Solar radiation forecast with machine learning

X. Shao, Siyuan Lu, H. Hamann
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引用次数: 9

Abstract

Renewable energy forecasting becomes increasingly important as the contribution of solar/wind power production to the electrical power grid constantly increases. Significant improvement in forecasting accuracy has been demonstrated by developing more sophisticated solar irradiance forecasting models using statistics and/or numerical weather predictions. In this presentation, we report the development of a machine-learning based multi-model blending approach for statistically combing multiple meteorological models to improve the accuracy of solar power forecasting. The system leverages upon multiple existing physical models for prediction including numerous atmospheric and cloud prediction models based on satellite imagery as well as numerical weather prediction (NWP) products.
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用机器学习预测太阳辐射
随着太阳能/风能发电对电网的贡献不断增加,可再生能源预测变得越来越重要。利用统计数据和/或数值天气预报发展更精密的太阳辐照度预报模式,已显示预报精度有显著提高。在本报告中,我们报告了一种基于机器学习的多模型混合方法的发展,该方法用于统计组合多个气象模型,以提高太阳能预测的准确性。该系统利用多种现有的物理模型进行预测,包括基于卫星图像和数值天气预报(NWP)产品的众多大气和云预测模型。
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