论文标题
基于气象数据和从卫星图像获得的数据的整合,可以预测太阳辐射的机器学习模型
Machine learning model to predict solar radiation, based on the integration of meteorological data and data obtained from satellite images
论文作者
论文摘要
了解太阳辐射在地理位置上的行为对于使用光伏系统从太阳中使用能量至关重要。但是,测量气象参数和确定偏远地区太阳能大小的站点的数量有限。在这项工作中,使用了从GON-13卫星获得的图像,从中提取可以从气象站整合到数据集中的变量。由此,建立了3种不同的模型,在该模型上评估了5种机器学习算法在预测太阳辐射时的性能。根据使用四个评估指标进行的分析,神经网络在模型中具有最高的性能,该模型整合了气象变量和从图像获得的变量。尽管考虑了RRMSE,但获得的所有结果都高于20%,这将算法的性能归类为公平。在2012年的数据集中,根据指标,R2,RMSE和RRMSE的估计结果分别对应于-0.051、0.880、90.99和26.7%。在2017年数据集中,MBE,R2,RMSE和RRMSE的结果分别为-0.146、0.917、40.97和22.3%。尽管可以从卫星图像中计算太阳辐射,但确实,某些统计方法取决于辐射数据和地面仪器捕获的阳光,这并不总是可能的,因为表面上的测量站的数量受到限制。
Knowing the behavior of solar radiation at a geographic location is essential for the use of energy from the sun using photovoltaic systems; however, the number of stations for measuring meteorological parameters and for determining the size of solar fields in remote areas is limited. In this work, images obtained from the GOES-13 satellite were used, from which variables were extracted that could be integrated into datasets from meteorological stations. From this, 3 different models were built, on which the performance of 5 machine learning algorithms in predicting solar radiation was evaluated. The neural networks had the highest performance in the model that integrated the meteorological variables and the variables obtained from the images, according to an analysis carried out using four evaluation metrics; although if the rRMSE is considered, all results obtained were higher than 20%, which classified the performance of the algorithms as fair. In the 2012 dataset, the estimation results according to the metrics MBE, R2, RMSE, and rRMSE corresponded to -0.051, 0.880, 90.99 and 26.7%, respectively. In the 2017 dataset, the results of MBE, R2, RMSE, and rRMSE were -0.146, 0.917, 40.97 and 22.3%, respectively. Although it is possible to calculate solar radiation from satellite images, it is also true that some statistical methods depend on radiation data and sunshine captured by ground-based instruments, which is not always possible given that the number of measurement stations on the surface is limited.