Energy Management Improvement in a PV/Battery Smart-grid by Integration of Solar Resource Forecasting

G. Notton, G. Faggianelli, J. Duchaud, C. Voyant, S. Ouédraogo, Fabien Bouisset
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引用次数: 0

Abstract

In an Energy Management Systems (EMS), a weather forecasting platform is often incorporated to anticipate meteorological events influencing both the electrical production and consumption and to react accordingly. After a short presentation of solar resources forecasting tools, we focus on short-time horizon using statistical and Artificial Intelligence methods. A validation is realized on Ajaccio, France, the most efficient method is used into an EMS which optimizes the electricity exchanges into a microgrid with photovoltaic/battery energy system supplying a building and an electrical vehicle. The objective of the paper is to show the cost benefit induced by the implementation of the forecasting platform.
基于太阳能资源预测的光伏/电池智能电网能源管理改进
在能源管理系统(EMS)中,天气预报平台通常用于预测影响电力生产和消费的气象事件,并作出相应的反应。在简要介绍了太阳能资源预测工具之后,我们将重点介绍利用统计和人工智能方法进行短期预测的方法。在法国的Ajaccio进行了验证,最有效的方法被用于EMS中,该EMS优化了电力交换到具有光伏/电池能源系统的微电网,为建筑物和电动汽车供电。本文的目的是展示实施预测平台所带来的成本效益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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