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A rolling-horizon optimization algorithm for the long term operational scheduling of cogeneration systems

机译:热电联产系统长期运行调度的水平滚动优化算法

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A rolling-horizon algorithm is proposed for optimizing the operating schedule of a given cogeneration energy system while taking into account time-variable loads, tariffs and ambient conditions, as well as yearly fiscal incentives. The presented algorithm is based on the Mixed Integer Linear Programming (MILP) model developed by the authors for optimizing the daily schedule of cogeneration systems and networks of heat and power plants.First the MILP model is extended to optimize the weekly operation schedule to better manage the heat-cold storage systems. However, in order to account for the European qualification framework for high efficiency cogeneration, as well as for country-specific incentive policies, it is necessary to consider average yearly-basis energy saving indexes, thus requiring to tackle the problem for the whole year. Since the extension of the MILP model from one day to seven days already increases remarkably the computational requirements, a simple application of the same optimization approach to a whole year would be practically unfeasible; therefore, this work proposes a rolling-horizon algorithm in which a sequence of weekly MILP submodels is solved, while considering production and consumption estimates based on demand profiles from historical data. The results obtained for a real-world test case are reported and discussed. (C) 2017 Published by Elsevier Ltd.
机译:提出了一种滚动式水平算法,用于优化给定的热电联产能源系统的运行时间表,同时考虑到时变负载,电价和环境条件以及年度财政激励措施。该算法基于作者开发的混合整数线性规划(MILP)模型,用于优化热电厂的热电联产系统和网络的日程安排。首先,对MILP模型进行了扩展,以优化每周运行时间表以更好地管理冷库系统。但是,为了考虑到欧洲高效热电联产的资格框架以及针对特定国家的激励政策,有必要考虑平均每年的基本节能指标,从而需要全年解决这一问题。由于将MILP模型从一天扩展到七天已经显着增加了计算需求,因此将同一优化方法简单应用到整个一年几乎是不可行的;因此,这项工作提出了一种滚动水平算法,在该算法中,解决了一系列每周MILP子模型的问题,同时根据历史数据的需求概况考虑了产量和消耗量估算。报告并讨论了针对实际测试案例获得的结果。 (C)2017由Elsevier Ltd.发布

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