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A New Hybrid Model for Hourly Solar Radiation Forecasting Using Daily Classification Technique and Machine Learning Algorithms

机译:基于日常分类技术和机器学习算法的逐时太阳辐射预报新混合模型

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摘要

Photovoltaic power generation depends significantly on solar radiation, which is variable and unpredictable in nature. As a result, the production of electricity from photovoltaic power cannot be guaranteed permanently during the operational phase. Forecasting global solar radiation can play a key role in overcoming this drawback of intermittency. This paper proposes a new hybrid method based on machine learning (ML) algorithms and daily classification technique to forecast 1 h ahead of global solar radiation in the city of evora. Firstly, several comparative studies have been done between random forest (RF), gradient boosting (GB), support vector machines (SVM), and artificial neural network (ANN). These comparisons were made using annual, seasonal, and daily testing sets in order to determine the best ML algorithm under different meteorological conditions. Subsequently, the daily classification technique has been applied to classify the original training set into sunny and cloudy training subsets in order to enhance the forecasting accuracy. The evaluation of the proposed ML algorithms was carried out using the normalized root mean square error (nRMSE) and the normalized absolute mean error (nMAE). The results of the seasonal comparison show that the RF model performs well for spring and autumn seasons with nRMSE equaling 22.53 and 23.42, respectively. While the SVR model gives good results for winter and summer seasons with nRMSE equaling 24.31 and 8.41, respectively. In addition, the daily comparison demonstrates that the RF model performs well for cloudy days with nRMSE = 41.40, while the SVR model yields good results for sunny days with nRMSE = 8.88. The results show that the daily classification technique enhances the forecasting accuracy of ML models. Furthermore, this study demonstrates that the forecasting accuracy of ML algorithms depends significantly on sky conditions.
机译:光伏发电很大程度上依赖于太阳辐射,而太阳辐射本质上是可变的和不可预测的。因此,在运行阶段无法永久保证光伏发电。预测全球太阳辐射可以在克服这种间歇性缺点方面发挥关键作用。本文提出了一种基于机器学习(ML)算法和日分类技术的混合方法,用于预测埃沃拉市全球太阳辐射前1 h的预报。首先,对随机森林(RF)、梯度提升(GB)、支持向量机(SVM)和人工神经网络(ANN)进行了多项比较研究。这些比较是使用年度、季节性和每日测试集进行的,以确定不同气象条件下的最佳 ML 算法。随后,应用每日分类技术将原始训练集分类为晴天和阴天训练子集,以提高预测精度。使用归一化均方根误差(nRMSE)和归一化绝对均值误差(nMAE)对所提出的ML算法进行评估。季节比较结果表明,RF模型在春季和秋季表现良好,nRMSE分别为22.53%和23.42%。而SVR模型在冬季和夏季给出了良好的结果,nRMSE分别为24.31%和8.41%。此外,每日比较表明,RF模型在阴天表现良好,nRMSE = 41.40%,而SVR模型在晴天表现良好,nRMSE = 8.88%。结果表明,日分类技术提高了ML模型的预测精度。此外,本研究表明,ML算法的预测精度在很大程度上取决于天空条件。

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