机器学习与光线追踪预测边缘计算SkyImager的辐照度

W. Richardson, H. Krishnaswami, L. Shephard, R. Vega
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引用次数: 4

摘要

越来越多的光伏(PV)进入电网需要精确的小时内太阳辐照度预测。作者之前在圣安东尼奥的德克萨斯大学开发了一种低成本的全天成像系统。SkyImager硬件是围绕树莓派单板计算机(SBC)设计的,该计算机具有完全可编程的高分辨率树莓派相机,安装在全天候外壳中。处理图像和提前几分钟做出预测的软件是用Python 2.7编写的,并利用开源计算机视觉包OpenCV。预报的两步方法使用光流来跟踪低层积云,使用光线追踪来预测云阴影的位置。本文提出用一种机器学习策略来取代传统上被认为是不适定逆问题的光线追踪方法,该策略利用一种新的多层感知器(MLP)来对周太阳区域子图像中的云覆盖进行分类。开发的SkyImager于2015年部署在国家可再生能源实验室(NREL),在那里它成功地收集了数月的全天图像数据。2016年,第二台SkyImager集成到圣安东尼奥联合基地的微电网管理系统中。研究结果验证了所提出的方法。
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Machine learning versus ray-tracing to forecast irradiance for an edge-computing SkyImager
Increasing penetration of photovoltaics (PV) into the electric grid necessitates accurate intra-hour solar irra-diance forecasting. The authors have previously developed a low cost all-sky imaging system at the University of Texas at San Antonio. The SkyImager hardware is designed around a Raspberry Pi single board computer (SBC) with a fully programmable, high resolution Pi Camera, housed in an all-weather enclosure. The software to process the images and to make minutes-ahead forecasts is written in Python 2.7 and utilizes the open source computer vision package OpenCV. A two-step approach for the forecasts uses optical flow to track low-level cumulus clouds and ray-tracing to predict the location of cloud shadows. This paper proposes to replace the ray-tracing approach which is traditionally known to be an ill-posed inverse problem with a machine learning strategy that utilizes a novel multi-layer perceptron (MLP) to classify cloud-cover in sub-images of the circumsolar region. The developed SkyImager was deployed at the National Renewable Energy Laboratory (NREL) in 2015, where it successfully collected months of all-sky image data. In 2016 a second SkyImager was integrated into a microgrid management system at Joint Base San Antonio. Results are presented to validate the proposed methodology.
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