卫星导出的大气运动矢量在估算中尺度气流中的应用

K. Bedka, J. Mecikalski
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引用次数: 98

摘要

本研究通过对威斯康星大学麦迪逊分校气象卫星合作研究所(UW-CIMSS) AMV处理算法的调整,展示了获得高密度、卫星衍生的大气运动矢量(AMV)的方法,该大气运动矢量包含与积雨云相关和诱导的天气尺度和中尺度流动分量。操作AMV处理面向地转平衡天气尺度运动的识别,这在数据同化应用中是有用的。在深对流附近识别的AMV通常被用于生产操作AMV数据集的质量控制检查所拒绝。这些数据的很少用户考虑使用具有地转流成分的amv,这些成分通常无法确保相邻amv之间的空间一致性以及与nwp模型的第一猜测风场的强相关性。UW-CIMSS算法识别相干云和水蒸气特征(即....)
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Satellite-Derived Atmospheric Motion Vectors for Estimating Mesoscale Flows
Abstract This study demonstrates methods to obtain high-density, satellite-derived atmospheric motion vectors (AMV) that contain both synoptic-scale and mesoscale flow components associated with and induced by cumuliform clouds through adjustments made to the University of Wisconsin—Madison Cooperative Institute for Meteorological Satellite Studies (UW-CIMSS) AMV processing algorithm. Operational AMV processing is geared toward the identification of synoptic-scale motions in geostrophic balance, which are useful in data assimilation applications. AMVs identified in the vicinity of deep convection are often rejected by quality-control checks used in the production of operational AMV datasets. Few users of these data have considered the use of AMVs with ageostrophic flow components, which often fail checks that assure both spatial coherence between neighboring AMVs and a strong correlation to an NWP-model first-guess wind field. The UW-CIMSS algorithm identifies coherent cloud and water vapor features (i.e....
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