1,151
Views
2
CrossRef citations to date
0
Altmetric
Articles

Application of multigrid NLS-4DVar in radar radial velocity data assimilation with WRF-ARW

, &
Pages 409-416 | Received 21 Feb 2019, Accepted 11 Jun 2019, Published online: 14 Oct 2019

References

  • Bao, X., Y. Luo, J. Sun, Z. Meng, and J. Yue. 2017. “Assimilating Doppler Radar Observations with an Ensemble Kalman Filter for Convection Permitting Prediction of Convective Development in a Heavy Rainfall Event during the Pre-summer Rainy Season of South China.” Science China Earth Sciences 60: 1866. doi:10.1007/s11430-017-9076-9.
  • Fabry, F., and A. Kilambi. 2011. “The Devil Is in the Details: Preparing Radar Information for Its Proper Assimilation.” 35th Conf. on Radar Meteorology, Pittsburgh, PA, Amer. Meteor. Soc., 19A.6. https://ams.confex.com/ams/35Radar/webprogram/Paper191698.html
  • Fu, H., X. R. Wu, W. Li, Y. F. Xie, G. J. Han, and S. Q. Zhang. 2016. “Reconstruction of Typhoon Structure Using 3-dimensional Doppler Radar Radial Velocity Data with the Multigrid Analysis: A Case Study in an Idealized Simulation Context.” Advances in Meteorology 2016: 1–10. doi:10.1155/2016/2170746.
  • Ide, K., P. Courtier, M. Ghil, and A. C. Lorenc. 1997. “Unified Notation for Data Assimilation: Operational, Sequential and Variational.” Journal of the Meteorological Society of Japan 75 (1B): 181–189. doi:10.2151/jmsj1965.75.1B_181.
  • Kalnay, E., and S. C. Yang. 2010. “Accelerating the Spin-up of Ensemble Kalman Filtering.” Quarterly Journal of the Royal Meteorological Society 136 (651): 1644–1651. doi:10.1002/qj.652.
  • Li, W., Y. Xie, S. Deng, and Q. Wang. 2010. “Application of the Multigrid Method to the Two-Dimensional Doppler Radar Radial Velocity Data Assimilation.” The Journal of Atmospheric and Oceanic Technology 27: 319–332. doi:10.1175/2009JTECHA1271.1.
  • Lorenc, A. C. 2003. “The Potential of the Ensemble Kalman Flter for NWP—Acomparison with 4d-var.” Quarterly Journal of the Royal Meteorological Society 129: 3183–3203. doi:10.1256/qj.02.132.
  • Sun, J., and N. A. Crook. 1997. “Dynamical and Microphysical Retrieval from Doppler Radar Observations Using a Cloud Model and Its Adjoint: Part I. Model Development and Simulated Data Experiments.” Journal of the Atmospheric Sciences 54: 1642–1661. doi:10.1175/1520-0469(1997)054<1642:DAMRFD>2.0.CO;2.
  • Sun, J., and N. A. Crook. 1998. “Dynamical and Microphysical Retrieval from Doppler Radar Observations Using a Cloud Model and Its Adjoint: Part II. Retrieval Experiments of an Observed Florida Convective Storm.” Journal of the Atmospheric Sciences 55: 835–852. doi:10.1175/1520-0469(1998)055<0835:DAMRFD>2.0.CO;2.
  • Sun, J., and H. Wang. 2013. “Radar Data Assimilation with WRF 4d-var. Part II: Comparison with 3d-var for a Squall Line over the U.S. Great Plains.” Monthly Weather Review 141: 2245–2264.
  • Thompson, T. E., L. J. Wicker, and X. Wang. 2012. “Impact from a Volumetric Radar-sampling Operator for Radial Velocity Observations within EnKF Supercell Assimilation.” The Journal of Atmospheric and Oceanic Technology 29: 1417–1427. doi:10.1175/JTECH-D-12-00088.1.
