Deep learning for very short term solar irradiation forecasting

Wadie Bendali, Ikram Saber, M. Boussetta, Youssef Mourad, Bensalem Bourachdi, Bader Bossoufi
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引用次数: 1

Abstract

The use of renewable energy sources (RES) has increased significantly in recent years, in particular, photovoltaic energy which is one of the RES most used for electricity production. Indeed, the world has experienced the installation of a huge number of photovoltaic systems, autonomous or connected to the electricity distribution grid. However, the improvisational nature of solar energy negatively influences the stability and reliability of the electricity grid. One of the best solutions to stabilize and secure the operation of the network is to forecast energy production and to promote the integration of photovoltaic energy on a large scale.In this context, this work aims to develop appropriate forecasting models in the forecasting of photovoltaic energy production. For this reason, we have tested machine learning and deep learning techniques to predict time series data for solar irradiation. For this, we used data from preprocessing, training and testing, three types of error metrics are used to evaluate the models. Recurrent neuron network (RNN) as a machine learning model, on the other hand LSTM and GRU as deep learning models have been discussed from the mathematical and practical simulation using the Anaconda and python environment with their math libraries.
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短期太阳辐射预测的深度学习
近年来,可再生能源的使用显著增加,特别是光伏能源,它是发电中使用最多的可再生能源之一。事实上,世界上已经安装了大量自主或连接到配电网的光伏系统。然而,太阳能的即时性对电网的稳定性和可靠性产生了负面影响。实现电网稳定、安全运行的最佳解决方案之一是对发电量进行预测,并大规模推进光伏能源的并网。在此背景下,本工作旨在开发合适的光伏发电预测模型。出于这个原因,我们测试了机器学习和深度学习技术来预测太阳辐射的时间序列数据。为此,我们使用了预处理、训练和测试的数据,使用了三种类型的误差度量来评估模型。另一方面,利用Anaconda和python环境及其数学库,从数学和实际仿真的角度讨论了循环神经元网络(RNN)作为机器学习模型,LSTM和GRU作为深度学习模型。
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