基于增强型人工蜂群算法的一致子批双目标批流混合车间调度

Benxue Lu;Kaizhou Gao;Peiyong Duan;Adam Slowik
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引用次数: 0

摘要

本研究解决了考虑一致子批(Bi-HFSP_CS)的双目标混合流水车间调度问题。目标是最小化完工时间和总能耗。首先对Bi-HFSP_CS进行形式化,然后建立数学模型。其次,针对Bi-HFSP_CS问题,提出了改进的人工蜂群(ABC)算法。然后,使用14个局部搜索算子来搜索更好的解决方案。开发了两种不同的o学习策略嵌入ABC算法中,以指导整个迭代过程中算子的选择。最后,通过比较ABC算法及其三种变体,以及三种有效算法在解决35个不同问题的95个实例中对所提出策略的有效性进行了评估。实验结果和分析表明,结合o学习的增强型ABC算法(QABC1)在解决相关问题上表现最佳。本研究提出了一种解决Bi-HFSP_CS的新方法,并说明了其有效性和优越的竞争优势,为相关领域的探索和研究提供了有益的视角。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Scheduling Bi-Objective Lot-Streaming Hybrid Flow Shops with Consistent Sublots via an Enhanced Artificial Bee Colony Algorithm
This work addresses bi-objective hybrid flow shop scheduling problems considering consistent sublots (Bi-HFSP_CS). The objectives are to minimize the makespan and total energy consumption. First, the Bi-HFSP_CS is formalized, followed by the establishment of a mathematical model. Second, enhanced version of the artificial bee colony (ABC) algorithms is proposed for tackling the Bi-HFSP_CS. Then, fourteen local search operators are employed to search for better solutions. Two different O-learning tactics are developed to embed into the ABC algorithm to guide the selection of operators throughout the iteration process. Finally, the proposed tactics are assessed for their efficacy through a comparison of the ABC algorithm, its three variants, and three effective algorithms in resolving 95 instances of 35 different problems. The experimental results and analysis showcase that the enhanced ABC algorithm combined with O-learning (QABC1) demonstrates as the top performer for solving concerned problems. This study introduces a novel approach to solve the Bi-HFSP_CS and illustrates its efficacy and superior competitive strength, offering beneficial perspectives for exploration and research in relevant domains.
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CiteScore
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