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Xiaoyan Jiang, Guo-Yue Niu and Zong-Liang Yang The Jackson School of Geosciences

Feedback between the atmosphere, vegetation and groundwater represented in WRF/Noah. Offline validation of soil moisture with Illinois data Coupled WRF/Noah simulations of rainfall in central U.S. Xiaoyan Jiang, Guo-Yue Niu and Zong-Liang Yang The Jackson School of Geosciences

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Xiaoyan Jiang, Guo-Yue Niu and Zong-Liang Yang The Jackson School of Geosciences

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  1. Feedback between the atmosphere, vegetation and groundwater represented in WRF/Noah • Offline validation of soil moisture with Illinois data • Coupled WRF/Noah simulations of rainfall in central U.S. Xiaoyan Jiang, Guo-Yue Niu and Zong-Liang Yang The Jackson School of Geosciences The University of Texas at Austin 03/20/2007

  2. Offline validation of soil moisture with Illinois data(at two stations; daily from 1/1/1998 to 12/31/2002) • Noah + DVGW produces a much wetter soil than the default Noah. • DVGW reduces the amplitude of temporal variations.

  3. The Impacts of Vegetation and Groundwater Dynamics on North American Warm Season Precipitation over the Central U.S. • Introduction • Objectives • Hypothesis • Land cover and hydrogeological characteristics over the Central U.S. • Model description • Experiment design • Simulation results and discussions • Conclusions

  4. Objectives • Understand the role of vegetation growth and groundwater dynamics in land-atmosphere interaction. • Improve the prediction of warm season precipitation in a coupled land-atmosphere model. • Identify the high-impact locations (Local or regional?). • Account for the role of initialization in intra-seasonal forecasting through ensemble simulations.

  5. Hypothesis Representing interactive canopy (or vegetation growth) and groundwater dynamics in a coupled land surface and atmospheric model improves seasonal precipitation.

  6. Study domain

  7. Dominant land cover types over the Central U.S. Aquifer distribution from Atlas Land cover and hydrogeological characteristics over the Central U.S.

  8. A Coupled Land-Atmosphere Model System Dickinson, R. E., M. Shaikh, R. Bryant, et al., 1998 Niu, G.-Y., Z.-L. Yang, R.E. Dickinson, L.E. Gulden, and H. Su, 2007

  9. Model configurations • The version 2.1.2 of the Weather Research and Forecasting model (WRF) with time-varying sea surface temperatures. • Physics options and input data: • Lin et al. microphysics scheme; • Kain-Fritsch cumulus parameterization scheme; • Yonsei University Planetary boundary layer; • A simple cloud interactive radiation scheme; • Rapid Radiative Transfer Model longwave radiation scheme • A dynamic vegetation model of Dickinson et al. (1998) in Noah LSM. • A simple groundwater model (SIMGM) (Niu et al. 2006) in Noah LSM. • NCEP-NARR reanalysis data. • The model domain covers the whole continental U.S. and the grid spacing is 32 km

  10. 05/31 00:00 05/31 06:00 05/31 12:00 05/31 18:00 06/01 00:00

  11. Initial water table level from offline Noah LSM

  12. Observed and simulated precipitation in June, July and August (JJA) (mm/day)

  13. Simulated versus observed cumulative precipitation over the Central U.S. The performance of DVGW for precipitation is much closer to the observation; DV is also better than DEFAULT.

  14. Simulated and observed monthly mean precipitation

  15. Differences of surface temperature between the DV and DEFAULT, DVGW and DV DVGW-DV DV-DEFAULT JJA JJA July July DV-DEFAULT DVGW-DV

  16. DVGWandDVproduce higher latent heat flux thanDEFAULT over the Central U.S. Latent heat flux DVGWandDVcause less sensible heat flux thanDEFAULT over the Central U.S. Sensible heat flux

  17. Differences of latent heat flux and precipitationDV-DEFAULT Precipitation Latent heat flux June June July July August August

  18. Differences of latent heat flux and precipitationDVGW-DV Latent heat flux Precipitation

  19. Differences of greenness fraction between DV and DEFAULT; DVGW and DV DV-DEFAULT DVGW-DV August June DV causes higher greenness fraction over most part of the Central U.S.; DVGW further increase the greenness fraction in this area.

  20. MODIS NDVI-derived and model simulated greenness fraction over the Central U.S. (in August) Fg = (NDVIi - NDVImin) / (NDVImax - NDVImin) NDVImin= 0.04 and NDVImax= 0.52 (Gutman and Ignatov 1997)

  21. Water balance over the Central U.S.in JJA, 2002 Note: * using CPC observed gauged precipitation

  22. Diurnal cycle of precipitation

  23. Diurnal cycle of Surface Fluxes

  24. Lifting condensation level as a function of soil moisture index

  25. Conclusions • The WRF/Noah model with augmented vegetation and groundwater dynamics can improve the simulation of summertime precipitation over the Central U.S. • The increased precipitation (by 65%) corresponds to the increased latent heat flux (by 34%). • In summer, precipitation in the Central U.S. mostly comes from local evapotranspiration, showing strong land–atmosphere coupling. • The role of vegetation is significant (by 37%) in the grassland and cropland areas in summer. • Groundwater has impacts (by 16%) on summer precipitation in the transition zone.

  26. Conclusions (Cont) • Throughout the day, precipitation is increased (improved) when vegetation dynamics is included, and it is further increased (improved) when groundwater dynamics is added. These increases are consistent with higher (lower) latent (sensible) heat fluxes. • The increased precipitation with the Noah enhancements are also consistent with reduced lifting condensation levels, suggesting a positive soil moisture-precipitation feedback (wetter soil, more evapotranspiration, lower lifting condensation levels, and higher rainfall).

  27. Thanks for your attention! Questions and suggestions?

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