A Novel Cooperative Multi-Stage Hyper-Heuristic for Combination Optimization Problems

Fuqing Zhao;Shilu Di;Jie Cao;Jianxin Tang;Jonrinaldi
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引用次数: 50

Abstract

A hyper-heuristic algorithm is a general solution framework that adaptively selects the optimizer to address complex problems. A classical hyper-heuristic framework consists of two levels, including the high-level heuristic and a set of low-level heuristics. The low-level heuristics to be used in the optimization process are chosen by the high-level tactics in the hyper-heuristic. In this study, a Cooperative Multi-Stage Hyper-Heuristic (CMS-HH) algorithm is proposed to address certain combinatorial optimization problems. In the CMS-HH, a genetic algorithm is introduced to perturb the initial solution to increase the diversity of the solution. In the search phase, an online learning mechanism based on the multi-armed bandits and relay hybridization technology are proposed to improve the quality of the solution. In addition, a multi-point search is introduced to cooperatively search with a single-point search when the state of the solution does not change in continuous time. The performance of the CMS-HH algorithm is assessed in six specific combinatorial optimization problems, including Boolean satisfiability problems, one-dimensional packing problems, permutation flow-shop scheduling problems, personnel scheduling problems, traveling salesman problems, and vehicle routing problems. The experimental results demonstrate the efficiency and significance of the proposed CMS-HH algorithm.
组合优化问题的一种新型协同多阶段超启发式算法
超启发式算法是一种自适应选择优化器来解决复杂问题的通解框架。经典的超启发式框架由两个层次组成,包括高级启发式和一组低级启发式。优化过程中使用的低级启发式由超启发式中的高级策略选择。针对组合优化问题,提出了一种协同多阶段超启发式(CMS-HH)算法。在CMS-HH算法中,引入遗传算法对初始解进行扰动,以增加解的多样性。在搜索阶段,提出了一种基于多臂强盗和中继杂交技术的在线学习机制,以提高解的质量。此外,当解的状态在连续时间内不发生变化时,引入多点搜索来与单点搜索协同搜索。CMS-HH算法的性能在六个具体的组合优化问题中进行了评估,包括布尔可满足性问题、一维包装问题、置换流车间调度问题、人员调度问题、旅行商问题和车辆路线问题。实验结果证明了所提出的CMS-HH算法的有效性和意义。
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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CiteScore
7.80
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