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CLOUD ADVECTION SCHEMES FOR SHORT-TERM SATELLITE-BASED INSOLATION FORECASTS

机译:短期基于卫星的合并预测的云建议方案

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Prediction of solar insolation is a problem increasingly well-suited to observationally-based techniques at shorter forecast times. Here, the cloud distribution is well characterized by satellite imagery and the evolution of this field can be approximated to first order as simply translational (i.e. neglecting the evolution of cloud morphology). In this research, geostationary satellite observations are used with the NOAA Pathfinder Atmospheres - Extended (PATMOS-x) retrieval package, a standalone radiative transfer code, and wind field data from a numerical weather prediction (NWP) model to derive short-term (0-3) hour forecasts of insolation for applications in solar power generation. Different cloud advection schemes are compared and contrasted. One simple advection scheme determines the cloud pixel location and cloud-top height, then advects the pixel forward in space/time using the cloud-top height model wind value. A more sophisticated scheme uses additional retrieval properties to classify cloud pixel groups into cohesive objects which are then advected using model wind fields appropriate to the characteristics of the cloud group. In both cases the predictive skill falls off over time unless cloud evolution properties are introduced. Both schemes provide a short-term forecast of cloud location, which, when combined with predicted solar geometry, terrain height information, and sensor geometry determine the location of cloud shadows. The advected cloud and geometry information is used initialize a radiative transfer model to forecast insolation at these shadow locations. Presented are results of satellite-derived insolation forecasts validated against the NOAA-ESRL Surface Radiation (SURFRAD) network both in terms of point verification and area-averaged statistics.
机译:日照的预测已经越来越适合在较短的预测时间使用基于观测的技术的问题。在这里,云分布通过卫星图像很好地表征,并且该场的演化可以简单地转化为第一阶(即忽略云形态的演化)。在这项研究中,将对地静止卫星观测与NOAA探路者大气-扩展(PATMOS-x)检索软件包,独立的辐射传输代码以及来自数值天气预报(NWP)模型的风场数据一起使用,以得出短期(0 -3)太阳能发电中日照的小时预报。比较和对比了不同的云对流方案。一种简单的平流方案可确定云像素位置和云顶高度,然后使用云顶高度模型风速值在空间/时间上对像素进行平流。一种更复杂的方案使用附加的检索属性将云像素组分类为内聚对象,然后使用适合云组特征的模型风场将其平移。在这两种情况下,除非引入了云演化特性,否则预测技能都会随着时间的流逝而下降。两种方案都提供了对云位置的短期预测,当与预测的太阳几何形状,地形高度信息和传感器几何形状结合使用时,可以确定云阴影的位置。利用平移的云和几何信息初始化辐射传递模型,以预测这些阴影位置的日照。呈现的是在点验证和面积平均统计方面均针对NOAA-ESRL表面辐射(SURFRAD)网络进行了验证的卫星日照预测结果。

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