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Forecasting of daily global solar radiation using wavelet transform-coupled Gaussian process regression: case study in Spain

机译:采用小波变换耦合高斯过程回归日常全球太阳辐射的预测:西班牙案例研究

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This work presents a successful application of a new hybrid model in forecasting daily global solar radiation for a site in Spain using time series of solar radiation. The hybrid model incorporates the wavelet transform (WT) and Gaussian process regression (GPR). The WT is used to extract meaningful time-frequency information by decomposing the clearness index time series into a set of well-designed subseries. The future behavior of clearness index is forecasted with the trained GPR model using inputs of those subseries. The daily global solar radiation is obtained by multiplying the forecasted clearness index with extraterrestrial solar radiation. The normalized root mean square error (nRMSE), 9.36%, demonstrates the model's excellent capability in forecasting daily global solar radiation. The proposed model outperforms some other well-established models, including autoregressive moving average (ARMA), non-wavelet GPR, wavelet coupled and non-wavelet artificial neural network (ANN) and support vector regression (SVR) models.
机译:这项工作展示了使用时间序列的太阳辐射预测西班牙地区的每日全球太阳辐射的新混合模型。混合模型包括小波变换(WT)和高斯过程回归(GPR)。 WT用于通过将晴度索引时间序列分解成一组精心设计的子架构来提取有意义的时频信息。使用这些子系列的输入,预测了训练的GPR模型预测了清晰度指数的未来行为。通过将预测的透明指数乘以外星太阳辐射来获得每日全球太阳辐射。标准化的根均方误差(NRMSE),9.36%,展示了模型在预测日常全球太阳辐射方面的出色能力。该建议的模型优于一些其他良好的模型,包括自回归移动平均(ARMA),非小波GPR,小波耦合和非小波人工神经网络(ANN)并支持向量回归(SVR)模型。

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