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Probabilistic forecasting of the clear-sky index using Markov-chain mixture distribution and copula models

机译:马尔可夫链混合分布和copula模型对晴空指数的概率预测

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Two probabilistic forecasting models for the clear-sky index, based on the Markov-chain mixture distribution (MCM) and copula clear-sky index generators, are presented and evaluated. In terms of performance, these models are compared with two benchmark models: a Quantile Regression (QR) model and the Persistence Ensemble (PeEn). The models are tested on minute resolution clear-sky index data, which was estimated from irradiance data for two different climatic regions: Hawaii, USA and Norrköping, Sweden. Results show that the copula model generally outperforms the PeEn, while the MCM and QR models are superior in all tested aspects. Comparing MCM and QR reliability, the QR is superior, while the MCM is superior in mean CRPS and skill score. The MCM model is proposed as a potential benchmark for probabilistic solar forecasting. The MCM model is available in Python as SheperoMah/MCM-distribution-forecasting at GitHub.
机译:提出并评估了两种基于马尔可夫链混合分布(MCM)和copula晴空指数生成器的晴空指数概率预测模型。在性能方面,将这些模型与两个基准模型进行了比较:分位数回归(QR)模型和持久性合奏(PeEn)。这些模型在微小分辨率的晴空指数数据上进行了测试,该数据是根据两个不同气候区域(美国夏威夷和瑞典北雪平)的辐照度数据估算得出的。结果表明,copula模型通常优于PeEn,而MCM和QR模型在所有测试方面均优于。将MCM和QR可靠性进行比较,QR优于平均水平,而MCM的平均CRPS和技能得分更高。建议将MCM模型作为概率太阳预报的潜在基准。 MCM模型可以在Python中以GitHub上的SheperoMah / MCM-distribution-forecasting的形式使用。

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