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Stochastic multi-objective modelling and optimization of an energy-conscious distributed permutation flow shop scheduling problem with the total tardiness constraint

机译:总时滞约束的能量敏感型分布式置换流水车间调度问题的随机多目标建模与优化

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Recent years have seen a great deal of attention in energy conservation for production and manufacturing activities, particularly for energy-intensive industries. One of the useful strategies in reducing unnecessary energy consumption is to schedule these activities by considering both energy driven and time-oriented criteria. This scheduling model can make an interaction between the energy consumption and the production cost to realize an efficient and sustainable production process. In this regard, the customers' expectation for due date is another important factor for decision-makers to control the delay in delivery. Making these decisions is extremely difficult due to uncertain circumstances to extract the accurate information of facilities and jobs in advance. Aforementioned issues in the context of urgent need for energy-conservation as well as the advent of globalized and multi-factory manufacture motivate our attempts to address a stochastic multi-objective distributed permutation flow shop scheduling problem by considering total tardiness constraint via minimizing the makespan and the total energy consumption. Due to the uncertainty of the proposed problem, a chance-constrain approach is used to describe decision-makers' awareness for the total tardiness, and accordingly, a chance-constrained programming model is utilized to formulate this problem. As a complicated optimization problem, a new multi-objective brain storm optimization algorithm incorporating stochastic simulation approach is specifically designed to better solve problem. A comparative study based on a set of benchmark test problems as well as two classical and popular algorithms is provided. The experimental results demonstrate that the proposed algorithm shows a very competitive performance in dealing with the investigated problem. (C) 2019 Elsevier Ltd. All rights reserved.
机译:近年来,在生产和制造活动(尤其是能源密集型产业)的节能中已经引起了极大的关注。减少不必要的能源消耗的一种有用策略是通过考虑能源驱动和面向时间的标准来安排这些活动。该调度模型可以使能耗与生产成本之间相互影响,从而实现高效,可持续的生产过程。在这方面,客户对到期日的期望是决策者控制交货延迟的另一个重要因素。由于不确定的环境,做出这些决定非常困难,因此无法提前提取准确的设施和工作信息。在迫切需要节能以及全球化和多工厂制造的出现的背景下,上述问题促使我们尝试通过最小化制造期和制造时间来考虑总拖延约束,从而解决随机多目标分布式置换流水车间调度问题。总能耗。由于所提出问题的不确定性,因此采用机会约束方法来描述决策者的总体拖后感,因此,利用机会约束编程模型来表达此问题。作为一个复杂的优化问题,专门设计了一种采用随机仿真方法的新型多目标头脑风暴优化算法,以更好地解决问题。提供了基于一组基准测试问题以及两种经典和流行算法的比较研究。实验结果表明,该算法在处理所研究的问题上具有很好的竞争性能。 (C)2019 Elsevier Ltd.保留所有权利。

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