并网光伏电池微电网能量管理退化感知模型预测控制评估

Alan G. Li, M. Preindl
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引用次数: 0

摘要

并网住宅太阳能光伏(PV)和电池系统是日益流行的微电网类型。确定这种微电网的最佳能源管理系统(EMS)策略取决于许多因素,如电力需求、太阳辐照和系统成本。因此,详细研究了住宅光伏电池微电网的能量流。使用了三种算法,包括负载均衡、移峰和原始模型预测控制(MPC) EMS。光伏电池、电池过电位和退化用物理意义的模型进行了模拟。来自纽约长岛的真实数据用于模拟负载电力需求、太阳辐照、公用事业成本、退化成本和光伏信用额。同时考虑了负荷和光伏的预测误差。基本案例的结果证明了MPC EMS的优势。然后改变模拟参数,以表明模拟的成本节约取决于成本假设和预测误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Assessing Degradation-Aware Model Predictive Control for Energy Management of a Grid-Connected PV-Battery Microgrid
Grid-connected residential solar-photovoltaic (PV) and battery systems are increasingly popular types of microgrids. Determining the optimal energy management system (EMS) strategy for such microgrids depends on many factors, such as power demand, solar irradiation, and system costing. The energy flow for a residential PV-battery microgrid is thus studied in detail. Three algorithms are used, including load-levelling, peak-shifting, and an original model predictive control (MPC) EMS. PV cells, battery overpotentials and degradation are simulated with physically-meaningful models. Real data from Long Island, New York, are used to simulate the load power demand, solar irradiation, utility costs, degradation costs, and PV credits. Both load and PV forecasting error are considered. Results for the base cases demonstrate the advantage of MPC EMS. Simulation parameters are then varied to show that the simulated cost savings depend on the costing assumptions and forecasting error.
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