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Ensemble model output statistics for the separation of direct and diffuse components from 1-min global irradiance

机译:从1分钟全球辐照度分离直接和漫射组件的集合模型输出统计

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摘要

Separation models split diffuse and direct components of solar radiation from the global horizontal radiation. At the moment, all separation models only issue predictions that are deterministic (as opposed to probabilistic). Since the best prediction is necessarily probabilistic, a parametric post-processing framework called the ensemble model output statistics (EMOS) is introduced in this paper, to make probabilistic predictions. EMOS takes the diffuse fractions predicted by an ensemble of existing 1-min separation models, and outputs a predictive distribution, with parameters optimized by maximum likelihood estimation. Clearly, the EMOS-based separation modeling goes beyond the current literature, in terms of uncertainty quantification.Eight popular separation models from the literature, with different architectures, are used to demonstrate the predictive power of EMOS. Using 1-min high-quality radiometric data from seven stations in the USA and four stations in Europe, it is found that YANG2 is the best stand-alone model with an average RMSE of 21.8%, in terms of direct normal irradiance prediction, contrasting the 26.3% of the previously reported best model, namely, ENGERER2. On the other hand, the EMOS post-processed predictions have an average RMSE of 20.8%, which is lower than that of the best stand-alone model. Moreover, EMOS is shown superior to simple model averaging, in terms of continuous ranked probability score and ignorance score.
机译:分离模型从全球水平辐射分开太阳辐射的漫射和直接组件。目前,所有分离模型只会发出确定性的预测(而不是概率)。由于最佳预测必然是概率,因此本文介绍了称为集合模型输出统计信息(emOS)的参数后处理框架,以进行概率预测。 EMOS通过现有的1分钟分离模型的集合预测的漫反射部分,并输出预测分布,通过最大似然估计优化参数。显然,基于EMOS的分离建模超出了当前文献,就不确定性量化而言,来自文献的流行分离模型,用不同的架构,用于展示EMO的预测力。从美国的七个站点和欧洲的四个站使用1分钟的高质量辐射数据,发现阳2是平均RMSE的最佳独立模型,在直接正常的辐照度预测,对比度方面,平均RMSE为21.8%以前报道的最佳模型的26.3%,即Engerer2。另一方面,EMOS处理后预测的平均RMSE为20.8%,低于最好的独立模型。此外,在连续排名概率得分和无知评分方面,EMOS优于简单的模型平均。

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