混合粒子群算法在柔性作业车间问题中的应用

Diego L. Cavalca, R. Fernandes
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引用次数: 0

摘要

在全球化的世界中,市场竞争激烈,公司正在寻找以可持续的方式降低成本的方法,优化生产线以增加其经济优势。因此,出现了几项旨在对生产部门进行建模的研究,其中有可能突出“灵活工作车间”。该模型旨在有效地将待处理的任务分配到一组可用的机器中,以便在考虑几个生产约束的情况下,在最短的时间内完成这些任务。该模型的解决涉及复杂的组合计算,这允许为此目的开发计算工具,支持决策过程。因此,本研究提出了一种基于粒子群优化和模拟退火算法的混合计算方案,以利用这些方法的内在优势来调度工业生产。结果表明,本文提出的混合算法有效地解决了部分柔性场景下的生产调度问题,克服了文献中针对这类问题的一些基准测试中存在的生产完成时间最小化问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Hybrid Particle Swarm Algorithm Applied to Flexible Job-Shop Problem
In the globalized world, with highly competitive markets, companies are looking for ways to reduce costs in a sustainable manner, optimizing their production lines to increase their economic advantages. Thus, several studies appeared with the objective of modeling the productive sectors, among which it is possible to highlight the Flexible Job-Shop. This model aims to efficiently organize the distribution of tasks to be processed in a set of available machines so that the complete execution of these tasks takes the shortest possible time considering several productive constraints. The resolution of this model involves complex combinatorial calculations, which allow the development of computational tools for this purpose, supporting the decision-making process. Therefore, this work presents a hybrid computational proposal based on Particle Swarm Optimization and Simulated Annealing algorithms to use the intrinsic advantages of these approaches to scheduling industrial productions. The results show that the proposed hybrid algorithm efficiently solves the production scheduling problem in a partially flexible scenario, overcoming the minimization of the production completeness time present in some benchmarks found in the literature for this class of problems.
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