National Space Science and Technology Center, Huntsville, AL Assimilation of AMSR-E soil moisture into a coupled land surface-mesoscale model in the Land.

Slides:



Advertisements
Similar presentations
Using Flux Observations to Improve Land-Atmosphere Modelling: A One-Dimensional Field Study Robert Pipunic, Jeffrey Walker & Andrew Western The University.
Advertisements

A thermodynamic model for estimating sea and lake ice thickness with optical satellite data Student presentation for GGS656 Sanmei Li April 17, 2012.
Land Data Assimilation
Shortwave Radiation Options in the WRF Model
Development of the Regional Arctic Climate System Model (RACM) --- Department of Civil and Environmental Engineering University of Washington Dec, 2009.
1 CODATA 2006 October 23-25, 2006, Beijing Cryospheric Data Assimilation An Integrated Approach for Generating Consistent Cryosphere Data Set Xin Li World.
Multi-sensor and multi-scale data assimilation of remotely sensed snow observations Konstantinos Andreadis 1, Dennis Lettenmaier 1, and Dennis McLaughlin.
Near Surface Soil Moisture Estimating using Satellite Data Researcher: Dleen Al- Shrafany Supervisors : Dr.Dawei Han Dr.Miguel Rico-Ramirez.
SABAE-HW3D A Hydro-meteorological Model Coupling the Land Surface and Groundwater Flow Youssef Loukili and Allan D. Woodbury
Alpine3D: an alpine surface processes model Mathias Bavay WSL Institute for Snow and Avalanche Research SLF, Davos, Switzerland.
SMOS – The Science Perspective Matthias Drusch Hamburg, Germany 30/10/2009.
Toward State-Dependent Moisture Availability Perturbations in a Multi-Analysis Ensemble System with Physics Diversity Eric Grimit.
Focus on the Terrestrial Cryosphere Cold land areas where water is either seasonally or permanently frozen. Terrestrial Cryosphere 0.25 m Frost Penetration.
The first three rows in equation control the estimates of soil moisture from the regression equation assuring that the estimated soil moisture content.
Transitioning unique NASA data and research technologies to the NWS 1 Evaluation of WRF Using High-Resolution Soil Initial Conditions from the NASA Land.
Christa D. Peters-Lidard Head, Hydrological Sciences Branch NASA Goddard Space Flight Center Workshop Objectives 1.Describe the LIS-WRF Coupled System.
Single Column Experiments with a Microwave Radiative Transfer Model Henning Wilker, Meteorological Institute of the University of Bonn (MIUB) Gisela Seuffert,
Assimilation of MODIS and AMSR-E Land Products into the NOAH LSM Xiwu Zhan 1, Paul Houser 2, Sujay Kumar 1 Kristi Arsenault 1, Brian Cosgrove 3 1 UMBC-GEST/NASA-GSFC;
Evapotranspiration - Rate and amount of ET is the core information needed to design irrigation projects, managing water quality, predicting flow yields,
MODELING OF COLD SEASON PROCESSES Snow Ablation and Accumulation Frozen Ground Processes.
Experiments with the microwave emissivity model concerning the brightness temperature observation error & SSM/I evaluation Henning Wilker, MIUB Matthias.
Mesoscale Modeling Review the tutorial at: –In class.
Advances in Macroscale Hydrology Modeling for the Arctic Drainage Basin Dennis P. Lettenmaier Department of Civil and Environmental Engineering University.
Earth Science Division National Aeronautics and Space Administration 18 January 2007 Paper 5A.4: Slide 1 American Meteorological Society 21 st Conference.
Princeton University Development of Improved Forward Models for Retrievals of Snow Properties Eric. F. Wood, Princeton University Dennis. P. Lettenmaier,
EGU General Assembly C. Cassardo 1, M. Galli 1, N. Vela 1 and S. K. Park 2,3 1 Department of General Physics, University of Torino, Italy 2 Department.
Project Title: High Performance Simulation using NASA Model and Observation Products for the Study of Land Atmosphere Coupling and its Impact on Water.
Enhancing the Value of GRACE for Hydrology
NW NCNE SCSESW Rootzone: TOTAL PERCENTILEANOMALY Noah VEGETATION TYPE 2-meter Column Soil Moisture GR2/OSU LIS/Noah 01 May Climatology.
Introduction to NASA Water Products Rain, Snow, Soil Moisture, Ground Water, Evapotranspiration NASA Remote Sensing Training Norman, Oklahoma, June 19-20,
Land Surface Processes in Global Climate Models (1)
Coupling of the Common Land Model (CLM) to RegCM in a Simulation over East Asia Allison Steiner, Bill Chameides, Bob Dickinson Georgia Institute of Technology.
L-band Microwave Emission of the Biosphere (L-MEB)
William Crosson, Ashutosh Limaye, Charles Laymon National Space Science and Technology Center Huntsville, Alabama, USA Soil Moisture Retrievals Using C-
