蚁群算法中探索与开发平衡的控制

Ayad Mohammed Jabbar
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引用次数: 8

摘要

蚁群优化算法是一种受真实蚁群觅食行为启发的元启发式算法。该算法是一种基于群体的解决方案,用于不同的优化问题,如分类、图像处理、聚类等。本文从改进该算法求解旅行推销员问题的结果方面进行了阐述。取得有价值成果的关键是由于勘探和开发这两个重要组成部分。平衡这两个部分是在蚁群算法中控制搜索的基础。本文提出对主要的概率方法进行改进,以克服探测问题的缺点,在高维空间中产生全局最优结果。对6种蚁群优化算法进行了实验,结果表明该算法在最短路径上得到了高质量的优化结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Controlling the Balance of Exploration and Exploitation in ACO Algorithm
Ant colony optimization is a meta-heuristic algorithm inspired by the foraging behavior of real ant colony. The algorithm is a population-based solution employed in different optimization problems such as classification, image processing, clustering, and so on. This paper sheds the light on the side of improving the results of traveling salesman problem produced by the algorithm. The key success that produces the valuable results is due to the two important components of exploration and exploitation. Balancing both components is the foundation of controlling search within the ACO. This paper proposes to modify the main probabilistic method to overcome the drawbacks of the exploration problem and produces global optimal results in high dimensional space. Experiments on six variant of ant colony optimization indicate that the proposed work produces high-quality results in terms of shortest route.
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