面向分布式能源管理的住宅建筑负荷短期预测

Y. Iwafune, Y. Yagita, T. Ikegami, K. Ogimoto
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引用次数: 42

摘要

在光伏等可再生能源发电预期增加的情况下,需求侧的能源管理系统(EMS)可作为提高电力系统供需平衡能力的一种方法。为了实现需求侧设备(包括热泵热水器、光伏系统和太阳能热水器)的最优运行调度,必须对能源需求和太阳辐射进行预测。本文提出了一种住宅用电量的日前预测方法,为能源管理提供依据。为了验证预测的准确性,本文利用35户家庭一年多的实际调查数据,对10种预测方法进行了检验。此外,还建立了蓄电池日运行模型来评估负荷预测的效果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Short-term forecasting of residential building load for distributed energy management
It is expected that energy management systems (EMS) on the demand side can be used as a method for enhancing the capability of balancing supply and demand of a power system under the anticipated increase of renewable energy generation such as photovoltaics (PV). Energy demand and solar radiation must be predicted in order to realize the optimal operation scheduling of demand side appliances by EMS, including heat pump water heaters, PV systems, and solar powered water heaters. This paper presents a day-ahead forecasting method for electricity consumption in a house to contribute to energy management. Ten forecasting methods are examined using real survey data from 35 households over a year in order to verify forecast accuracy. A daily battery operation model is also developed to evaluate the effect of load forecasts.
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