全球太阳辐照度提前一天的人工神经网络预测

Hamid Ettayyebi, Khalid El Himdi
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引用次数: 3

摘要

由于全球变暖,世界正在寻求使用更多的可再生能源。在这项研究中,我们的重点是太阳能,它在过去的几十年里受到了越来越多的关注。将太阳能纳入电网需要可靠的太阳能资源预测信息,使其能够量化可用能源,并使其能够以最佳方式管理间歇性能源和常规能源之间的过渡。在整个研究过程中,我们研究了不同的预测技术,以找出哪一种技术适合预测拉巴特地区的每日全球太阳辐照度。首先测试的方法是基于经典ARIMA-GARCH和指数平滑模型的线性建模。第二种方法是基于人工神经网络(ann)模型的非线性建模。大量的研究已经证明了人工神经网络预测时间序列天气数据的能力。在本研究中,我们将研究一种特殊的人工神经网络结构,多层感知器(MLP),它在可再生能源和时间序列预测中被广泛使用。在单变量和多变量情况下,我们使用一些统计特征参数来寻找MLP的最优结构。结果表明,带有外源变量的MLP模型比其他模型表现更好。
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Artificial Neural Network for Forecasting One Day Ahead of Global Solar Irradiance
Due to global warming, the world is seeking to use more renewable energy. In this study, we focus on solar energy, which has been receiving increased amounts of attention in the last few decades. The integration of solar energy into electricity networks requires reliable forecast information of solar resources enabling it to quantify the available energy and allowing it to optimally manage the transition between intermittent and conventional energies. Throughout our research, we investigated different forecasting techniques in order to find which one is appropriate for forecasting the daily global solar irradiance for the region of Rabat. The first-tested approach is linear modeling based on classical ARIMA-GARCH and exponential smoothing models. The second approach proposes non-linear modeling based on Artificial Neural Networks (ANNs) models. Numerous research has demonstrated the ability of ANNs to predict time series of weather data. In this study, we will examine a particular structure of ANNs, Multilayer Perceptron (MLP), which has been used the most among ANN structures in renewable energy and time series forecasting broadly. We used some statistical feature parameters to find the optimal structure of MLP in the univariate case and the multivariate case. The results showed that the MLP with exogenous variables performed better than the other models.
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