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Energy- and labor-aware flexible job shop scheduling under dynamic electricity pricing: A many-objective optimization investigation

机译:动态电价下具有能源和劳动力意识的灵活车间调度:多目标优化研究

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Energy-aware production scheduling is a promising way to adapt the factories' energy consumption behavior to the volatile electricity prices in the demand response initiative of smart grids. However, it may not be economical by simply scheduling production loads to the periods with lower electricity prices, as these periods often have higher labor wage, e.g., nights and weekends. Based on this gap, this paper proposes a many-objective integrated energy- and labor-aware flexible job shop scheduling model. Many objectives refer to the number of optimization objectives surpasses three (i.e., five objectives: makespan, total energy cost, total labor cost, maximal workload, and total workload), whereas the existing energy-aware production scheduling research is limited within three objectives. To enable energy awareness in the conventional production scheduling algorithms, a state-based shop floor wide energy model is proposed. To enable labor awareness, the number and type of human workers are matched to the scheduled production loads, with varying labor wage over shifts. As one of the most complex shop floor configurations, the partial flexible job shop further considers job recirculation and operation sequence-dependent machine setup times. The recently-proposed nondominated sorting genetic algorithm-III (NSGA-III) is tailored for this many-objective optimization problem (MaOP), including scheduling solution encoding and decoding, crossover, mutation, and solution evaluation using the energy- and labor-aware discrete-event simulation framework. Through numerical experiments under real-time pricing (RTP) and time-of-use pricing (ToUP), insights are statistically obtained on the relation among these five production objectives: the effectiveness and efficiency of NSGA-III in solving a MaOP are also demonstrated. This proposed scheduling method can be used to automated and enhance the decision making of factory managers in jointly allocating machine, human worker, and energy resources on the shop floor, such that the production cost is minimized even under time-varying electricity and labor prices. (C) 2018 Elsevier Ltd. All rights reserved.
机译:在智能电网的需求响应计划中,能源意识的生产调度是一种使工厂的能耗行为适应电价波动的有前途的方法。然而,仅仅将生产负荷安排在电价较低的时期可能不经济,因为这些时期通常具有较高的劳动工资,例如晚上和周末。基于这一差距,本文提出了一个多目标的能源和劳动力感知综合柔性作业车间调度模型。许多目标指的是优化目标的数量超过三个(即五个目标:制造时间,总能源成本,总劳动力成本,最大工作量和总工作量),而现有的节能生产计划研究仅限于三个目标之内。为了在常规生产调度算法中提高能源意识,提出了一种基于状态的车间范围能源模型。为了提高劳动意识,将人类工人的数量和类型与计划的生产负荷相匹配,并且在轮班制中改变劳动工资。作为最复杂的车间配置之一,部分灵活的车间进一步考虑了作业再循环和与操作顺序有关的机器设置时间。针对这种多目标优化问题(MaOP)量身定制了最近提出的非支配排序遗传算法III(NSGA-III),包括调度解决方案的编码和解码,交叉,变异以及使用能源和劳动力意识的解决方案评估离散事件仿真框架。通过实时定价(RTP)和使用时间定价(ToUP)下的数值实验,可以从统计学上获得关于这五个生产目标之间关系的见解:还证明了NSGA-III解决MaOP的有效性和效率。该建议的调度方法可用于自动化和增强工厂经理在车间中共同分配机器,人力和能源的决策,从而即使在时变的电力和劳动力价格下,生产成本也得以最小化。 (C)2018 Elsevier Ltd.保留所有权利。

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