Affiliation:
1. a Cooperative Institute for Research in the Atmosphere, Colorado State University, Fort Collins, Colorado
2. b NASA Langley Research Center, Hampton, Virginia
Abstract
Abstract
This study introduces a validation technique for quantitative comparison of algorithms that retrieve winds from passive detection of cloud- and water vapor–drift motions, also known as atmospheric motion vectors (AMVs). The technique leverages airborne wind-profiling lidar data collected in tandem with 1-min refresh-rate geostationary satellite imagery. AMVs derived with different approaches are used with accompanying numerical weather prediction model data to estimate the full profiles of lidar-sampled winds, which enables ranking of feature tracking, quality control, and height-assignment accuracy and encourages mesoscale, multilayer, multiband wind retrieval solutions. The technique is used to compare the performance of two brightness motion, or “optical flow,” retrieval algorithms used within AMVs, 1) patch matching (PM; used within operational AMVs) and 2) an advanced variational optical flow (VOF) method enabled for most atmospheric motions by new-generation imagers. The VOF AMVs produce more accurate wind retrievals than the PM method within the benchmark in all imager bands explored. It is further shown that image regions with low texture and multilayer-cloud scenes in visible and infrared bands are tracked significantly better with the VOF approach, implying VOF produces representative AMVs where PM typically breaks down. It is also demonstrated that VOF AMVs have reduced accuracy where the brightness texture does not advect with the mean wind (e.g., gravity waves), where the image temporal noise exceeds the natural variability, and when the height assignment is poor. Finally, it is found that VOF AMVs have improved performance when using fine-temporal refresh-rate imagery, such as 1- versus 10-min data.
Publisher
American Meteorological Society
Reference73 articles.
1. A computational framework and an algorithm for the measurement of visual motion;Anandan, P.,1989
2. Apke, J. M., 2021: Optical flow Code for Tracking, Atmospheric motion vector, and Nowcasting Experiments (OCTANE). GitHub, https://github.com/JasonApke/OCTANE.
3. On the origin of rotation derived from super rapid scan satellite imagery at the cloud tops of severe deep convection;Apke, J. M.,2021
4. Analysis of mesoscale atmospheric flows above mature deep convection using super rapid scan geostationary satellite data;Apke, J. M.,2016
5. Relationships between deep convection updraft characteristics and satellite based super rapid scan mesoscale atmospheric motion vector derived flow;Apke, J. M.,2018
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