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Building-to-grid predictive power flow control for demand response and demand flexibility programs

机译:从建筑物到电网的预测潮流控制,用于需求响应和需求灵活性程序

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Demand Side Management (DSM) provides ancillary service to the electric grid by modifying customers electricity demand. Demand Response (DR) and Demand Flexibility (DF) programs from buildings are well-adopted ancillary services to reduce the peak demand in grids by altering the power consumption strategy. Heating, Ventilation and Air-Conditioning (HVAC) systems are one of the largest energy demands in commercial buildings. In addition, HVAC systems are flexible to provide DR service to the grid. In this study, two common configuration topologies of building integration with Energy Storage Systems (ESS) and renewables are considered. A real-time optimization framework based on Model Predictive Control (MPC) is designed to control the power flow from the grid, solar Photovoltaic (PV) panels, and ESS to a commercial building with HVAC systems. The MPC framework uses the inherent thermal mass storage of the building and the ESS as a means to provide DR. Deterministic and probabilistic analysis are studied to investigate the effectiveness of the proposed framework on Building-to-Grid (B2G) systems. Our deterministic results show that the proposed optimization and control framework for B2G systems can significantly reduce the maximum load ramp-rate of the electric grid to prevent duck-curve problems associated with increase in solar PV penetration into the grid. Based on probabilistic results, even under prediction uncertainties, electricity cost saving and ramp-rate reduction is achievable. The results show that this DR service does not affect the building indoor climate in a way noticeable to humans and its effect on the operational building costs is reduced. The B2G simulation testbed in this paper is based on the experimental data obtained from an office building, PV panels, and battery packs integrated with a three-phase unbalanced distribution test feeder. A Monte-Carlo simulation is carried out to account for uncertainties of the proposed method. Both deterministic and stochastic analyses show the effectiveness of the proposed predictive power flow control to decrease the building operation electricity costs and load ramp-rates. (C) 2017 Elsevier Ltd. All rights reserved.
机译:需求方管理(DSM)通过修改客户的电力需求为电网提供辅助服务。建筑物的需求响应(DR)和需求灵活性(DF)程序是广泛采用的辅助服务,可通过更改功耗策略来降低电网的峰值需求。供暖,通风和空调(HVAC)系统是商业建筑中最大的能源需求之一。此外,HVAC系统可以灵活地为电网提供灾难恢复服务。在这项研究中,考虑了与储能系统(ESS)和可再生能源进行建筑物集成的两种常见配置拓扑。基于模型预测控制(MPC)的实时优化框架旨在控制从电网,太阳能光伏(PV)面板和ESS到具有HVAC系统的商业建筑的功率流。 MPC框架使用建筑物固有的热量存储和ESS作为提供DR的方法。研究了确定性和概率分析,以研究所提出的框架对建筑到网格(B2G)系统的有效性。我们的确定性结果表明,针对B2G系统提出的优化和控制框架可以显着降低电网的最大负载斜率,以防止与太阳能PV渗透到电网中相关的鸭形曲线问题。基于概率结果,即使在预测不确定的情况下,也可以节省电费和降低斜坡率。结果表明,这种灾难恢复服务不会以人类明显的方式影响建筑物的室内气候,并且减少了对运营建筑物成本的影响。本文中的B2G模拟测试平台基于从办公大楼,光伏面板和集成了三相不平衡配电测试馈线的电池组获得的实验数据。进行了蒙特卡洛模拟以解决所提出方法的不确定性。确定性分析和随机分析均表明,所提出的预测潮流控制可有效降低建筑物运行的电费和负荷的爬升率。 (C)2017 Elsevier Ltd.保留所有权利。

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