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Load Forecasting in Distribution Grids with High Renewable Energy Penetration for Predictive Energy Management Systems

机译:预测能源管理系统中具有高可再生能源渗透率的配电网负荷预测

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In this paper we present a new approach for load forecasting in distribution grids with high renewable energy penetration. The method is based on multiple neural networks and the application focuses on predictive energy management systems which use a model predictive control (MPC) approach. These control algorithms need predictions of demand profiles from 15 minutes up to several days. The short-term forecast values are more important than the long-term prediction values beyond six or 24 hours. Thus, the new method takes instantaneous measurements into account in order to provide a high accuracy for the first prediction values. In addition, weather forecast data is included as input variables of the neural networks for the purpose of mapping the influence of renewable energy generation on the load profiles. With this approach, the method improves the Root-Mean-Squared Error up to 80 % compared to a reference model based on a weekly persistence.
机译:本文介绍了一种具有高可再生能源渗透的分布网格负荷预测方法。该方法基于多个神经网络,应用专注于使用模型预测控制(MPC)方法的预测能量管理系统。这些控制算法需要从15分钟到几天的需求配置文件预测。短期预测值比六到24小时超过长期预测值更重要。因此,新方法考虑到瞬时测量,以便为第一预测值提供高精度。此外,天气预报数据被包括为神经网络的输入变量,以便映射可再生能源产生对负载配置文件的影响。通过这种方法,与基于每周持久性的参考模型相比,该方法可提高到80%的根本平方误差。

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