New Methods toward Minimizing the Slow Speed Bias Associated with Atmospheric Motion Vectors

Author:

Bresky Wayne C.,Daniels Jaime M.,Bailey Andrew A.,Wanzong Steven T.

Abstract

AbstractComparisons between satellite-derived winds and collocated rawinsonde observations often show a pronounced slow speed bias at mid- and upper levels of the atmosphere. A leading cause of the slow speed bias is the improper assignment of the tracer to a height that is too high in the atmosphere. Height errors alone cannot fully explain the slow bias, however. Another factor influencing the speed bias is the size of the target window used in the tracking step. Tracking with a large target window can cause excessive averaging to occur and a smoothing of the instantaneous wind field. Conversely, if too small a window is specified, there is an increased risk of finding a false match. The authors have developed a new “nested tracking” approach that isolates the dominant local motion within a cloud scene and minimizes the smoothing of the motion estimate. A major advantage of the new approach is the ability to identify which pixels within the cloud scene are contributing to the tracking solution. Knowing which pixels contribute to the dominant motion allows for a more representative height to be derived, thereby directly linking the height assignment to the tracking process, which is an important goal for producers of global atmospheric motion vector (AMV) data. When compared with equivalent rawinsondes, the AMVs derived with the new approach show a considerable improvement in the speed bias and root-mean-square error over a control set of AMVs derived with more-conventional methods.

Publisher

American Meteorological Society

Subject

Atmospheric Science

Reference25 articles.

1. Borde, R., and R.Oyama, 2008: A direct link between feature tracking and height assignment of operational atmospheric motion vectors. Proc. Ninth Int. Winds Workshop,Annapolis, MD, EUMETSAT, 8 pp. [Available online at http://www.eumetsat.int/Home/Main/AboutEUMETSAT/Publications/ConferenceandWorkshopProceedings/2008/groups/cps/documents/ document/pdf_conf_p51_s3_13_borde_v.pdf.]

2. Bormann, N., G.Kelly, and J.-N.Thépaut, 2002: Characterising and correcting speed biases in atmospheric motion vectors within the ECMWF system. Proc. Sixth Int. Winds Workshop, Madison, WI, EUMETSAT, 113–120. [Available online at http://cimss.ssec.wisc.edu/iwwg/iww6/session3/bormann_1_bias.pdf.]

3. Daniels, J., W.Bresky, S.Wanzong, C.Velden, and H.Berger, 2010: GOES-R Advanced Baseline Imager (ABI) algorithm theoretical basis document for derived motion winds. GOES-R Program Office, 96 pp. [Available online at http://www.goes-r.gov/products/ATBDs/baseline/Winds_DMW_v2.0_no_color.pdf.]

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