SeaWiFS Highlights February 2002 SeaWiFS Views Iceland’s Peaks Gene Feldman/SeaWiFS Project Office, Laboratory for Hydrospheric Processes, NASA Goddard.
Land Surface Analysis SAF: Contributions to NWP Isabel F. Trigo.
OVERVIEW OF SATELLITE BASED PRODUCTS FOR GLOBAL ET Matthew McCabe, Carlos Jimenez, Bill Rossow, Sonia Seneviratne, Eric Wood and numerous data providers.
Soil moisture generation at ECMWF Gisela Seuffert and Pedro Viterbo European Centre for Medium Range Weather Forecasts ELDAS Interim Data Co-ordination.
Part I: Representation of the Effects of Sub- grid Scale Topography and Landuse on the Simulation of Surface Climate and Hydrology Part II: The Effects.
Modern Era Retrospective-analysis for Research and Applications: Introduction to NASA’s Modern Era Retrospective-analysis for Research and Applications:
Understanding hydrologic changes: application of the VIC model Vimal Mishra Assistant Professor Indian Institute of Technology (IIT), Gandhinagar
Transitioning unique NASA data and research technologies to the NWS 1 Evaluation of WRF Using High-Resolution Soil Initial Conditions from the NASA Land.
EWGLAM Oct Some recent developments in the ECMWF model Mariano Hortal ECMWF Thanks to: A. Beljars (physics), E. Holm (humidity analysis)
Soil Moisture Data Assimilation in the SHEELS Land Surface Model Clay Blankenship USRA Special thanks to: Bill Crosson, Jon Case.
Results Time Study Site Measured data Alfalfa Numerical Analysis of Water and Heat Transport in Vegetated Soils Using HYDRUS-1D Masaru Sakai 1), Jirka.
Challenges and Strategies for Combined Active/Passive Precipitation Retrievals S. Joseph Munchak 1, W. S. Olson 1,2, M. Grecu 1,3 1: NASA Goddard Space.
Matt Rodell NASA GSFC Multi-Sensor Snow Data Assimilation Matt Rodell 1, Zhong-Liang Yang 2, Ben Zaitchik 3, Ed Kim 1, and Rolf Reichle 1 1 NASA Goddard.
Hydrologic Data Assimilation with a Representer-Based Variational Algorithm Dennis McLaughlin, Parsons Lab., Civil & Environmental Engineering, MIT Dara.
Developing Synergistic Data Assimilation Approaches for Passive Microwave and Thermal Infrared Soil Moisture Retrievals Christopher R. Hain SPoRT Data.
SiSPAT-Isotope model Better estimates of E and T Jessie Cable Postdoc - IARC.
Surface Water Virtual Mission Dennis P. Lettenmaier, Kostas Andreadis, and Doug Alsdorf Department of Civil and Environmental Engineering University of.
Performance Comparison of an Energy- Budget and the Temperature Index-Based (Snow-17) Snow Models at SNOTEL Stations Fan Lei, Victor Koren 2, Fekadu Moreda.
A Random Subgrouping Scheme for Ensemble Kalman Filters Yun Liu Dept. of Atmospheric and Oceanic Science, University of Maryland Atmospheric and oceanic.
Evaporation What is evaporation? How is evaporation measured? How is evaporation estimated? Reading for today: Applied Hydrology Sections 3.5 and 3.6 Reading.
1 Xiaoyan Jiang, Guo-Yue Niu and Zong-Liang Yang The Jackson School of Geosciences The University of Texas at Austin 03/20/2007 Feedback between the atmosphere,
An advanced snow parameterization for the models of atmospheric circulation Ekaterina E. Machul’skaya¹, Vasily N. Lykosov ¹Hydrometeorological Centre of.
The SCM Experiments at ECMWF Gisela Seuffert and Pedro Viterbo European Centre for Medium Range Weather Forecasts ELDAS Progress Meeting 12./
Mesoscale Assimilation of Rain-Affected Observations Clark Amerault National Research Council Postdoctoral Associate - Naval Research Laboratory, Monterey,
Radiance Simulation System for OSSE  Objectives  To evaluate the impact of observing system data under the context of numerical weather analysis and.
Meteorological Variables 1. Local right-hand Cartesian coordinate 2. Polar coordinate x y U V W O O East North Up Dynamic variable: Wind.
Soil Moisture: Synergistic approach for the merge of thermal and ASCAT information 2nd User Training Workshop of Land Surface Analysis Satellite Application.
SimSphere SVAT model SimSphere is available for free from Aberystwyth University, UK:
Kostas Andreadis and Dennis Lettenmaier
1Civil and Environmental Engineering, University of Washington
Introduction to Land Information System (LIS)
Kostas M. Andreadis1, Dennis P. Lettenmaier1
Surface Water Virtual Mission
Runoff Simulations in Region12 (or almost the State of Texas)
Improved Forward Models for Retrievals of Snow Properties
J.T. Kiehl National Center for Atmospheric Research
Presentation transcript:

