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Evaluating the spatio-temporal performance of sky-imager-based solar irradiance analysis and forecasts

机译:评估Sky-Imager的太阳辐照度分析和预测的时空性能

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Clouds are the dominant source of small-scale variability in surface solar radiation and uncertainty in its prediction. However, the increasing share of solar energy in the worldwide electric power supply increases the need for accurate solar radiation forecasts. In this work, we present results of a very short term global horizontal irradiance (GHI) forecast experiment based on hemispheric sky images. A 2-month data set with images from one sky imager and high-resolution GHI measurements from 99 pyranometers distributed over 10?km by 12?km is used for validation. We developed a multi-step model and processed GHI forecasts up to 25?min with an update interval of 15?s. A cloud type classification is used to separate the time series into different cloud scenarios. Overall, the sky-imager-based forecasts do not outperform the reference persistence forecasts. Nevertheless, we find that analysis and forecast performance depends strongly on the predominant cloud conditions. Especially convective type clouds lead to high temporal and spatial GHI variability. For cumulus cloud conditions, the analysis error is found to be lower than that introduced by a single pyranometer if it is used representatively for the whole area in distances from the camera larger than 12?km. Moreover, forecast skill is much higher for these conditions compared to overcast or clear sky situations causing low GHI variability, which is easier to predict by persistence. In order to generalize the cloud-induced forecast error, we identify a variability threshold indicating conditions with positive forecast skill.
机译:云是表面太阳辐射和预测中的不确定度的小规模变异的主导来源。然而,在全球电力供应中,太阳能的份额越来越多地增加了对精确的太阳辐射预测的需求。在这项工作中,我们呈现了基于半球天空图像的短期全球水平辐照度(GHI)预测实验的结果。使用来自一个天空成像仪和高分辨率GHI测量的2个月的数据集,来自99个焦虑计的高分辨率测量分布在10多km×12 km的10 km用来验证。我们开发了一个多步模型,并加工了高达25?min的GHI预测,更新间隔为15?s。云类型分类用于将时间序列分为不同的云场景。总的来说,基于Sky Imager的预测不会越优于参考持久预测。然而,我们发现分析和预测性能依赖于主要云条件。特别是对流式云导致高时和空间GHI变异性。对于积云云条件,发现分析误差低于单个绘制仪引入的误差,如果它是代表性的,如果它在大于12?KM的相机的距离中代表整个区域。此外,与导致低GHI变异性的阴云密布或清晰的天空情况相比,这些条件的预测技能要高得多,这更容易通过持久性预测。为了概括云引起的预测误差,我们确定了具有正预测技能的可变性阈值指示条件。

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