基于协作群体的多场景最大最小背包问题求解方法

Méziane Aïder, M. Hifi, Khadidja Latram
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引用次数: 0

摘要

本文研究了多场景下的最大最小背包问题,设计了一种基于协作种群的方法来近似求解该问题。它的实例由一个固定容量的背包、一组物品(具有重量和利润)以及与总体物品相关的可能场景表示。它的目标是选择一个物品的子集,这些物品的总重量填满背包,并且根据整个场景,其总利润在最坏情况下最大。设计的方法基于灰狼优化器,采用一系列局部搜索来突出方法的性能。它从与狼相关的位置的参考集开始,该参考集提供了一个随机贪婪过程。为了提高标准版的行为,采用了一系列的探索策略。其次,为了避免过早收敛,添加了跳跃的掉落和重建策略来开发新的未探索的子空间。最后,在文献的基准实例上对该方法的行为进行计算分析,并将其提供的结果与文献中可用的最佳结果进行比较。取得了令人鼓舞的成果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Cooperative Population-Based Method for Solving the Max-Min Knapsack Problem with Multi-scenarios
In this paper, we study the max-min knapsack problem with multi-scenarios, where a cooperative population based method is designed for approximately solving it. Its instance is represented by a knapsack of fixed capacity, a set of items (with weights and profits) and possible scenarios related to overall items. Its goal is to select a subset of items whose total weight fills the knapsack, and whose total profit is maximized in the worst scenario according the whole scenarios. The designed method is based upon the grey wolf optimizer, where a series of local searches are employed for highlighting the performance of the method. It starts with a reference set of positions related to the wolves, which is provided with a random greedy procedure. In order to enhance the behavior of the standard version, a series of exploring strategies is employed. Next, in order to avoid premature convergence, a drop and rebuild strategy is added hopping to exploit new unexplored subspaces. Finally, the behavior of the method is computationally analyzed on benchmark instances of the literature, where its provided results are compared to the best results available in the literature. Encouraging results have been obtained.
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