建筑集成能源微电网系统在不同气候区域的适用性分析与实施路径探讨
Building Science(2022)
Abstract
建筑集成能源微电网系统结合可再生能源发电、储能电池调节、微网智能控制取得了显著节能与经济性效益,并逐渐成为发展方向.了解该系统在不同气候区域的适用性对于指导系统规划与设计有重要意义.本文介绍了能源微电网在不同场景适用性的研究成果.建立能耗模型来预测不同区域建筑的全年能耗及其特征.采用数值方法模拟能源微电网全年运行情况,结合性能分析,对系统中太阳能光伏利用情况及储能调节能力进行评估,并给出能源微电网在不同场景中的建议实施路径.结果表明能源微电网更适用于夏热冬暖及温和地区,并且在医院及商业建筑有更好的应用效果.其他场景中,可以考虑结合太阳能蓄热、增加光伏面积及改变储能策略来提升系统性能.
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