首页> 外文会议>Remote Sensing of Clouds and the Atmosphere XIX; and Optics in Atmospheric Propagation and Adaptive Systems XVII >Cloud pattern prediction from geostationary meteorological satellite images for solar energy forecasting
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Cloud pattern prediction from geostationary meteorological satellite images for solar energy forecasting

机译:利用地球静止气象卫星图像进行云模式预测以进行太阳能预测

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Surface solar radiation forecasting permits to predict photovoltaic plant production for a massive and safe integration of solar energy into the electric network. For short-term forecasts (intra-day), methods using images from meteorological geostationary satellites are more suitable than numerical weather prediction models. Forecast schemes consist in assessing cloud motion vectors and in extrapolating cloud patterns from a given satellite image in order to predict cloud cover state above a PV plant. Atmospheric motion vectors retrieval techniques have been studied for several decades in order to improve weather forecasts. However, solar energy forecasting requires the extraction of cloud motion vectors on a finer spatial- and time-resolution than those provided for weather forecast applications. Even if motion vector retrieval is a wide research field in image processing related topics, only block-matching techniques are operationally used for solar energy forecasts via satellite images. In this paper, we propose two motion vectors extraction methods originating from video compression techniques (correlation phase and optical flow methods). We implemented them on a 6-day dataset of Meteosat-10 satellite diurnal images. We proceeded to cloud pattern extrapolation and compared predicted cloud maps against actual ones at different time horizons from 15 minutes to 4 hours ahead. Forecast scores were compared to the state-of-the-art (block matching) method. Correlation phase methods do not outperform block-matching but their computation time is about 25 times shorter. Optical flow based method outperforms all the methods with a satisfactory time computing.
机译:地表太阳辐射预测可以预测光伏电站的生产,以将太阳能大规模安全地集成到电网中。对于短期预报(日内),使用气象地球静止卫星图像的方法比数值天气预报模型更合适。预测方案包括评估云运动矢量和从给定的卫星图像中推断云模式,以预测光伏电站上方的云层覆盖状态。为了改善天气预报,已经研究了大气运动矢量检索技术数十年。但是,与天气预报应用程序相比,太阳能天气预报需要在更精细的空间和时间分辨率上提取云运动矢量。即使运动矢量检索是图像处理相关主题中的广泛研究领域,但只有块匹配技术可操作地用于通过卫星图像进行太阳能预测。在本文中,我们提出了两种源自视频压缩技术的运动矢量提取方法(相关相位和光流方法)。我们在6天的Meteosat-10卫星昼夜图像数据集上实现了它们。我们进行了云模式外推,并比较了从15分钟到4小时的不同时间范围内的预测云图与实际图。将预测分数与最新技术(块匹配)方法进行比较。相关阶段方法的性能不超过块匹配,但它们的计算时间缩短了约25倍。基于光流的方法在令人满意的时间计算上胜过所有方法。

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