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Machine learning regressors for solar radiation estimation from satellite data

机译:机器学习回归卫星数据的太阳辐射估计

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In this paper we evaluate the performance of several Machine Learning regression techniques in a problem of global solar radiation estimation from geostationary satellite data. Different types of neural networks, Support Vector Regression and Gaussian Processes have been selected as regression techniques to be evaluated, due to their good performance in similar problems in the past. The study area is located in the surroundings of the radiometric station of Toledo, Spain. In order to train the regression techniques considered, one complete year of hourly global solar radiation data is used as the target of the experiments, and different input variables are considered: a cloud index, a clear-sky solar radiation model and several reflectivity values from Meteosat visible images. To assess the results obtained by the Machine Learning algorithms, we have selected as a reference three different physical-based methods, a model based on the Heliosat-2 method (Heliosat-2), the Copernicus Atmosphere Monitoring Service (CAMS) and the SolarGIS model (Soevaluate the performance of Machine Learning regressors when the physical models are included as input variables, in a class of post-processing of these physical approaches. The results obtained show the capacity of Machine Learning regressors to obtain reliable global solar radiation estimation by using satellite measurements.
机译:本文中,我们评估了几种机器学习回归技术在地球静止卫星数据的全局太阳辐射估计问题中的性能。由于其过去类似问题的良好性能,已经选择了不同类型的神经网络,支持向量回归和高斯过程作为回归技术。该研究区位于西班牙托莱多的辐射线站的周围。为了培训考虑的回归技术,将每小时全球太阳辐射数据的一个完整的一年用作实验的目标,并且考虑不同的输入变量:云指数,清晰的太阳辐射模型和几个反射率值Meteosat可见图像。为了评估机器学习算法获得的结果,我们已选择作为参考三种不同的基于物理的方法,基于Heliosat-2方法(Heliosat-2),哥白大气氛监控服务(CAM)和Solargis模型(对物理模型包括作为输入变量时的机器学习回归的性能,在这些物理方法的一类后处理中。获得的结果显示了机器学习回归器的能力,通过使用获得可靠的全球太阳辐射估计卫星测量。

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