The Impact of High-Density Airborne Observations and Atmospheric Motion Vector Observation Assimilation on the Prediction of Rapid Intensification of Hurricane Matthew (2016)
Abstract
:1. Introduction
2. Overview of Hurricane Matthew
3. Model, Observational Data, and Experimental Design
3.1. HWRF Model Configurations and the Assimilation System
3.2. The Observational Data
3.3. Experimental Design
4. Results of Experiments
4.1. Impact of DA Methods (3DEnVar vs. 4DEnVar)
4.2. Impacts of Pre-Processing (Thinning vs. Superobbing)
5. Impact of Assimilating HDOB and AMV on RI Prediction
5.1. The Impact of Assimilating HDOB and AMV on Inner-Core and Outflow Structures in Analysis Fields (Shear-Relative Distribution)
5.2. The Impact of Assimilating HDOB and AMV on the RI forecast
6. Conclusions and Discussion
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
References
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Exp. Name | General Information | DA Method | Pre-Pro | Additional Obs Assimilated |
---|---|---|---|---|
Baseline | Background: 6-h control forecast initialized from the GSI-based, continuously cycled, dual-resolution hybrid ensemble-variational (EnVar) DA system for HWRF valid at 1800 UTC 29 September 2016. Physics: H216 Physics + Modified turbulent mixing parameterization Observations: Operational HWRF observations (conventional obs., satellite radiances, et al.) | 4DEnVar | No | No |
3DEV | 3DEnVar | No | FL and SFMR CIMSS AMV | |
4DEV | 4DEnVar | No | ||
4DEV-thin | 4DEnVar | Thinning | ||
4DEV-sob | 4DEnVar | Sob |
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Lyu, X.; Wang, X. The Impact of High-Density Airborne Observations and Atmospheric Motion Vector Observation Assimilation on the Prediction of Rapid Intensification of Hurricane Matthew (2016). Atmosphere 2024, 15, 395. https://doi.org/10.3390/atmos15040395
Lyu X, Wang X. The Impact of High-Density Airborne Observations and Atmospheric Motion Vector Observation Assimilation on the Prediction of Rapid Intensification of Hurricane Matthew (2016). Atmosphere. 2024; 15(4):395. https://doi.org/10.3390/atmos15040395
Chicago/Turabian StyleLyu, Xinyan, and Xuguang Wang. 2024. "The Impact of High-Density Airborne Observations and Atmospheric Motion Vector Observation Assimilation on the Prediction of Rapid Intensification of Hurricane Matthew (2016)" Atmosphere 15, no. 4: 395. https://doi.org/10.3390/atmos15040395
APA StyleLyu, X., & Wang, X. (2024). The Impact of High-Density Airborne Observations and Atmospheric Motion Vector Observation Assimilation on the Prediction of Rapid Intensification of Hurricane Matthew (2016). Atmosphere, 15(4), 395. https://doi.org/10.3390/atmos15040395