商业建筑微电网多发储在线多级能源管理系统

IF 3.3 Q3 ENERGY & FUELS
Wenshuai Bai;Dian Wang;Xiaorong Sun;Jiabin Yu;Jiping Xu;Yuqing Pan
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引用次数: 2

摘要

本文提出了一种将屋顶光伏电源、蓄电池储能系统、公用电网、柴油发电机组、超级电容器、商业建筑等组成主动编排负荷的商业建筑局部微电网在线多级能量管理系统,解决了源和负荷的不确定性问题,同时优化了商业建筑局部微电网运行成本和局部可再生能源利用率。能源管理系统包括长期滚动优化层、基于规则的优化层和负荷需求优化层。在长期滚动优化层面,提出了一种数据重构的在线滚动方法,对实测数据、短期预测数据和日前预测数据进行重构,降低光伏源预测和负荷需求预测的不确定性。针对能量管理系统提出了四种方法,并在MATLAB/Simulink中对多云、晴、雨三种典型天气条件下的能量管理系统进行了仿真。仿真结果表明,方法3的性能最接近方法4,方法4的数据条件较理想;方法三以非临界减载的微小代价,降低了商业建筑微电网的运行成本,提高了光伏源的利用率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Online Multi-Level Energy Management System for Commercial Building Microgrids With Multiple Generation and Storage Systems
This paper presents an online multi-level energy management system for local microgrids of commercial buildings that integrate roof-top photovoltaic sources, battery storage systems, utility grids, diesel generators, supercapacitors, and commercial buildings consisting of active orchestrated loads, to solve the uncertainty problem of sources and loads, while also optimizing the local microgrid operation cost of commercial buildings and the utilization rate of local renewable energy. The energy management system includes a long-term rolling optimization level, rule-based optimization level, and load demand optimization level. At the long-term rolling optimization level, an online rolling method of data restructuring is proposed, where measurement data, short-term prediction data, and day-ahead prediction data are reconstructed to reduce the uncertainty in photovoltaic source prediction and load demand prediction. Four methods are proposed for the energy management system and simulated in MATLAB/Simulink under three typical weather conditions, cloudy, sunny, and rainy. Simulation results show that the performance of Method 3 is closest to that of Method 4, whose data conditions are ideal; Method 3 reduces the operational cost of the commercial building microgrid and improves the utilization rate of photovoltaic sources, at the slight cost of non-critical load shedding.
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来源期刊
CiteScore
7.80
自引率
5.30%
发文量
45
审稿时长
10 weeks
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