智能电网可再生能源不平衡预测研究

R. D. Labati, A. Genovese, V. Piuri, F. Scotti
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引用次数: 2

摘要

可再生能源的生产在世界范围内不断增加。为了将可再生能源整合到能够适应异质区域电力使用变化的智能电网中,有必要准确预测可再生能源可以实现的电力生产。通过这种预测,可以对不可再生能源电厂的发电进行规划,合理分配发电,补偿可能出现的不平衡。特别重要的是,在局部水平(区域)预测产生的功率和实际功率之间的不平衡。在本文中,我们提出了一种新的方法来预测可再生能源产生的电力和地方一级的电力摄入之间的不平衡迹象,考虑到多个发电厂组成的区域和异质性特征。该方法使用一组历史特征,并基于计算智能技术,能够学习历史数据与异质地理区域的权力不平衡之间的关系。作为案例研究,我们使用能源市场参与者在7个月内收集的数据来评估所提出的方法。在这项初步研究中,我们评估了所提出方法的不同配置,获得了能源市场参与者认为令人满意的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Towards the Prediction of Renewable Energy Unbalance in Smart Grids
The production of renewable energy is increasing worldwide. To integrate renewable sources in electrical smart grids able to adapt to changes in power usage in heterogeneous local zones, it is necessary to accurately predict the power production that can be achieved from renewable energy sources. By using such predictions, it is possible to plan the power production from non-renewable energy plants to properly allocate the produced power and compensate possible unbalances. In particular, it is important to predict the unbalance between the power produced and the actual power intake at a local level (zones). In this paper, we propose a novel method for predicting the sign of the unbalance between the power produced by renewable sources and the power intake at the local level, considering zones composed of multiple power plants and with heterogeneous characteristics. The method uses a set of historical features and is based on Computational Intelligence techniques able to learn the relationship between historical data and the power unbalance in heterogeneous geographical regions. As a case study, we evaluated the proposed method using data collected by a player in the energy market over a period of seven months. In this preliminary study, we evaluated different configurations of the proposed method, achieving results considered as satisfactory by a player in the energy market.
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