A Deep Learning–Based Velocity Dealiasing Algorithm Derived from the WSR-88D Open Radar Product Generator
Radial velocity estimates provided by Doppler weather radar are critical measurements used by operational forecasters for the detection and monitoring of life-impacting storms. The sampling methods used to produce these measurements are inherently susceptible to aliasing, which produces ambiguous ve...
Main Authors: | Veillette, Mark S., Kurdzo, James M., Stepanian, Phillip M., McDonald, Joseph, Samsi, Siddharth, Cho, John Y. N. |
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Other Authors: | Lincoln Laboratory |
Format: | Article |
Published: |
American Meteorological Society Publications
2023
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Online Access: | https://hdl.handle.net/1721.1/153198 |
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