Strategies for Assimilating High-Density Atmospheric Motion Vectors into a Regional Tropical Cyclone Forecast Model (HWRF)
In recent years, atmospheric numerical modeling frameworks and satellite observing systems have both undergone significant advances. While these developments offer considerable potential for improving forecasts of high-impact weather events such as tropical cyclones (TC), much work remains to be don...
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doaj-f032e287bdf64db3b2bbf45040756b852020-11-25T03:47:06ZengMDPI AGAtmosphere2073-44332020-06-011167367310.3390/atmos11060673Strategies for Assimilating High-Density Atmospheric Motion Vectors into a Regional Tropical Cyclone Forecast Model (HWRF)William E. Lewis0Christopher S. Velden1David Stettner2Space Science and Engineering Center, Madison, WI 53706, USASpace Science and Engineering Center, Madison, WI 53706, USASpace Science and Engineering Center, Madison, WI 53706, USAIn recent years, atmospheric numerical modeling frameworks and satellite observing systems have both undergone significant advances. While these developments offer considerable potential for improving forecasts of high-impact weather events such as tropical cyclones (TC), much work remains to be done regarding the targeted processing and optimal use of observations now becoming available with high spatiotemporal resolution. Using the 2019 version of NCEP’s HWRF model, we explore several different strategies for the assimilation of TC-scale, high-density atmospheric motion vectors (AMVs) derived from the new-generation GOES-R series of geostationary satellites. Using 2017’s Atlantic Hurricane Irma as a case study, we examine the HWRF forecast impacts of observation pre-processing, including thinning and adjustments to observation errors. It is demonstrated that enhanced vortex-scale GOES-16 AMVs contribute to notable improvements in HWRF track forecast error compared to a baseline control experiment that does not incorporate the high-density AMVs. Impacts on TC intensity and structure (i.e., wind radii) forecast errors are less robust, but results from the optimization experiments suggest that further work (both with regard to data assimilation strategies and advancements in the methods themselves) should lead to improvements in these forecast variables as well.https://www.mdpi.com/2073-4433/11/6/673tropical cyclonesatmospheric motion vectorsGOES-16numerical weather predictiondata assimilationHWRF |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
William E. Lewis Christopher S. Velden David Stettner |
spellingShingle |
William E. Lewis Christopher S. Velden David Stettner Strategies for Assimilating High-Density Atmospheric Motion Vectors into a Regional Tropical Cyclone Forecast Model (HWRF) Atmosphere tropical cyclones atmospheric motion vectors GOES-16 numerical weather prediction data assimilation HWRF |
author_facet |
William E. Lewis Christopher S. Velden David Stettner |
author_sort |
William E. Lewis |
title |
Strategies for Assimilating High-Density Atmospheric Motion Vectors into a Regional Tropical Cyclone Forecast Model (HWRF) |
title_short |
Strategies for Assimilating High-Density Atmospheric Motion Vectors into a Regional Tropical Cyclone Forecast Model (HWRF) |
title_full |
Strategies for Assimilating High-Density Atmospheric Motion Vectors into a Regional Tropical Cyclone Forecast Model (HWRF) |
title_fullStr |
Strategies for Assimilating High-Density Atmospheric Motion Vectors into a Regional Tropical Cyclone Forecast Model (HWRF) |
title_full_unstemmed |
Strategies for Assimilating High-Density Atmospheric Motion Vectors into a Regional Tropical Cyclone Forecast Model (HWRF) |
title_sort |
strategies for assimilating high-density atmospheric motion vectors into a regional tropical cyclone forecast model (hwrf) |
publisher |
MDPI AG |
series |
Atmosphere |
issn |
2073-4433 |
publishDate |
2020-06-01 |
description |
In recent years, atmospheric numerical modeling frameworks and satellite observing systems have both undergone significant advances. While these developments offer considerable potential for improving forecasts of high-impact weather events such as tropical cyclones (TC), much work remains to be done regarding the targeted processing and optimal use of observations now becoming available with high spatiotemporal resolution. Using the 2019 version of NCEP’s HWRF model, we explore several different strategies for the assimilation of TC-scale, high-density atmospheric motion vectors (AMVs) derived from the new-generation GOES-R series of geostationary satellites. Using 2017’s Atlantic Hurricane Irma as a case study, we examine the HWRF forecast impacts of observation pre-processing, including thinning and adjustments to observation errors. It is demonstrated that enhanced vortex-scale GOES-16 AMVs contribute to notable improvements in HWRF track forecast error compared to a baseline control experiment that does not incorporate the high-density AMVs. Impacts on TC intensity and structure (i.e., wind radii) forecast errors are less robust, but results from the optimization experiments suggest that further work (both with regard to data assimilation strategies and advancements in the methods themselves) should lead to improvements in these forecast variables as well. |
topic |
tropical cyclones atmospheric motion vectors GOES-16 numerical weather prediction data assimilation HWRF |
url |
https://www.mdpi.com/2073-4433/11/6/673 |
work_keys_str_mv |
AT williamelewis strategiesforassimilatinghighdensityatmosphericmotionvectorsintoaregionaltropicalcycloneforecastmodelhwrf AT christophersvelden strategiesforassimilatinghighdensityatmosphericmotionvectorsintoaregionaltropicalcycloneforecastmodelhwrf AT davidstettner strategiesforassimilatinghighdensityatmosphericmotionvectorsintoaregionaltropicalcycloneforecastmodelhwrf |
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