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A methodology for the stochastic generation of hourly synthetic direct normal irradiation time series

机译:随机生成每小时合成直接正常辐射时间序列的方法

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摘要

Many of the available solar radiation databases only provide global horizontal irradiance (GHI) while there is a growing need of extensive databases of direct normal radiation (DNI) mainly for the development of concentrated solar power and concentrated photovoltaic technologies. In the present work, we propose a methodology for the generation of synthetic DNI hourly data from the hourly average GHI values by dividing the irradiance into a deterministic and stochastic component intending to emulate the dynamics of the solar radiation. The deterministic component is modeled through a simple classical model. The stochastic component is fitted to measured data in order to maintain the consistency of the synthetic data with the state of the sky, generating statistically significant DNI data with a cumulative frequency distribution very similar to the measured data. The adaptation and application of the model to the location of Seville shows significant improvements in terms of frequency distribution over the classical models. The proposed methodology applied to other locations with different climatological characteristics better results than the classical models in terms of frequency distribution reaching a reduction of the 50% in the Finkelstein-Schafer (FS) and Kolmogorov-Smirnov test integral (KSI) statistics.
机译:许多可用的太阳辐射数据库仅提供全球水平辐照度(GHI),而对直接法向辐射(DNI)的广泛数据库的需求日益增长,主要用于集中太阳能和集中光伏技术的开发。在当前工作中,我们提出了一种方法,该方法可通过将辐照度分为旨在模拟太阳辐射动力学的确定性和随机分量,从每小时平均GHI值生成合成DNI每小时数据。确定性组件通过简单的经典模型建模。随机分量适合于测量数据,以保持合成数据与天空状态的一致性,生成统计上显着的DNI数据,其累积频率分布与测量数据非常相似。该模型在塞维利亚位置的适应和应用表明,与经典模型相比,在频率分布方面有了显着改善。在频率分布方面,所建议的方法应用于具有不同气候特征的其他位置的结果要比经典模型更好,结果使Finkelstein-Schafer(FS)和Kolmogorov-Smirnov测试积分(KSI)统计数据减少了50%。

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