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DART and Land Data Assimilation

DART and Land Data Assimilation. Tim Hoar : National Center for Atmospheric Research w ith a whole lot of help from: Jeff Anderson, Nancy Collins, Kevin Raeder, Bill Sacks : NCAR Yongfei Zhang : University of Texas Austin Andrew Fox : National Ecological Observatory Network (NEON)

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DART and Land Data Assimilation

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  1. DART and Land Data Assimilation Tim Hoar: National Center for Atmospheric Research with a whole lot of help from: Jeff Anderson, Nancy Collins, Kevin Raeder, Bill Sacks: NCAR Yongfei Zhang: University of Texas Austin Andrew Fox: National Ecological Observatory Network (NEON) Rafael Rosolem: University of Arizona

  2. What is Data Assimilation? Observations combined with a Model forecast… + = … to produce an analysis. Overview article of DART: Anderson, Jeffrey, T. Hoar, K. Raeder, H. Liu, N. Collins, R. Torn, A. Arellano, 2009: The Data Assimilation Research Testbed: A Community Facility. Bull. Amer. Meteor. Soc., 90, 1283–1296. doi:10.1175/2009BAMS2618.1 TJH COSMOS 2012 pg2

  3. + = We want to assimilate over and over to steadily make the model states more consistent with the observations. time Coupleddata assimilation means we have models for atmosphere and ocean, or atmosphere and land, or all three, or … TJH COSMOS 2012 pg3

  4. A short list of models that can assimilate with DART: • CAM: Community Atmosphere Model • POP: Parallel Ocean Program • WRF: Weather Research and Forecasting Model • AM2: GFDL Atmospheric Model • COAMPS: Coupled Atmosphere/Ocean Mesoscale Prediction System • CLM: Community Land Model • NOAH: Land Surface Model • … many more TJH COSMOS 2012 pg4

  5. DART Fully coupled assimilation will need data from all models at the same time. Observations Atmos- phere CICE Coupler Land Ocean TJH COSMOS 2012 pg5

  6. A generic ensemble filter system like DART needs: 1. A way to make model forecasts. 2. A way to estimate what the observation would be – given the model state. This is the forward observation operator – h. The increments are regressed onto as many state variablesas you like. If there is a correlation, the state gets adjusted in the restart file. ensemble members TJH COSMOS 2012 pg6

  7. One unbreakable rule: “Do Not Invade the model code.” Unique routines communicate between each model and DART to provide this separation. I want to use COSMOS observations with “all” of our land models. This means our forward observation operator must be pretty generic. The land models are an area where observations are needed to help constrain the model states – so we can learn about and improve the models. TJH COSMOS 2012 pg7

  8. Creating the initial ensemble of ... time “spun up” Getting a proper initial ensemble is an area of active research. “a long time” Replicate what we have N times. Use a unique (and different!) realistic forcing for each. Run them forward for “a long time”. We have tools we are using to explore how much spread we NEED to capture the uncertainty in the system. TJH COSMOS 2012 pg8

  9. Creating the initial ensemble of ... time “spun up” Does This Work for our Land Models? Getting a proper initial ensemble is an area of active research. “a long time” Replicate what we have N times. Use a unique (and different!) realistic forcing for each. Run them forward for “a long time”. We have tools we are using to explore how much spread we NEED to capture the uncertainty in the system. TJH COSMOS 2012 pg9

  10. The ensemble advantage. You can represent uncertainty. time The ensemble spread frequently grows in a free run of a dispersive model. If we can reduce the ensemble spread and still be indistinguishable, all the better. With a good assimilation the ensemble is indistinguishable from the true model state in any meaningful way. observation times TJH COSMOS 2012 pg10

  11. AtmosphericEnsemble Reanalysis Assimilation uses 80 members of 2o FV CAM forced by a single ocean (Hadley+ NCEP-OI2) and produces a very competitive reanalysis. 500 hPa GPH Feb 17 2003 O(1 million) atmospheric obs are assimilated every day. 1998-2010 4x daily is available. Can use these to force other models. TJH COSMOS 2012 pg11

