ACO)的研究现状进行了综述。在此基础上,引入了蚁群算法的信息素布局策略。本文对新引入的策略进行了实现,在一个模型问题上进行了测试,并与经典方法进行了比较。介绍了一种参数化问题空间生成器。生成器生成的图形允许蚂蚁沿着这些图形在Y轴上自由移动,但每次移动都要将X轴上的当前值增加1。通过这种方法,模拟了一个以从任意起始节点到任意结束节点的路径最小化为目标的动态决策优化问题。在蚁群算法的基础上,采用经典的费洛蒙铺设法和改进的费洛蒙铺设法对生成的问题进行了求解。得到的结果明确地表明,所引入的修改有可能作为一种改进蚁群算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Alternative pheromone laying strategy — An improvement for the ACO algorithm
This paper gives a brief overview of the current state in the ant colony optimization (ACO) field of study. Furthermore, it introduces an alternative pheromone laying strategy for the ACO algorithm. In the paper, the newly introduced strategy is implemented, tested on a model problem and compared with the classical approach. A parameterized problem space generator has been introduced. The generator generates graphs along which ants are allowed to move freely on the Y axis, but constrained to increment the current value on the X axis by one with each move. In this way, a dynamic decision making optimization problem with the goal of minimizing the path from an arbitrary starting node to an arbitrary finish node has been simulated. Using the ACO algorithm, the generated problems are being solved with the classical pheromone laying approach and the modified approach, introduced in this paper. The obtained results unequivocally indicate that the introduced modification has the potential to serve as an improvement for the ACO algorithm in general.
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