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首页> 外文期刊>Solar Energy >A Physics-based Smart Persistence model for Intra-hour forecasting of solar radiation (PSPI) using GHI measurements and a cloud retrieval technique
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A Physics-based Smart Persistence model for Intra-hour forecasting of solar radiation (PSPI) using GHI measurements and a cloud retrieval technique

机译:基于物理的智能持久性模型,用于使用GHI测量和云检索技术在小时内对太阳辐射(PSPI)进行预测

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摘要

Short-term solar forecasting models based solely on global horizontal irradiance (GHI) measurements are often unable to discriminate the forecasting of the factors affecting GHI from those that can be precisely computed by atmospheric models. This study introduces a Physics-based Smart Persistence model for Intra-hour forecasting of solar radiation (PSPI) that decomposes the forecasting of GHI into the computation of extraterrestrial solar radiation and solar zenith angle and the forecasting of cloud albedo and cloud fraction. The extraterrestrial solar radiation and solar zenith angle are accurately computed by the Solar Position Algorithm (SPA) developed at the National Renewable Energy Laboratory (NREL). A cloud retrieval technique is used to estimate cloud albedo and cloud fraction from surface-based observations of GHI. With the assumption of persistent cloud structures, the cloud albedo and cloud fraction are predicted for future time steps using a two-stream approximation and a 5-min exponential weighted moving average, respectively. Our model evaluation using the long-term observations of GHI at NREL's Solar Radiation Research Laboratory (SRRL) shows that the PSPI has a better performance than the persistence and smart persistence models in all forecast time horizons between 5 and 60 min, which is more significant in cloudy-sky conditions. Compared to the persistence and smart persistence models, the PSPI does not require additional observations of various atmospheric parameters but is customizable in that additional observations, if available, can be ingested to further improve the GHI forecast. An advanced technology of cloud forecast is also expected to improve the future performance of the PSPI.
机译:仅基于全球水平辐照度(GHI)测量的短期太阳预报模型通常无法将影响GHI的因素与可以通过大气模型精确计算的因素区分开来。本研究引入了基于物理的太阳辐射小时内预测的智能持久性模型(PSPI),该模型将GHI的预测分解为地球外太阳辐射和太阳天顶角的计算以及云的反照率和云量的预测。通过国家可再生能源实验室(NREL)开发的太阳位置算法(SPA)可以精确计算出地外太阳辐射和太阳天顶角。云检索技术用于根据GHI的基于地面的观测值估算云的反照率和云分数。假设存在持久的云结构,分别使用两流逼近法和5分钟指数加权移动平均值来预测未来时间步长的云反射率和云分数。我们使用NREL太阳辐射研究实验室(SRRL)对GHI的长期观测进行的模型评估表明,在5至60分钟的所有预测时间范围内,PSPI的性能均优于持久性和智能持久性模型,这一点更为重要在多云的天空条件下。与持久性和智能持久性模型相比,PSPI不需要对各种大气参数进行额外的观测,而是可以自定义的,因为可以获取其他观测值(如果可用)以进一步改善GHI预测。云预测的先进技术也有望改善PSPI的未来性能。

著录项

  • 来源
    《Solar Energy》 |2019年第1期|494-500|共7页
  • 作者单位

    Natl Renewable Energy Lab, Power Syst Engn Ctr, 15013 Denver West Pkwy, Golden, CO 80401 USA;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);美国《生物学医学文摘》(MEDLINE);
  • 原文格式 PDF
  • 正文语种 eng
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