基于成本的混合流水车间调度,采用改进的tiki-taka算法

IF 4 Q2 ENGINEERING, INDUSTRIAL Journal of Industrial and Production Engineering Pub Date : 2023-11-09 DOI:10.1080/21681015.2023.2276108
Mohd Fadzil Faisae Ab Rashid, Muhammad Ammar Nik Mu’tasim
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引用次数: 0

摘要

摘要成本是利润驱动型组织决策的首要因素。然而,混合流水车间调度(HFSS)的研究很少将成本作为优化目标。现有的研究主要集中在与机器使用有关的电力成本上。本文介绍了一个综合的基于成本的HFSS模型,包括电力、人工、维护和处罚成本。其次,对Tiki-Taka算法(TTA)进行改进,通过提高搜索能力来优化问题。基于成本的HFSS模型和TTA算法已通过基准和案例研究问题进行了测试。结果表明,TTA始终优于其他算法。它提供了最佳的平均适应度和更好的解决方案分布。在工业环境中,与其他方法相比,TTA能够将成本降低2.8%至12.0%。这种基于成本的整体HFSS模型使生产计划人员能够做出更明智的决策。此外,改进的TTA在各种组合优化领域具有更广泛的适用性。关键词:混合流程车间调度,生产成本,taka算法,成本优化。作者感谢马来西亚彭亨大学在UMP拨款RDU223017下为本研究提供资金。披露声明作者未报告潜在的利益冲突。数据可用性声明本研究过程中产生和/或分析的数据集如下:(i)计算实验目的:Carlier, J., & Neron, E.(2000)。求解多处理机流水车间的一种精确方法。RAIRO-Oper。Res., 34(1), 1 - 25。https://doi.org/10.1051/ro:2000103.(ii)实际应用数据:可向作者索取数据。补充材料本文的补充数据可在线访问https://doi.org/10.1080/21681015.2023.2276108Additional information。本研究得到了马来西亚彭亨大学的支持[RDU223017]。关于投稿人mohd Fadzil Faisae Ab rashid博士的说明。Mohd Fadzil Faisae Ab. Rashid现任马来西亚彭亨大学机械与汽车工程技术学院副教授。他于2003年获得马来西亚科技大学机械(工业)学士学位,2007年获得马来西亚彭亨大学工程(制造)硕士学位,并于2013年获得英国克兰菲尔德大学制造系统优化博士学位。他的研究兴趣是工程优化,特别关注制造系统、元启发式和离散事件仿真技术。穆罕默德·阿马尔·尼克·穆塔西姆先生。Muhammad Ammar Nik Mu 'tasim是马来西亚彭亨大学机械与汽车工程技术学院的讲师。他拥有马来西亚彭亨大学机械工程学士学位、马来西亚科技大学机械工程硕士学位和美国纽约州立大学布法罗分校理学硕士学位。他的研究重点是制造优化、计算流体动力学(CFD)和能源系统。凭借对创新工程解决方案的热情,Mu 'tasim先生继续为机械和汽车工程领域做出重大贡献。
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Cost-based hybrid flow shop scheduling with uniform machine optimization using an improved tiki-taka algorithm
ABSTRACTCost is the foremost factor in decision-making for profit-driven organizations. However, hybrid flow shop scheduling (HFSS) research rarely prioritizes cost as its optimization objective. Existing studies primarily focus on electricity costs linked to machine utilization. This paper introduces a comprehensive cost-based HFSS model, encompassing electricity, labor, maintenance, and penalty costs. Next, the Tiki-Taka Algorithm (TTA) is improved by increasing the exploration capability to optimize the problem. The cost-based HFSS model and TTA algorithm have been tested using benchmark and case study problems. The results indicated that the TTA consistently outperforms other algorithms. It delivers the best mean fitness and better solution distribution. In industrial contexts, the TTA able to reduces costs by 2.8% to 12.0% compared to other approaches. This holistic cost-based HFSS model empowers production planners to make more informed decisions. Furthermore, the improved TTA shows promise for broader applicability in various combinatorial optimization domains.KEYWORDS: Hybrid flow shop schedulingproduction costtiki-taka algorithmcost optimization AcknowledgmentsThe authors would like to acknowledge Universiti Malaysia Pahang for funding this research under the UMP Grant RDU223017.Disclosure statementNo potential conflict of interest was reported by the authors.Data availability statementThe datasets generated during and/or analyzed during the current study are available as follow:(i) Computational experiment purpose: Carlier, J., & Neron, E. (2000). An Exact Method for Solving the Multi-Processor Flow-Shop. RAIRO-Oper. Res., 34(1), 1–25. https://doi.org/10.1051/ro:2000103.(ii) Practical application data: Data available on request from the authors.Supplemental materialSupplemental data for this article can be accessed online at https://doi.org/10.1080/21681015.2023.2276108Additional informationFundingThe work was supported by the Universiti Malaysia Pahang [RDU223017].Notes on contributorsMohd Fadzil Faisae Ab RashidDr. Mohd Fadzil Faisae Ab. Rashid is currently an Associate Professor at the Faculty of Mechanical & Automotive Engineering Technology, University Malaysia Pahang. He received a Bachelor’s Degree in Mechanical (Industry) from Universiti Teknologi Malaysia in 2003, a Master of Engineering (Manufacturing) from Universiti Malaysia Pahang in 2007, and a Ph.D. in Manufacturing System Optimization from Cranfield University, the United Kingdom in 2013. His research interests are in engineering optimization, particularly focusing on manufacturing systems, metaheuristics, and discrete event simulation techniques.Muhammad Ammar Nik Mu’tasimMr. Muhammad Ammar Nik Mu’tasim is a lecturer at the Faculty of Mechanical & Automotive Engineering Technology, University Malaysia Pahang. He holds a Bachelor's degree in Mechanical Engineering from Universiti Malaysia Pahang, as well as a Master of Engineering in Mechanical Engineering from University Teknologi Malaysia and a Master of Science from SUNY Buffalo, New York, USA. His research focuses on manufacturing optimization, Computational Fluid Dynamics (CFD), and energy systems. With his passion for innovative engineering solutions, Mr. Mu’tasim continues to contribute significantly to the field of mechanical and automotive engineering.
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