National Space Science and Technology Center, Huntsville, AL Assimilation of AMSR-E soil moisture into a coupled land surface-mesoscale model in the Land Information System using an ensemble Kalman filter Clay Blankenship and Bill Crosson USRA

National Space Science and Technology Center, Huntsville, AL Overview Goal: Improve predictions in a coupled (land/atmosphere) weather model by assimilating observations of soil moisture into a land surface model. LIS (Land Information System) Coupled mode--WRF and SHEELS LSM AMSR-E soil moisture observations Data Assimilation by Ensemble Kalman Filter Methodology 1.Add SHEELS as a new land surface model in LIS. 2.Add coupled-run and AMSR-E data assimilation capability to SHEELS in LIS. 3.Run data assimilation experiments.

National Space Science and Technology Center, Huntsville, AL Land Information System (LIS) A modeling and data assimilation system with the capability to run several different LSMs. It is very customizable with the ability to swap out LSMs, forcing datasets, etc. LSMS VIC, Noah, CLM, Catchment,SiB2, Hyssib Base Forcings ECMWF, GDAS, NLDAS... Supplemental Forcings TRMM 3B42, Agrrad, Cmap, Cmorph, Stg4... Parameters Landcover, soils, greenness, albedo, LAI, topography, tbot Data Assimilation algorithm, observation, perturbation method

National Space Science and Technology Center, Huntsville, AL SHEELS (Simulator for Hydrology and Energy Exchange at the Land Surface) is a spatially-distributed (grid cell) surface flux-hydrology model that can be run as a stand-alone model with meteorological input, or coupled with a meteorological model. Uses of the model include: Provide areal soil moisture and surface energy flux estimates. Validate remotely-sensed moisture and temperature measurements where observations are sparse or absent. Provide surface boundary conditions for mesoscale weather models. Heritage Based on Biosphere-Atmosphere Transfer Scheme of Dickinson, Second generation: Ex-BATS of Smith et al., (Bill Crosson) Third generation: SHEELS, developed to include major modifications to soil layer structure, Added Kalman filter-based soil moisture assimilation scheme, Added full soil temperature diffusion scheme, Introduced overland flow and stream routing, Current version described in Martinez et al., 2001; Crosson et al., SHEELS

National Space Science and Technology Center, Huntsville, AL SHEELS: Simulator for Hydrology and Energy Exchange at the Land Surface

National Space Science and Technology Center, Huntsville, AL SHEELS Input Time-dependent input: Wind speed Air temperature Relative humidity Rainfall Atmospheric pressure Downwelling solar radiation Downwelling longwave radiation Required static variables: Soils:Landcover: Saturated hydraulic conductivitycanopy height Saturated matric potentialfractional vegetation cover Soil wilting pointminimum stomatal resistance Rooting depthleaf area index Soil porosityreflectance properties Topography: Surface elevation or slope Soil texture classes

