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Use of the artificial neural network and meteorological data for predicting daily global solar radiation in Djelfa, Algeria

机译:使用人工神经网络和气象数据来预测日常全球太阳辐射,阿尔及利亚,阿尔及利亚

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摘要

This paper presents a set of artificial neural network models (ANN) to estimate daily global solar radiation (GSR) on a horizontal surface using meteorological variables: (mean daily extraterrestrial solar radiation intensity G0, the maximum possible sunshine hours S0, mean daily relative humidity H, mean daily maximum air temperature T, mean daily atmospheric pressure P and wind speed Vx) for Djelfa city in Algeria. In order to consider the effect of the different meteorological parameters on daily global solar radiation prediction, four following combinations of input features are considered: 1) Day of the year, G0, S0, T and Vx. 2) Day of the year, G0, S0, T, P and Vx. 3) Day of the year, G0, S0, T, H, P and Vx. 4) Day of the year, G0, S0, T, H and Vx. These models were compared using three evaluation criteria: Mean square error (MSE), mean absolute error (MAE), and root mean square error (RMSE). The results show that the two parameters: atmospheric pressure and relative humidity affect the prediction output of global solar radiation. In addition, the results show that the relative humidity is the most important features influencing the prediction performance. It can be concluded that fourth model can be used for forecasting daily global solar radiation in other locations in Algeria.
机译:本文介绍了一组人工神经网络模型(ANN),以使用气象变量估计水平表面上的每日全球太阳辐射(GSR):(平均每日外星广播太阳辐射强度G0,最大可能的阳光小时S0,平均相对湿度H,Algeria的Djelfa City,H,平均日常空气温度T,平均每日大气压P和风速Vx)。为了考虑不同气象参数对日常的全球太阳辐射预测的影响,在一年中考虑了以下四个输入特征组合:1)日,G0,S0,T和VX。 2)一年中的一天,G0,S0,T,P和VX。 3)一年中的一天,G0,S0,T,H,P和Vx。 4)一年中的一天,G0,S0,T,H和VX。使用三个评估标准进行比较这些模型:均方误差(MSE),平均误差(MAE)和均均线误差(RMSE)。结果表明,这两个参数:大气压和相对湿度影响全球太阳辐射的预测输出。此外,结果表明,相对湿度是影响预测性能的最重要的特征。可以得出结论,第四种模型可用于预测阿尔及利亚其他地区的日常全球太阳辐射。

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