鲁棒置换流水车间调度的混合进化策略

IF 2.8 3区 工程技术 Q2 ENGINEERING, MANUFACTURING
B. Khurshid, S. Maqsood, M. Omair, Rashid Nawaz, R. Akhtar
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引用次数: 5

摘要

本文提出了一种鲁棒调度方法来处理m-机器置换流水车间问题的不确定性。一个健全的计划确保预期的完成时间总是小于最大完工时间。为了利用进化策略的全局搜索能力和禁忌搜索的局部搜索能力,提出了一种将改进进化策略与禁忌搜索相结合的混合进化策略。首先使用ES生成鲁棒调度,然后使用TS优化解决方案,以最大限度地利用和探索解决方案空间。为了最大限度地利用ES,使用了(1+9)繁殖算子和双交换突变。此外,还使用可变突变率对结果进行微调。在TS中,禁忌列表的长度是固定的,并且为了节省计算时间,使用了下界。混合算法在or库中的Carlier和Reeves基准问题上进行了测试。将所获得的结果与文献中其他著名的技术进行了比较,结果表明HES比其他技术性能更好,并且在预期完成时间小于makespan的概率上提供了肯定百分比的增加。©2020 CPE,马里博尔大学。版权所有。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid evolution strategy approach for robust permutation flowshop scheduling
In this paper, a robust schedule has been proposed to deal with uncertainities for m-machines permutation flow shop problems. A robust schedule ensures that the expected finish time is always less than the makespan. To use the global search ability of the evolution strategy (ES) and local search ability of Tabu Search (TS), a hybrid evolution strategy (HES) is proposed by combining Improved ES with TS to generate the robust schedules. The robust schedule is first generated using ES and then the solution is optimized using TS for maximum exploitation and exploration of the solution space. For maximum exploitation in ES, (1+9) reproduction operator and double swap mutation is used. Also variable mutation rate is used for fine tuning of the results. In TS, the length of Tabu list is fixed, also lower bound is used to save computational time. The hybrid algorithm is tested on Carlier and Reeves benchmark problems taken from the OR-library. Achieved results are compared with other famous techniques available in the literature, and the results show that HES performs better than other techniques and provides an affirmative percentage increase in the probability that the expected finish time is less than the makespan. © 2020 CPE, University of Maribor. All rights reserved.
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来源期刊
Advances in Production Engineering & Management
Advances in Production Engineering & Management ENGINEERING, MANUFACTURINGMATERIALS SCIENC-MATERIALS SCIENCE, MULTIDISCIPLINARY
CiteScore
5.90
自引率
22.20%
发文量
19
期刊介绍: Advances in Production Engineering & Management (APEM journal) is an interdisciplinary international academic journal published quarterly. The main goal of the APEM journal is to present original, high quality, theoretical and application-oriented research developments in all areas of production engineering and production management to a broad audience of academics and practitioners. In order to bridge the gap between theory and practice, applications based on advanced theory and case studies are particularly welcome. For theoretical papers, their originality and research contributions are the main factors in the evaluation process. General approaches, formalisms, algorithms or techniques should be illustrated with significant applications that demonstrate their applicability to real-world problems. Please note the APEM journal is not intended especially for studying problems in the finance, economics, business, and bank sectors even though the methodology in the paper is quality/project management oriented. Therefore, the papers should include a substantial level of engineering issues in the field of manufacturing engineering.
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