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A Deep Learning Approach to Solar-Irradiance Forecasting in Sky-Videos

机译:天空视频中太阳辐照度预测的深度学习方法

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Ahead-of-time forecasting of incident solar-irradiance on a panel is indicative of expected energy yield and is essential for efficient grid distribution and planning. Traditionally, these forecasts are based on meteorological physics models whose parameters are tuned by coarse-grained radiometric tiles sensed from geo-satellites. This research presents a novel application of deep neural network approach to observe and estimate short-term weather effects from videos. Specifically, we use time-lapsed videos (sky-videos) obtained from upward facing wide-lensed cameras (sky-cameras) to directly estimate and forecast solar irradiance. We introduce and present results on two large publicly available datasets obtained from weather stations in two regions of North America using relatively inexpensive optical hardware. These datasets contain over a million images that span for 1 and 12 years respectively, the largest such collection to our knowledge. Compared to satellite based approaches, the proposed deep learning approach significantly reduces the normalized mean-absolute-percentage error for both nowcasting, i.e. prediction of the solar irradiance at the instance the frame is captured, as well as forecasting, ahead-of-time irradiance prediction for a duration for upto 4 hours.
机译:提前预测面板上入射的太阳辐照度可指示预期的能源产量,并且对于有效的电网分配和规划至关重要。传统上,这些预测基于气象物理模型,其参数由从地球卫星感测到的粗粒度辐射图块进行调整。这项研究提出了深度神经网络方法在视频中观察和估计短期天气影响的新应用。具体来说,我们使用从面向上的广角镜头相机(天空相机)获得的延时视频(天空相机)直接估算和预测太阳辐照度。我们使用相对便宜的光学硬件,从北美两个地区的气象站获得的两个大型公共可用数据集上介绍并介绍了结果。这些数据集包含超过一百万张图像,分别跨越1年和12年,这是我们所知最大的图像集合。与基于卫星的方法相比,建议的深度学习方法显着降低了临近预报的标准化均值-绝对百分比误差,即,在捕获帧的情况下对太阳辐照度的预测以及对提前辐照度的预测预测持续时间长达4小时。

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