Examining the Impact of Assimilating Surface, PBL, and Free Atmosphere Observations from TORUS on Analyses and Forecasts of Two Supercells on 8 June 2019

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Název: Examining the Impact of Assimilating Surface, PBL, and Free Atmosphere Observations from TORUS on Analyses and Forecasts of Two Supercells on 8 June 2019
Autoři: Matthew B. Wilson, Adam L. Houston
Zdroj: Monthly Weather Review. 153:1105-1128
Informace o vydavateli: American Meteorological Society, 2025.
Rok vydání: 2025
Témata: 13. Climate action, 0207 environmental engineering, 02 engineering and technology, 01 natural sciences, 0105 earth and related environmental sciences
Popis: This study describes data-denial experiments conducted to examine the impact of assimilating subsets of data from the Targeted Observation by Radars and Unoccupied Aerial Systems of Supercells (TORUS) project on storm-scale ensemble forecasts of two supercells on 8 June 2019. Assimilated data from TORUS include mobile mesonet, unoccupied aerial system (UAS), and radiosonde observations. The TORUS data are divided into three spatial subsets to evaluate the importance of observing different parts of the atmosphere on forecasts of this case: the surface (SFC) subset consisting of just the near-surface mobile mesonet observations, the PBL subset consisting of UAS observations and radiosonde profiles below 762 m, and the FREE subset consisting of radiosonde profiles above 762 m. Data-denial experiments are then conducted by comparing analyses and free forecasts generated using a cycled EnKF data assimilation system assimilating conventional observations, radar observations, and all of the TORUS observations at once with experiments where one of the three subsets is removed in turn as well as a control experiment assimilating only conventional and radar observations. Our results show that assimilating all of the TORUS observations at once in the ALL experiment improves the storm-scale ensemble forecasts much more often than it degrades them and that no one subset of the TORUS data was consistently most important for improving the analyses or forecasts.
Druh dokumentu: Article
ISSN: 1520-0493
0027-0644
DOI: 10.1175/mwr-d-23-0247.1
Rights: URL: http://www.ametsoc.org/PUBSReuseLicenses
Přístupové číslo: edsair.doi...........3af5582824dddd7a5c07f29005184ce3
Databáze: OpenAIRE
Popis
Abstrakt:This study describes data-denial experiments conducted to examine the impact of assimilating subsets of data from the Targeted Observation by Radars and Unoccupied Aerial Systems of Supercells (TORUS) project on storm-scale ensemble forecasts of two supercells on 8 June 2019. Assimilated data from TORUS include mobile mesonet, unoccupied aerial system (UAS), and radiosonde observations. The TORUS data are divided into three spatial subsets to evaluate the importance of observing different parts of the atmosphere on forecasts of this case: the surface (SFC) subset consisting of just the near-surface mobile mesonet observations, the PBL subset consisting of UAS observations and radiosonde profiles below 762 m, and the FREE subset consisting of radiosonde profiles above 762 m. Data-denial experiments are then conducted by comparing analyses and free forecasts generated using a cycled EnKF data assimilation system assimilating conventional observations, radar observations, and all of the TORUS observations at once with experiments where one of the three subsets is removed in turn as well as a control experiment assimilating only conventional and radar observations. Our results show that assimilating all of the TORUS observations at once in the ALL experiment improves the storm-scale ensemble forecasts much more often than it degrades them and that no one subset of the TORUS data was consistently most important for improving the analyses or forecasts.
ISSN:15200493
00270644
DOI:10.1175/mwr-d-23-0247.1