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Ensemble solar forecasting using data-driven models with probabilistic post-processing through GAMLSS

机译:使用通过GAMLSS使用具有概率后处理的数据驱动模型的集合太阳能预测

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Forecast performance of data-driven models depends on the local weather and climate regime, which makes model selection a tedious task for forecast practitioners. Ensemble forecasting, or forecast combination, is beneficial in such cases, in that, forecasts from multiple models are combined to form a final forecast. In ensemble forecasting, additional to the final deterministic-style forecasts, predictive distributions are also available, which can be used by grid operators for better decision-making. Such empirical predictive distributions are useful to represent the uncertainty associated with the forecasts. However, raw ensemble forecasts are often not calibrated, e.g., due to the lack of diversity in the ensemble members. The lack of ensemble spread is known as underdispersion, and it can be ameliorated through post-processing.This study aims to calibrate hourly ensemble clear-sky index forecasts, generated by 20 data-driven models, using both parametric and nonparametric post-processing techniques. Four years of data collected at 7 research-grade sites are used in the empirical part of the paper. Quantitative and qualitative methods are used to evaluate the performance of post-processing techniques in terms of calibration and sharpness. Post-processed ensemble forecasts outperform raw ensemble forecasts under all verification metrics. The proposed parametric post-processing technique, namely, generalized additive models for location, scale and shape, substantially reduces the continuous ranked probability score (CRPS) of the raw ensemble forecasts from 32-59 W/m(2) to 25-45 W/m(2) and quantile score from 16-30 W/m(2) to 13-23 W/m(2). In terms of CRPS skill score, the proposed method achieved 38-58% improvements over a climatology reference.
机译:预测数据驱动模型的性能取决于当地的天气和气候制度,这使得模型选择是预测从业者的繁琐任务。在这种情况下,集合预测或预测组合在这种情况下是有益的,因此,组合来自多种模型的预测以形成最终预测。在集合预测中,还提供了最终确定性风格预测,预测分布也是可用的,这可以通过电网运营商使用,以便更好地决策。这种经验预测性分布对于表示与预测相关的不确定性是有用的。然而,由于集体成员缺乏多样性,原始集合预测通常不会校准。缺乏合并传播被称为低分分解,可以通过后处理来改善。本研究旨在使用参数和非参数后处理技术校准由20个数据驱动模型产生的每小时合奏透明天空指数预测。在7个研究级网站上收集的四年数据用于本文的经验部分。定量和定性方法用于评估在校准和清晰度方面的处理后技术的性能。处理后的集合预测在所有验证度量标准下都是优于RANG Ensemble预测。所提出的参数后处理技术,即位置,规模和形状的广义添加剂模型,大大减少了从32-59 w / m(2)到25-45 w的原始集合预测的连续排名概率得分(CRP) / m(2)和分量分数从16-30 w / m(2)至13-23 w / m(2)。就CRPS技能评分而言,所提出的方法通过气候学参考实现了38-58%的改善。

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