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A mathematical programming framework for energy planning in services' sector buildings under uncertainty in load demand: The case of a hospital in Athens

机译:在负荷需求不确定的情况下用于服务业建筑物能源规划的数学编程框架:雅典的一家医院

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The aim of this paper is to provide an integrated modeling and optimization framework for energy planning in large consumers of the services' sector based on mathematical programming. The power demand is vaguely known and the underlying uncertainty is modeled using elements from fuzzy set theory. The defined fuzzy programming model is subsequently transformed to an equivalent multi-objective problem, where the minimization of cost and the maximization of demand satisfaction are the objective functions. The Pareto optimal solutions of this problem are obtained using a novel version of the ε-constraint method and represent the possibly optimal solutions of the original problem under uncertainty. In the present case, in order to select the most preferred Pareto optimal solution, the minimax regret criterion is properly used to indicate the preferred configuration of the system (i.e. the size of the installed units) given the load uncertainty. Furthermore, the paper proposes a model reduction technique that can be used in similar cases and further examines its effect in the final results. The above methodology is applied to the energy rehabilitation of a hospital in the Athens area. The technologies under consideration include a combined heat and power unit for providing power and heat, an absorption unit and/or a compression unit for providing cooling load. The obtained results demonstrate that, increasing the degree of demand satisfaction, the total annual cost increases almost linearly. Although data compression allows obtaining realistic results, the size of the proposed units might be slightly changed.
机译:本文的目的是提供一个集成的建模和优化框架,用于基于数学编程的服务部门大型消费者的能源规划。功率需求模糊不清,使用模糊集理论中的元素对潜在的不确定性进行建模。定义的模糊规划模型随后被转换为等效的多目标问题,其中成本的最小化和需求满意度的最大化是目标函数。该问题的帕累托最优解是使用ε约束方法的新颖形式获得的,表示不确定性下原始问题的可能最优解。在当前情况下,为了选择最优选的帕累托最优解,在给定负载不确定性的情况下,最小最大后悔准则被适当地用于指示系统的优选配置(即,安装单元的大小)。此外,本文提出了一种可在类似情况下使用的模型简化技术,并进一步研究了其在最终结果中的作用。以上方法适用于雅典地区一家医院的能量恢复。所考虑的技术包括用于提供电力和热量的热电联产单元,用于提供冷却负荷的吸收单元和/或压缩单元。获得的结果表明,随着需求满足程度的提高,年度总成本几乎呈线性增长。尽管数据压缩可以获取逼真的结果,但是建议单位的大小可能会略有变化。

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