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Applying the kriging method to predicting irradiance variability at a potential PV power plant

机译:应用克里金法预测潜在光伏电站的辐照度变化

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One-second irradiance data from forty-five sensors spaced over a one-mile square section of land were analyzed to characterize the short-term (1-s to 1-min) variability of the solar resource in Northern Arizona. The geostatistical interpolation model known as kriging was applied to our data set to better understand the method's strengths and weaknesses in accurately predicting the variations in the irradiance over this relatively small section of land. Of particular interest was to investigate the ability of the kriging method to show the variation in solar irradiance over the section of land as compared to that measured by the sensors. When using data from all the sensors as input to the prediction method, kriging performed very well compared to the sensors. However, because it is unlikely to have a large number of sensors to characterize the variability at a prospective solar site, it was also of interest to investigate how many sensors are required as input to the kriging technique in order to generate a reliable prediction. Solar data from four characteristic periods (related to the four seasons) were analyzed, and different sensor configurations, consisting of subsets of the actual sensor array, were employed using the method to demonstrate the number of sensors required to correctly characterize the short-term irradiance variability at the site. Using four measurement stations as input to the kriging method was shown to reasonably represent the variability in the 1-s to 1-min timescales. (C) 2015 Elsevier Ltd. All rights reserved.
机译:分析了来自在一个1平方英里的土地上分布的四十五个传感器的一秒辐照度数据,以表征亚利桑那州北部太阳能资源的短期(1-s至1分钟)变化。我们将称为kriging的地统计插值模型应用于我们的数据集,以更好地了解该方法的优缺点,以便准确预测这片相对较小的土地上的辐照度变化。特别令人感兴趣的是研究克里金法显示与传感器测量的相比,该区域上太阳辐照度变化的能力。当使用来自所有传感器的数据作为预测方法的输入时,与传感器相比,克里金法执行得很好。但是,由于不太可能具有大量传感器来表征预期太阳能站点的变化,因此也有兴趣研究需要多少个传感器作为克里金法技术的输入,以生成可靠的预测。分析了来自四个特征时段(与四个季节有关)的太阳数据,并使用了由实际传感器阵列的子集组成的不同传感器配置,使用该方法来演示正确表征短期辐照度所需的传感器数量现场的可变性。结果表明,使用四个测量站作为克里格法的输入,可以合理地表示1-s到1min时标的变化。 (C)2015 Elsevier Ltd.保留所有权利。

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