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Leveraging constraint-based approaches for multi-objective flexible flow-shop scheduling with energy costs

机译:利用基于约束的方法进行具有能源成本的多目标灵活流水车间调度

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摘要

In this paper,we tackle the Energy-Flexible FlowShop Scheduling (EnFFS) problem, a multi-objective optimisation problem focused on the minimisation of both the overall completion time and the global energy consumption of the solutions. The tackled problem is an extension of the Flexible Flow-Shop Scheduling problem where each activity in a job has a set of possible execution modes with different trade-off between energy consumed and processing time. Moreover, global energy consumption may also depend on the possibility to switch-off the machines during the idle periods. The goal of this work is to widen the knowledge about performance capabilities, in particular the ability of efficiently finding high quality approximations of the solution Pareto front. To this aim, we explore the development of innovative meta-heuristic algorithms for solving the proposed multi-objective scheduling problem. In particular, we consider a stochastic local search (SLS) algorithms, introducing a Multi-Objective Large Neighbourhood Search (MO-LNS) framework in line with the large neighbourhood search approaches proposed in literature, and compare it with a state-of-the-art Constraint Programming solver. We present some results obtained against both a EnFFS benchmark recently proposed in the literature, and a set of new challenging instances of increasing size.
机译:在本文中,我们解决了能量灵活的FlowShop调度问题(EnFFS),这是一个多目标优化问题,着重于使解决方案的整体完成时间和全球能耗最小化。解决的问题是“灵活流水车间调度”问题的扩展,其中作业中的每个活动都有一组可能的执行模式,在能耗和处理时间之间进行了折衷。此外,全球能源消耗还可能取决于在闲置期间关闭机器的可能性。这项工作的目的是扩展有关性能功能的知识,尤其是有效找到解决方案Pareto front的高质量近似值的能力。为此,我们探索了用于解决所提出的多目标调度问题的创新元启发式算法的开发。特别是,我们考虑一种随机局部搜索(SLS)算法,根据文献中提出的大邻域搜索方法引入多目标大邻域搜索(MO-LNS)框架,并将其与最新状态进行比较约束编程求解器。我们介绍了根据文献中最近提出的EnFFS基准以及一系列新的具有挑战性的增加规模实例获得的结果。

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