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Very short-term solar irradiance forecast using all-sky imaging and real-time irradiance measurements

机译:使用全天候成像和实时辐照度测量进行非常短期的太阳辐照度预测

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A hybrid forecasting methodology to predict one-minute averaged solar irradiance one to ten minutes in advance is presented and evaluated. The methodology combines the use of all-sky images and irradiance measurements which are both processed in real time to produce the forecast. Pre-existing image processing techniques are locally adapted to estimate the mean motion of clouds, which is used to predict the future sun disk cover by clouds. Then, the predicted cloud information is converted into a solar irradiance estimate using the proposed model which uses real time measurements to extract its parameters for prediction. The validation of the method is done with a sample of 5238 forecasting time points, spread over a six-month period. The forecast uncertainty is assessed separately for clear, cloudy and partly cloudy days, revealing important characteristics of the model's performance under the different conditions. Under partly cloudy and highly variable conditions, positive forecasting skills with respect to regular persistence are achieved above forecasting horizons of two minutes, with a peak performance of 11.4% for forecasting horizons of six and ten minutes. The proposed model also outperforms a smart persistence model for all time horizons under these sky conditions. The model's ramp detection index (RDI, as defined in Chu et al. (2015)) is also evaluated for high and moderate ramps, achieving RDI indexes between 55 and 62% and between 43 and 49% for high and moderate ramps, respectively. These results show that in challenging highly variable solar irradiance conditions the proposed model is suitable for the very short term solar resource forecasting. (C) 2019 Elsevier Ltd. All rights reserved.
机译:提出并评估了一种混合预测方法,可以提前一到十分钟预测一分钟的平均太阳辐照度。该方法结合了全天候图像和辐照度测量的使用,两者均实时处理以产生预测。现有的图像处理技术在本地适用于估计云的平均运动,该运动用于预测云将来的太阳盘覆盖。然后,使用建议的模型将预测的云信息转换为太阳辐照度估计值,该模型使用实时测量值提取其参数进行预测。该方法的验证是通过在六个月的时间内分布的5238个预测时间点样本完成的。分别针对晴天,阴天和部分阴天评估了不确定性,揭示了在不同条件下模型性能的重要特征。在部分多云和多变的条件下,在两分钟的预测范围内可获得有关常规持久性的积极预测技能,在六分钟和十分钟的预测范围内,其峰值性能为11.4%。对于这些天空条件下的所有时间范围,建议的模型还优于智能持久性模型。还针对高和中等斜率评估了模型的斜率检测指数(RDI,如Chu等人(2015年)所定义),对于高和中等斜率,RDI指数分别达到55%至62%和43%至49%。这些结果表明,在具有挑战性的高度可变的太阳辐照条件下,所提出的模型适用于非常短期的太阳能预测。 (C)2019 Elsevier Ltd.保留所有权利。

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