See the Light: Modeling Solar Performance using Multispectral Satellite Data

A. S. Bansal, David E. Irwin
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引用次数: 1

Abstract

Developing accurate solar performance models, which infer solar output from widely available external data sources, is increasingly important as the grid's solar capacity rises. These models are important for a wide range of solar analytics, including solar forecasting, resource estimation, and fault detection. The most significant error in existing models is inaccurate estimates of clouds' effect on solar output, as cloud formations and their impact on solar radiation are highly complex. In 2018 and 2019, respectively, the National Oceanic and Atmospheric Administration (NOAA) in the U.S. began releasing multispectral data comprising 16 different light wavelengths (or channels) from the GOES-16 and GOES-17 satellites every 5 minutes. Enough channel data is now available to learn solar performance models using machine learning (ML). In this paper, we show how to develop both local and global solar performance models using ML on multispectral data, and compare their accuracy to existing physical models based on ground-level weather readings and on NOAA's estimates of downward shortwave radiation (DSR), which also derive from multispectral data but using a physical model. We show that ML-based solar performance models based on multispectral data are much more accurate than weather- or DSR-based models, improving the average MAPE across 29 solar sites by over 50% for local models and 25% for global models.
看到光:使用多光谱卫星数据模拟太阳性能
随着电网太阳能容量的增加,开发准确的太阳能性能模型,从广泛可用的外部数据源推断太阳能输出,变得越来越重要。这些模型对于广泛的太阳能分析非常重要,包括太阳能预测、资源估计和故障检测。由于云的形成及其对太阳辐射的影响是非常复杂的,现有模式中最显著的错误是对云对太阳输出的影响的不准确估计。分别在2018年和2019年,美国国家海洋和大气管理局(NOAA)开始每5分钟发布一次来自GOES-16和GOES-17卫星的多光谱数据,包括16种不同的光波长(或通道)。现在有足够的通道数据可以使用机器学习(ML)来学习太阳能性能模型。在本文中,我们展示了如何在多光谱数据上使用ML开发局部和全球太阳性能模型,并将其与基于地面天气读数和NOAA对向下短波辐射(DSR)的估计的现有物理模型的准确性进行比较,后者也来自多光谱数据,但使用物理模型。我们发现,基于多光谱数据的基于ml的太阳性能模型比基于天气或dsr的模型更准确,将29个太阳站点的平均MAPE提高了50%以上,将全球模型提高了25%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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