Simulated annealing ant colony algorithm for QAP

Jingwei Zhu, Ting Rui, Husheng Fang, Jinlin Zhang, Ming Liao
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引用次数: 6

Abstract

A simulated annealing ant colony algorithm(ASAC) is presented to tackle the quadratic assignment problem (QAP). The simulated annealing method is introduced to the ant colony algorithm. The temperature which declines with the iterations is set in the algorithm. After each round of searching, the solution set got by the colony is treated as the candidate set. Base on the simulated annealing method, the solution in the candidate set is chosen to join the update set with possibility which determined by the temperature. The update set is used to update the trail information matrix. And also the current best solution is used to enhance the tail information. The pheromone trails matrix is reset when the algorithm is in the stagnant state. The computer experiments demonstrate this algorithm has high calculation stability and converging speed.
QAP的模拟退火蚁群算法
提出一种求解二次分配问题的模拟退火蚁群算法(ASAC)。将模拟退火方法引入到蚁群算法中。在算法中设置随迭代次数下降的温度。每轮搜索后,将蚁群得到的解集作为候选集。基于模拟退火方法,选取候选集中的解加入由温度决定可能性的更新集。更新集用于更新轨迹信息矩阵。并利用当前最优解对尾部信息进行增强。当算法处于停滞状态时,信息素轨迹矩阵被重置。计算机实验表明,该算法具有较高的计算稳定性和收敛速度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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