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首页> 外文期刊>International journal of knowledge-based and intelligent engineering systems >Pheromone trail initialization with local optimal solutions in ant colony optimization
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Pheromone trail initialization with local optimal solutions in ant colony optimization

机译:信息素踪迹初始化与蚁群优化中的局部最优解

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摘要

This paper presents a method to improve the search rate of Max-Min Ant System for the traveling salesman problem. The proposed method gives deviations from the initial pheromone trails by using a set of local optimal solutions calculated in advance. This method aims to build a near optimal solution at high speed by combining the candidate partial solutions contained in the set. Max-Min Ant System has demonstrated impressive performance, but the search rate is relatively low. Considering the generic purpose of stochastic search algorithms, which is to find near optimal solutions subject to time constraints, the search rate is important as well as the solution quality. The experimental results using benchmark problems with 51 to 1002 cities suggested that the proposed method has a faster search rate than Max-Min Ant System; the additional computation cost for calculating local optimal solutions is negligibly small.
机译:本文提出了一种改进Max-Min Ant系统对旅行商问题的搜索率的方法。所提出的方法通过使用一组预先计算的局部最优解给出了与初始信息素轨迹的偏差。该方法旨在通过组合集合中包含的候选局部解来高速构建接近最优的解。 Max-Min Ant System已显示出令人印象深刻的性能,但是搜索率相对较低。考虑到随机搜索算法的通用目的,即找到受时间约束的最佳解,搜索率以及解决方案的质量都很重要。使用51到1002个城市的基准问题进行的实验结果表明,该方法比Max-Min Ant System的搜索速度更快;计算局部最优解的额外计算成本很小。

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