A Control Strategy Based on Power Forecasting for Micro-Grid Systems

A. Elmouatamid, R. Ouladsine, M. Bakhouya, N. E. Kamoun, K. Zine-dine, M. Khaidar
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引用次数: 7

Abstract

Balancing production and demand of energy is the main challenge to integrate renewable energy sources (RES) in micro-grid (MG) systems. However, the variability and the uncertainty nature of the production and the consumption make the system more difficult to control. In fact, weather conditions influence on the production of renewable energy sources while occupancy influences on the power consumption. Therefore, the development of accurate short term forecasts are needed for a seamless integration of RES (e.g. photovoltaic system, wind turbine) together with the traditional electrical grid in MG systems. This paper presents a forecasting model for predicting the power production and consumption in MG systems together with the battery state of charge (SoC). A control strategy is then implemented to balance the Demand/Response by taking into account the forecasted and real-time values. Based on the data collected from a real MG system, simulation results are presented to show the effectiveness of power forecasting for MG control.
基于功率预测的微电网系统控制策略
平衡能源的生产和需求是将可再生能源(RES)纳入微电网系统的主要挑战。然而,生产和消费的可变性和不确定性使系统更难控制。事实上,天气条件影响可再生能源的生产,而占用率影响电力消耗。因此,为了将可再生能源(例如光伏系统、风力涡轮机)与MG系统中的传统电网无缝集成,需要开发准确的短期预测。本文提出了一种结合电池荷电状态(SoC)来预测MG系统发电量和耗电量的预测模型。然后实施控制策略,通过考虑预测值和实时值来平衡需求/响应。基于实际自动调速器系统的数据,给出了仿真结果,验证了功率预测对自动调速器控制的有效性。
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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