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Improved model output statistics of numerical weather prediction based irradiance forecasts for solar power applications

机译:基于数值天气预报的辐照度预测的改进模型输出统计信息,用于太阳能应用

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The fast growth of solar photo-voltaic energy and the issues related to its integration in the power system are leading to an increased importance of forecasts of solar irradiance. Irradiance forecasts based on numerical weather prediction (NWP) models may be down-scaled to finer spatial and temporal granularity and corrected for systematic biases by applying so-called model output statistics (MOS). This paper presents a MOS routine that is based on a large set of meteorological variables that are available from standard NWP output and a clear sky model. The method is based on a stepwise linear regression algorithm yielding a regression model with a set of variables that best explains the observed forecast error. The resulting irradiance forecasts for the first forecast day averaged over an ensemble of 27 stations corrected with this model reduces the relative root mean square error (rRMSE) to 22.7% compared to a rRMSE of 37.8% of uncorrected forecasts and a rRMSE of 25.6% of forecasts corrected with a method based on only the solar zenith angle and the predicted clear sky index a method that is a current standard in NWP based irradiance forecasts. Furthermore, since this new method takes more meteorological information into account than the current standard method, the increase in skill evaluated in a probabilistic sense is even higher, because a forecast probability density is obtained that better reflects the sensitivity of forecast errors to atmospheric conditions. (C) 2015 Elsevier Ltd. All rights reserved.
机译:太阳能光伏能源的快速增长及其与电力系统集成相关的问题,导致对太阳辐照度的预测越来越重要。基于数值天气预报(NWP)模型的辐照度预测可以缩减为更精细的空间和时间粒度,并通过应用所谓的模型输出统计(MOS)进行系统性偏差校正。本文提出了一个MOS例程,该例程基于可从标准NWP输出和晴空模型获得的大量气象变量。该方法基于逐步线性回归算法,生成具有一组变量的回归模型,该变量可以最好地解释观察到的预测误差。使用此模型校正后,在27个观测站的集合中对第一个预报日进行的平均辐照度预报将相对均方根误差(rRMSE)降低至22.7%,而未校正预报的rRMSE为37.8%,而rRMSE为25.6%。使用仅基于太阳天顶角和预测的晴空指数的方法校正的预测,这是基于NWP的辐照度预测的当前标准。此外,由于此新方法比当前的标准方法考虑更多的气象信息,因此从概率意义上评估的技能提高甚至更高,因为获得的预测概率密度更好地反映了预测误差对大气条件的敏感性。 (C)2015 Elsevier Ltd.保留所有权利。

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