National Space Science and Technology Center, Huntsville, AL SHEELS Output SHEELS estimates many time-dependent variables at each grid point based on spatially-distributed meteorological input as well as soil, vegetation and topographic properties: Surface latent and sensible heat fluxes,Ground heat flux including soil, canopy contributionsNet radiation Vapor mass fluxes from soil, canopy Reflected solar radiation Solar and longwave radiation absorbedDrag coefficients by canopy and ground Soil surface and canopy temperaturesSurface temperature Soil temperature for each layerInfiltration Soil moisture for each layer Runoff Depth of water on canopy (dew or rain)Ponded water

National Space Science and Technology Center, Huntsville, AL SHEELS Output Examples Time/Depth Soil Moisture Fractional water content by volume 1997 Day of Year Soil moisture is estimated for each layer. In this example there are 15 layers in the 2 m soil column. Note: - Surface drying - Penetration of wetting fronts - Transition at bottom of the root zone (1 m)

National Space Science and Technology Center, Huntsville, AL Adding SHEELS to LIS Added SHEELS as an LSM in LIS (rewrite code to fit into LIS structure) Enables use of LIS capabilities. Run-time selection of base forcing, supplemental forcing, static data Coupled WRF runs EnKF data assimilation Easy intercomparison with other models MPI enabled Allows subgrid variability in vegetation type Makes SHEELS available to LIS users.

National Space Science and Technology Center, Huntsville, AL LSM Input Data

National Space Science and Technology Center, Huntsville, AL Layer 1 Total Water (Liquid+Ice), hourly

National Space Science and Technology Center, Huntsville, AL Layer 1 Soil Ice (hourly)

National Space Science and Technology Center, Huntsville, AL Snow cover (daily)

National Space Science and Technology Center, Huntsville, AL Fractional soil moisture (water+ice) Soil Temperature Model Results Nebraska JAN-JUL 2003

National Space Science and Technology Center, Huntsville, AL Fractional soil moisture (water+ice) Soil Temperature Model Results N. Texas JAN-JUL 2003

National Space Science and Technology Center, Huntsville, AL AMSR-E Soil Moisture Data Advanced Microwave Scanning Radiometer-EOS On board NASA’s EOS Aqua satellite (sun-synchronous polar orbiter) Twice daily coverage Measures microwave radiance at 6 frequencies with 10km sampling Soil moisture measured by GHz channel with resolution of 51x30 km Measures volumetric liquid water concentration in ~top 1 cm Dataset: AMSR-E Level 3 Daily land product (25 km gridded)

National Space Science and Technology Center, Huntsville, AL Ensemble Kalman filter (EnKF):  The EnKF is initialized by creating an ensemble of N initial condition fields around a mean model state at t=0, with an assumed covariance.  The spread of an ensemble of N model ‘trajectories’ is used to estimate the error covariances. The full non-linear dynamic equations are used to propagate each ensemble member forward in time, thus determining the trajectories. This is in contrast to the traditional Kalman filter in which linearized model dynamics are used to propagate error covariances.  The mean or median of the N ensemble states is used to define the state vector estimate.  When observations are available, each ensemble member is updated based on the difference between the observation and the model state, weighted by the Kalman gain (as in the EKF). Random error is added to the observation based on assumed noise characteristics; this ensures that the variance of the updated ensemble matches the true estimation error covariances (Burgers et al., 1998, Mon. Wea. Rev.)  Propagation of error covariance matrix is more stable than in the traditional Kalman filter, especially if there are strong non-linearities in the model. Assumptions/issues in EnKF: Gaussion error distributions are assumed; this may be violated in some applications. A large ensemble may be needed for accurate determination of the error covariances. Ensemble Kalman Filter

National Space Science and Technology Center, Huntsville, AL Settings for Data Assimilation In an EnKF, the relative strength of the background and observations is controlled by the observation error (specified) and the background error (derived from the ensemble, which depends on the state perturbations). Observation:AMSR-E Surface Soil Moisture (g/cm 3 ) Range:.01 to.52 Error:.05 State:SHEELS 14-layer water fraction (0 to 1) Perturbation type:normal Standard deviation:.005 at surface, less below Correlation (vertical):50% at ~2.3m

National Space Science and Technology Center, Huntsville, AL DA Results Soil Moisture Layer 1 Hourly Change 08Z 09Z

National Space Science and Technology Center, Huntsville, AL Assimilation Results Soil Moisture Layer 1

National Space Science and Technology Center, Huntsville, AL Assimilation Results Soil Moisture Layer 1 (Case 2)

National Space Science and Technology Center, Huntsville, AL