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Very Short-Term Surface Solar Irradiance Forecasting Based on FengYun-4 Geostationary Satellite

机译:基于FunYun-4对地静止卫星的极短期地表太阳辐照度预测

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摘要

An algorithm to forecast very short-term (30–180 min) surface solar irradiance using visible and near infrared channels (AGRI) onboard the FengYun-4A (FY-4A) geostationary satellite was constructed and evaluated in this study. The forecasting products include global horizontal irradiance (GHI) and direct normal irradiance (DNI). The forecast results were validated using data from Chengde Meteorological Observatory for four typical months (October 2018, and January, April, and July 2019), representing the four seasons. Particle Image Velocimetry (PIV) was employed to calculate the cloud motion vector (CMV) field from the satellite images. The forecast results were compared with the smart persistence (SP) model. A seasonal study showed that July and April forecasting is more difficult than during October and January. For GHI forecasting, the algorithm outperformed the SP model for all forecasting horizons and all seasons, with the best result being produced in October; the skill score was greater than 20%. For DNI, the algorithm outperformed the SP model in July and October, with skill scores of about 12% and 11%, respectively. Annual performances were evaluated; the results show that the normalized root mean square error (nRMSE) value of GHI for 30–180 min horizon ranged from 26.78 to 36.84%, the skill score reached a maximum of 20.44% at the 30-min horizon, and the skill scores were all above 0 for all time horizons. For DNI, the maximum skill score was 6.62% at the 180-min horizon. Overall, compared with the SP model, the proposed algorithm is more accurate and reliable for GHI forecasting and slightly better for DNI forecasting.
机译:在这项研究中,构建并评估了使用风云4A(FY-4A)静止卫星上的可见光和近红外通道(AGRI)预测非常短期(30-180分钟)的地面太阳辐照度的算法。预测产品包括全球水平辐照度(GHI)和直接法向辐照度(DNI)。使用来自承德气象台的四个典型月份(2018年10月以及2019年1月,4月和2019年7月)的数据验证了预报结果,代表了四个季节。粒子图像测速(PIV)用于从卫星图像计算云运动矢量(CMV)场。将预测结果与智能持久性(SP)模型进行了比较。一项季节性研究显示,7月和4月的预报比10月和1月的预报更为困难。对于GHI预报,该算法在所有预报水平和所有季节都优于SP模型,十月份的结果最好。技能得分大于20%。对于DNI,该算法在7月和10月优于SP模型,技能得分分别约为12%和11%。对年度业绩进行了评估;结果表明,在30-180分钟范围内,GHI的归一化均方根误差(nRMSE)值为26.78至36.84%,在30分钟范围内,技能得分最高为20.44%,在所有时间范围内均大于0。对于DNI,在180分钟的视线范围内,最高技能得分为6.62%。总体而言,与SP模型相比,该算法对于GHI预测更加准确可靠,而对于DNI预测则稍好一些。

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