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Optimal Management of Energy Consumption and Comfort for Smart Buildings Operating in a Microgrid

机译:在微电网中运行的智能建筑能耗和舒适性的最佳管理

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This paper presents a mixed integer non-linear programming model to optimize, in a centralized fashion, the operation of multiple buildings in a microgrid. The proposed model aims to minimize the total cost of the energy imported from the main grid at the interconnection point, managing the power demand and generation of buildings, while operational constraints of the electrical grid are guaranteed. This approach considers the management of heating, ventilation, and air conditioning units, lighting appliances, photovoltaic generation and energy storage system of each building. Comfortable indoor conditions for the occupants are kept by a set of mathematical constraints. Additionally, a strategy that simplifies the original model is presented, based on a set of linearization techniques and equivalent representations, obtained through a pre-processing stage executed in EnergyPlus software. This strategy allows approximating the proposed model into a mixed integer linear programming formulation that can be solved using commercial solvers. The proposed model was tested in a 13-bus microgrid for different deterministic cases of study with non-manageable loads and smart buildings. A large-size test case is also considered. Finally, a rolling horizon strategy is proposed with the aim of addressing the uncertainty of the data, as well as reducing the amount of forecasting data required.
机译:本文介绍了一种混合整数非线性编程模型,以集中式时尚优化多个建筑物中的多个建筑物的操作。该拟议的模型旨在最大限度地减少互连点进口的能量的总成本,管理电网的电力需求和产生,而电网的运行约束是保证的。该方法考虑了每种建筑物的供暖,通风和空调单元,照明器具,光伏发电和储能系统的管理。占用者的舒适室内条件被一组数学限制保存。另外,基于通过在EnergyPlus软件中执行的预处理阶段获得的一组线性化技术和等效表示来呈现简化原始模型的策略。该策略允许将所提出的模型近似于可以使用商业求解器解决的混合整数线性编程制剂。该拟议的模型在13母线微电网中进行了测试,用于使用不可管理的负载和智能建筑物的不同确定性案例。还考虑了大尺寸的测试案例。最后,提出了一种滚动地平线策略,目的是解决数据的不确定性,并减少所需的预测数据量。

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