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Adaptive Multi-objective Local Search Algorithms for the Permutation Flowshop Scheduling Problem

机译:置换流水车间调度问题的自适应多目标局部搜索算法

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Automatic algorithm configuration (AAC) is an increasingly critical factor in the design of efficient metaheuristics. AAC was previously successfully applied to multi-objective local search (MOLS) algorithms using offline tools. However, offline approaches are usually very expensive, draw general recommendations regarding algorithm design for a given set of instances, and does generally not allow per-instance adaptation. Online techniques for automatic algorithm control are usually applied to single-objective evolutionary algorithms. In this work we investigate the impact of including control mechanisms to MOLS algorithms on a classical bi-objective permutation flowshop scheduling problem (PFSP), and demonstrate how even simple control mechanisms can complement traditional offline configuration techniques.
机译:自动算法配置(AAC)是高效元启发式算法设计中越来越重要的因素。 AAC以前已成功使用脱机工具应用于多目标本地搜索(MOLS)算法。但是,脱机方法通常非常昂贵,需要针对给定实例集就算法设计提出一般建议,并且通常不允许按实例进行调整。用于自动算法控制的在线技术通常应用于单目标进化算法。在这项工作中,我们研究了将控制机制包括在经典双目标置换流水车间调度问题(PFSP)上对MOLS算法的影响,并展示了即使简单的控制机制也可以补充传统的离线配置技术。

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