  • Tian, X. J., and X. B. Feng. 2015. “A Non-linear Least Squares Enhanced POD-4DVar Algorithm for Data Assimilation.” Tellus A 67: 25340. doi:10.3402/tellusa.v67.25340.
  • Tian, X. J., Z. H. Xie, and A. G. Dai. 2008. “An Ensemble-based Explicit Four-dimensional Variational Assimilation Method.” Journal of Geophysical Research 113: D21124. doi:10.1029/2008JD010358.
  • Tian, X. J., Z. H. Xie, and Q. Sun. 2011. “A POD-based Ensemble Four-dimensional Variational Assimilation Method.” Tellus A 63: 805–816. doi:10.1111/j.1600-0870.2011.00529.x.
  • Tian, X. J., H. Q. Zhang, X. B. Feng, and Y. F. Xie. 2018. “Nonlinear Least Squares En4DVar to 4denvar Methods for Data Assimilation: Formulation, Analysis and Preliminary Evaluation.” Monthly Weather Review 146: 77–93. doi:10.1175/MWR-D-17-0050.1.
  • Wang, H., J. Sun, X. Zhang, X. Huang, and T. Auligne´. 2013. “Radar Data Assimilation with WRF 4d-var. Part I: System Development and Preliminary Testing.” Monthly Weather Review 141: 2224–2244. doi:10.1175/MWR-D-12-00168.1.
  • Xie, Y., S. Koch, J. McGinley, S. Albers, P. E. Bieringer, M. Wolfson, and M. Chan. 2011. “A Space–Time Multiscale Analysis System: A Sequential Variational Analysis Approach.” Monthly Weather Review 139 (4): 1224–1240. doi:10.1175/2010MWR3338.1.
  • Xie, Y., S. E. Koch, J. A. McGinley, S. Albers, and N. Wang. 2005. “A Sequential Variational Analysis Approach for Mesoscale Data Assimilation, Preprints.” 21st Conf. on Weather Analysis and Forecasting/17th Conf. on Numerical Weather Prediction, Washington, DC: Amer. Meteor. Soc., 15B.7. http://ams.confex.com/ams/pdfpapers/93468.pdf.
  • Zhang, B., X. Tian, J. Sun, F. Chen, Y. Zhang, L. Zhang, and S. Fu. 2015. “PODEn4DVar-based Radar Data Assimilation Scheme: Formulation and Preliminary Results from Real-data Experiments with Advanced Research WRF(ARW).” Tellus A 67: 26045. doi:10.3402/tellusa.v67.26045.
  • Zhang, B., X. J. Tian, L. F. Zhang, and J. H. Sun. 2017a. “The Radar Data Assimilation System Based on NLS-4DVar and Its Application. in Heavy Rain Forecast.” Chinese Journal of Atmospheric Sciences (in Chinese) 41 (2): 321−332. doi:10.3878/j.issn.1006-9895.1607.16103.
  • Zhang, H., J. Xue, S. Zhuang, G. Zhu, and Z. Zhu. 2004. “GRAPeS 3d-var Data Assimilation System Ideal Experiments.” Acta Meteorologica Sinca 62: 31–41.
  • Zhang, H. Q., and X. J. Tian. 2018a. “A Multigrid NLS-4DVar Data Assimilation Scheme with Advanced Research WRF (ARW).” Journal of Geophysical Research 123: 5116–5129. doi:10.1029/2017JD027529.
  • Zhang, H. Q., and X. J. Tian. 2018b. “An Efficient Local Correlation Matrix Decomposition Approach for the Localization Implementation of Ensemble-based Assimilation Methods.” Journal of Geophysical Research: Atmospheres 123. doi:10.1002/2017JD027999.
  • Zhang, L., X. J. Tian, X. F. Liu, and C. X. Shi. 2017b. “NLS-3DVar Data Fusion Method Based on Multigrid Implementation Strategy and Its Application in Temperature Data Fusion.” Climatic and Environmental Research (in Chinese) 22 (3): 271–288. doi:10.3878/j.issn.1006-9585.2016.16140.