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Irradiance prediction intervals for PV stochastic generation in microgrid applications

机译:微电网应用中光伏随机发电的辐照度预测间隔

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摘要

The increasing interest in integrating volatile resources into microgrids implies the necessity of quantifying the uncertainty of photovoltaic (PV) production using dedicated probabilistic forecast techniques. The work presents a novel method to construct ultra -short-term and short-term prediction intervals (Pis) for solar global horizontal irradiance (GHI). The model applies the k-means algorithm to cluster observations of the clear-sky index according to the value of selected data features. At each timestep, the features are compared with the actual conditions to identify the representative cluster. The lower and upper bounds of the PI are calculated as the quantiles of the irradiance instances belonging to the selected cluster at a target confidence level. The validation is performed in 3 datasets of GHI measurements, each one of 85 days. The model is able to deliver high performance PIs for forecast horizons ranging from sub-second to intra-hour ahead without the need of additional sensing systems such as all-sky cameras. (C) 2016 Elsevier Ltd. All rights reserved.
机译:将挥发性资源整合到微电网中的兴趣日益浓厚,这意味着有必要使用专门的概率预测技术来量化光伏(PV)生产的不确定性。这项工作提出了一种新颖的方法来构造太阳总水平辐照度(GHI)的超短期和短期预测间隔(Pis)。该模型根据所选数据特征的值,将k-means算法应用于对晴空指数的观测进行聚类。在每个时间步,将特征与实际条件进行比较,以识别出代表性簇。 PI的下限和上限被计算为属于目标置信度级别的所选聚类的辐照度实例的分位数。在3个GHI测量数据集中进行验证,每个数据集为85天。该模型能够为从不到一秒到一小时内的预测范围提供高性能的PI,而无需诸如全天候摄像机之类的其他传感系统。 (C)2016 Elsevier Ltd.保留所有权利。

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