  12. Pros and Cons • 80 realizations/members • Model states are self-consistent • Model states consistent with observations • Available every 6 hours • Relatively low spatial resolution has implications for regional applications. • Suboptimal precipitation characteristics. • Available every 6 hours • higher frequency available if needed. • Only have 12 years … enough? Since Rafael is going to be showing results of NOAH, I’ll explore some of these (and other) issues with results from CLM – one for a flux tower, one for global snow data assimilation. TJH COSMOS 2012 pg12

  13. In collaboration with Andy Fox (NEON): An experiment at Niwot Ridge • 9.7 km east of the Continental Divide • C-1 islocated in a Subalpine Forest • (40º 02' 09'' N; 105º 32' 09'' W; 3021 m) • Single column of Community Land Model • 64 ensemble members of CLM • Forcing from the DART/CAM reanalysis, • Assimilating tower fluxes of latent heat (LE), sensible heat (H), and net ecosystem production (NEP). • Impacts CLM variables: LEAFC, LIVEROOTC, LIVESTEMC, DEADSTEMC, LITR1C, LITR2C, SOIL1C, SOIL2C, SOILLIQ … all of these are unobserved. TJH COSMOS 2012 pg13

  14. Free Run of CLM Leaf Area Index Carbon Nitrogen TJH COSMOS 2012 pg14

  15. Focus on the ensemble means (for clarity) Net Ecosystem Production FYI: We are assimilating flux observations … Sensible heat The model states are being updated at about 8PM local time. Latent heat TJH COSMOS 2012 pg15

  16. These are all unobserved variables. Free Run Assim June 2004 TJH COSMOS 2012 pg16

  17. Effect on short-term forecast on unobserved variables. Leaf Area Index Free Run Assim Forecast Carbon Nitrogen TJH COSMOS 2012 pg17

  18. Effect on longer-term forecast Leaf Area Index Again, these are model variables. Carbon Nitrogen TJH COSMOS 2012 pg18

  19. TJH COSMOS 2012 pg19

  20. Assimilation of MODIS snow cover fraction • 80 member ensemble for onset of NH winter, assimilate once per day • Level 3 MODIS product – regridded to a daily 1 degree grid • Observations can impact state variables within 200km • CLM variable to be updated is the snow water equivalent “H2OSNO” • Analogous to precipitation … Standard deviation of the CLM snow cover fractioninitial conditions for Oct. 2002 TJH COSMOS 2012 pg20

  21. An early result: assimilation of MODIS snowcover fraction on totalsnow water equivalent in CLM. Thanks Yongfei! kg/m2 Prior for Nov 30, 2002 kg/m2 Increments (Prior – Posterior) The model state is changing in reasonable places, by reasonable amounts. At this point, that’s all we’re looking for. Focus on the non-zero increments TJH COSMOS 2012 pg21

  22. The HARD part is: What do we do when SOME (or none!) of the ensembles have [snow,leaves,precipitation, …] and the observations indicate otherwise? Corn Snow? Sugar Snow? Wet Snow? New Snow? Dry Snow? Crusty Snow? “Champagne Powder”? Slushy Snow? Old Snow? Dirty Snow? Packed Snow? Early Season Snow? Snow Density? Snow Albedo? The ensemble must have some uncertainty, it cannot use the same value for all. The model expert must provide guidance. It’s even worse for the hundreds of carbon-based quantities! TJH COSMOS 2012 pg22

  23. As I see it, problems to be solved: • Proper initial ensemble • Can models tolerate new assimilated states? • Snow … depths, layers, characteristics, content. • When all ensembles have identical values the observations cannot have any effect with the current algorithms. • COSMOS forward observation operator for NOAH-MP, CLM … • Forward observation operators • many flux observations are over timescales that are inconvenient • need soil moisture from last month and now … GRACE • Multisensor soil moisture assimilation? • Bounded quantities • Negative SW fluxes, for example. • Soils dry beyond their limits. TJH COSMOS 2012 pg23

  24. For more information: CAM WRF CLM POP AM2 BGRID COAMPS NOAH www.image.ucar.edu/DAReS/DART dart@ucar.edu MPAS_ATM MITgcm_ocean COAMPS_nest TIEGCM MPAS_OCN NAAPS SQG PBL_1d PE2LYR NCOMMAS TJH COSMOS 2012 pg24

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