模糊集成工艺规划与调度问题的数学建模与多温暖协同优化算法

IF 5.2 1区 计算机科学 Q1 COMPUTER SCIENCE, INFORMATION SYSTEMS
Qihao Liu;Cuiyu Wang;Xinyu Li;Liang Gao
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引用次数: 0

摘要

在制造业中同时考虑工艺规划和车间调度,可以充分利用它们的互补性,从而提高工艺路线的合理性,提高生产的质量和效率。因此,集成过程计划与调度(IPPS)的研究成为当前生产领域的一个热点。然而,在进行这种集成优化时,处理时间的不确定性是一个不可忽视的现实关键点。因此,本文研究了一个模糊IPPS(FIPS)问题,以最小化最大模糊完成时间。与传统的IPPS问题相比,FIPS考虑了不确定生产环境中的模糊过程时间,更具实际性和现实性。然而,由于复杂的模糊计算规则,很难解决FIPS问题。为了解决这个问题,本文基于过程网络图建立了一个新的模糊数学模型,并提出了一种集成编码的多群协同优化算法(MSCOA)来改进优化。不同的蜂群向不同的方向进化,并在一定数量的迭代中进行协作。此外,根据三角模糊数引入了关键路径搜索方法,允许规则的计算,以增强MSCOA的局部搜索能力。从著名的Kim基准进行了数值实验,以测试所提出的MSCOA的性能。与其他竞争算法相比,MSCOA的结果显示出显著的优势,从而证明了它在解决FIPS问题方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mathematical Modeling and a Multiswarm Collaborative Optimization Algorithm for Fuzzy Integrated Process Planning and Scheduling Problem
Considering both process planning and shop scheduling in manufacturing can fully utilize their complementarities, resulting in improved rationality of process routes and high-quality and efficient production. Hence, the study of Integrated Process Planning and Scheduling (IPPS) has become a hot topic in the current production field. However, when performing this integrated optimization, the uncertainty of processing time is a realistic key point that cannot be neglected. Thus, this paper investigates a Fuzzy IPPS (FIPPS) problem to minimize the maximum fuzzy completion time. Compared with the conventional IPPS problem, FIPPS considers the fuzzy process time in the uncertain production environment, which is more practical and realistic. However, it is difficult to solve the FIPPS problem due to the complicated fuzzy calculating rules. To solve this problem, this paper formulates a novel fuzzy mathematical model based on the process network graph and proposes a MultiSwarm Collaborative Optimization Algorithm (MSCOA) with an integrated encoding method to improve the optimization. Different swarms evolve in various directions and collaborate in a certain number of iterations. Moreover, the critical path searching method is introduced according to the triangular fuzzy number, allowing for the calculation of rules to enhance the local searching ability of MSCOA. The numerical experiments extended from the well-known Kim benchmark are conducted to test the performance of the proposed MSCOA. Compared with other competitive algorithms, the results obtained by MSCOA show significant advantages, thus proving its effectiveness in solving the FIPPS problem.
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来源期刊
CiteScore
12.10
自引率
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发文量
2340
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