设施选址问题的合作自适应元启发式算法

D. Meignan, Jean-Charles Créput, A. Koukam
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引用次数: 5

摘要

本文提出了一种基于联盟的元启发式算法(CBM)来解决无容量设施选址问题。CBM是一种基于群体的元启发式算法,其中个体封装单个解决方案并被视为代理。与传统的进化算法相比,这些智能体具有额外的决策、学习和合作能力。我们的方法也是一个案例研究,展示了来自多智能体系统领域的概念如何有助于设计新的元启发式。所解决的问题是一个众所周知的组合优化问题,即无能力设施选址问题,该问题包括确定某些设施必须设置的地点,以最小成本满足客户集的要求。进行了计算实验来测试学习机制的性能,并将我们的方法与几种现有的元启发式方法进行比较。结果表明,CBM在灵活性和模块化方面具有强大的启发式方法的竞争优势。
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A cooperative and self-adaptive metaheuristic for the facility location problem
This paper presents a coalition-based metaheuristic (CBM) to solve the uncapacitated facility location problem. CBM is a population-based metaheuristic where individuals encapsulate a single solution and are considered as agents. In comparison to classical evolutionary algorithms, these agents have additional capacities of decision, learning and cooperation. Our approach is also a case study to present how concepts from multiagent systems' domain may contribute to the design of new metaheuristics. The tackled problem is a well-known combinatorial optimization problem, namely the uncapacitated facility location problem, that consists in determining the sites in which some facilities must be set up to satisfy the requirements of a client set at minimum cost. A computational experiment is conducted to test the performance of learning mechanisms and to compare our approach with several existing metaheuristics. The results showed that CBM is competitive with powerful heuristics approaches and presents several advantages in terms of flexibility and modularity.
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