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Probabilistic forecasting of high-resolution clear-sky index time-series using a Markov-chain mixture distribution model

机译:马尔可夫链混合分布模型对高分辨率晴空指数时间序列的概率预测

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摘要

This study presents a Markov-chain mixture (MCM) distribution model for forecasting the clear-sky index-normalized global horizontal irradiance. The model is presented in general, but applied to, and tested or minute resolution clear-sky index data for the two different climatic regions of Norrkoping, Sweden, and Hawaii USA. Model robustness is evaluated based on a cross-validation procedure and on that basis a reference con figuration of parameter settings for evaluating the model performance is obtained. Simulation results ar compared with persistence ensemble (PeEn) and quantile regression (QR) model simulations for both data set and for D = 1,...,5 steps ahead forecasting scenarios. The results are evaluated by a set of probabilistic fore casting metrics: reliability mean absolute error (reliability MAE), prediction interval normalized average widti (PINAW), continuous ranked probability score (CRPS) and continuous ranked probability skill score (skill). Botl in terms of reliability MAE and CRPS, the MCM model outperforms PeEn for all simulated scenarios. In terms c reliability MAE, the QR model outperforms the MCM model for most simulated scenarios. However, in terms c mean CRPS, the MCM model outperforms the QR model in most simulated scenarios. A point forecasting esti mate is also provided. The MCM model is concluded to be a computationally inexpensive, accurate and pars meter insensitive probabilistic model. Based on this, it is suggested as a candidate benchmark model in prop abilistic forecasting, in particular for solar irradiance forecasting. For applicability, a Python script of the MCA model is available as SheperoMah/MCM-distribution-forecasting at GitHub.
机译:这项研究提出了一种马尔可夫链混合(MCM)分布模型,用于预测晴空指数归一化的全局水平辐照度。总体上介绍了该模型,但该模型适用于瑞典诺尔雪平和美国夏威夷的两个不同气候区域,并经过了测试或具有微小分辨率的晴空指数数据。基于交叉验证过程评估模型的鲁棒性,并在此基础上获得用于评估模型性能的参数设置的参考配置。对于数据集和D = 1,...,5步提前预测方案,仿真结果与持久性集成(PeEn)和分位数回归(QR)模型仿真进行了比较。通过一组概率预测指标评估结果:可靠性平均绝对误差(可靠性MAE),预测区间归一化平均widti(PINAW),连续排名概率得分(CRPS)和连续排名概率技能得分(技能)。在可靠性MAE和CRPS方面,对于所有模拟场景,MCM模型均优于PeEn。就可靠性MAE而言,QR模型在大多数模拟情况下均优于MCM模型。但是,就平均CRPS而言,MCM模型在大多数模拟情况下均优于QR模型。还提供了点预测预估器。 MCM模型被认为是计算上便宜,准确且对参数表不敏感的概率模型。基于此,建议将其作为概率预测的候选基准模型,尤其是在太阳辐照度预测中。为了适用,可以在GitHub上通过SheperoMah / MCM-distribution-forecasting获得MCA模型的Python脚本。

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