Upper-Tropospheric Winds Derived from Geostationary Satellite Water Vapor Observations

The coverage and quality of remotely sensed upper-tropospheric moisture parameters have improved considerably with the deployment of a new generation of operational geostationary meteorological satellites:GOES-8/9andGMS-5. TheGOES-8/9water vapor imaging capabilities have increased as a result of imp...

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Veröffentlicht in:Bulletin of the American Meteorological Society 1997-02, Vol.78 (2), p.173-195
Hauptverfasser: Velden, Christopher S., Hayden, Christopher M., Nieman, Steven J., Menzel, W. Paul, Wanzong, Steven, Goerss, James S.
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Sprache:eng
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Zusammenfassung:The coverage and quality of remotely sensed upper-tropospheric moisture parameters have improved considerably with the deployment of a new generation of operational geostationary meteorological satellites:GOES-8/9andGMS-5. TheGOES-8/9water vapor imaging capabilities have increased as a result of improved radiometric sensitivity and higher spatial resolution. The addition of a water vapor sensing channel on the latest GMS permits nearly global viewing of upper-tropospheric water vapor (when joined with GOES and Meteosat) and enhances the commonality of geostationary meteorological satellite observing capabilities. Upper-tropospheric motions derived from sequential water vapor imagery provided by these satellites can be objectively extracted by automated techniques. Wind fields can be deduced in both cloudy and cloud-free environments. In addition to the spatially coherent nature of these vector fields, theGOES-8/9multispectral water vapor sensing capabilities allow for determination of wind fields over multiple tropospheric layers in cloud-free environments. This article provides an update on the latest efforts to extract water vapor motion displacements over meteorological scales ranging from subsynoptic to global. The potential applications of these data to impact operations, numerical assimilation and prediction, and research studies are discussed.
ISSN:0003-0007
1520-0477
DOI:10.1175/1520-0477(1997)078<0173:utwdfg>2.0.co;2