Efficient Dynamical Downscaling of General Circulation Models Using Continuous Data Assimilation
Srinivas Desamsetti, Hari Prasad Dasari, Sabique Langodan, Edriss S, Titi, Omar Knio, Ibrahim Hoteit

TL;DR
This paper introduces continuous data assimilation (CDA) as an efficient method for dynamical downscaling of global atmospheric models, outperforming traditional techniques in capturing small-scale features and maintaining balance.
Contribution
The study demonstrates for the first time that CDA can effectively replace spectral nudging in dynamical downscaling, simplifying the process while improving accuracy.
Findings
CDA outperforms grid nudging in representing small-scale features.
CDA maintains balance between large- and small-scale atmospheric features.
CDA's rainfall distribution aligns closely with observations.
Abstract
Continuous data assimilation (CDA) is successfully implemented for the first time for efficient dynamical downscaling of a global atmospheric reanalysis. A comparison of the performance of CDA with the standard grid and spectral nudging techniques for representing long- and short-scale features in the downscaled fields using the Weather Research and Forecast (WRF) model is further presented and analyzed. The WRF model is configured at 25km horizontal resolution and is driven by 250km initial and boundary conditions from NCEP/NCAR reanalysis fields. Downscaling experiments are performed over a one-month period in January, 2016. The similarity metric is used to evaluate the performance of the downscaling methods for large and small scales. Similarity results are compared for the outputs of the WRF model with different downscaling techniques, NCEP reanalysis, and Final Analysis. Both…
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