Solar Forecasts Based on the Clear Sky Index or the Clearness Index: Which Is Better?

IF 0.9 Q4 GEOCHEMISTRY & GEOPHYSICS Solar-Terrestrial Physics Pub Date : 2022-10-11 DOI:10.3390/solar2040026
P. Lauret, R. Alonso-Suárez, Josselin Le Gal La Salle, M. David
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引用次数: 1

Abstract

In the realm of solar forecasting, it is common to use a clear sky model output to deseasonalise the solar irradiance time series needed to build the forecasting models. However, most of these clear sky models require the setting of atmospheric parameters for which accurate values may not be available for the site under study. This can hamper the accuracy of the prediction models. Normalisation of the irradiance data with a clear sky model leads to the construction of forecasting models with the so-called clear sky index. Another way to normalize the irradiance data is to rely on the extraterrestrial irradiance, which is the irradiance at the top of the atmosphere. Extraterrestrial irradiance is defined by a simple equation that is related to the geometric course of the sun. Normalisation with the extraterrestrial irradiance leads to the building of models with the clearness index. In the solar forecasting domain, most models are built using time series based on the clear sky index. However, there is no empirical evidence thus far that the clear sky index approach outperforms the clearness index approach. Therefore the goal of this preliminary study is to evaluate and compare the two approaches. The numerical experimental setup for evaluating the two approaches is based on three forecasting methods, namely, a simple persistence model, a linear AutoRegressive (AR) model, and a non-linear neural network (NN) model, all of which are applied at six sites with different sky conditions. It is shown that normalization of the solar irradiance with the help of a clear sky model produces better forecasts irrespective of the type of model used. However, it is demonstrated that a nonlinear forecasting technique such as a neural network built with clearness time series can beat simple linear models constructed with the clear sky index.
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晴空指数与净度指数孰优孰劣?
在太阳预报领域,通常使用晴空模型输出来对建立预报模型所需的太阳辐照度时间序列进行反季节化。然而,这些晴空模式大多需要设定大气参数,而这些参数在研究地点可能无法获得准确的数值。这可能会妨碍预测模型的准确性。用晴空模式对辐照度数据进行归一化,就可以建立所谓晴空指数的预报模式。另一种标准化辐照度数据的方法是依靠地外辐照度,即大气顶部的辐照度。地外辐射是由一个简单的方程来定义的,这个方程与太阳的几何轨迹有关。利用地外辐照度进行归一化可以建立具有清晰度指数的模型。在太阳预报领域,大多数模型是基于晴空指数的时间序列建立的。然而,到目前为止,还没有经验证据表明晴空指数方法优于清晰度指数方法。因此,本初步研究的目的是评估和比较这两种方法。基于简单持续模型、线性自回归(AR)模型和非线性神经网络(NN)模型三种预测方法,在6个不同天空条件的站点上进行了数值实验,对两种方法进行了评价。结果表明,不论使用何种模式,在晴空模式的帮助下,太阳辐照度的归一化都能产生较好的预报。然而,研究表明,一种非线性预测技术,如用晴空时间序列构建的神经网络,可以胜过用晴空指数构建的简单线性模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Solar-Terrestrial Physics
Solar-Terrestrial Physics GEOCHEMISTRY & GEOPHYSICS-
CiteScore
1.50
自引率
9.10%
发文量
38
审稿时长
12 weeks
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