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Comparison of Incoming Solar Radiation at Different Air Density Regimes Using Neural Network Models

机译:使用神经网络模型比较不同空气密度区域的入射太阳辐射

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摘要

This study creates a database on incoming solar radiation using artificial neural networks (ANN) and information on altitude, air temperature and pressure, water vapor pressure, dry air density, water vapor density, and mixing ratio obtained at five weather stations in Turkey. The coefficients of correlation of the calculation results for three regimes of air density with observational data for the training sample (2000-2001) are 99.24%, 99.82%, and 96.67%; for the testing sample (2002), 95.97%, 82.32%, and 95.11%. These values indicate that the usage of artificial neural networks and data of at-mosphere parameters is a correct and effective method for estimation of solar radiation and creation solar databases.
机译:这项研究使用人工神经网络(ANN)创建了一个有关传入太阳辐射的数据库,并提供了在土耳其的五个气象站获得的有关海拔,空气温度和压力,水蒸气压力,干燥空气密度,水蒸气密度以及混合比的信息。三种空气密度方案的计算结果与训练样本(2000-2001年)的观测数据的相关系数为99.24%,99.82%和96.67%; (2002年)分别为95.97%,82.32%和95.11%。这些值表明,人工神经网络和大气参数数据的使用是估算太阳辐射和创建太阳数据库的正确有效方法。

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