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Methane and Nitrous Oxide in North America: Using an LPDM to Constrain Emissions. Eric Kort kort@fas.harvard.edu Non-CO2 Workshop October 23, 2008. Approach. Atmospheric Measurements. Use receptor oriented framework (STILT) to link measurements with emissions.
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Methane and Nitrous Oxidein North America: Using an LPDM to Constrain Emissions Eric Kort kort@fas.harvard.edu Non-CO2 Workshop October 23, 2008
Approach • Atmospheric Measurements • Use receptor oriented framework (STILT) to link measurements with emissions • Forward Model Concentrations, Optimizations, Inversions STILT developed by John Lin and Christoph Gerbig
Trajectories • Receptor Points- Locations in space-time where measurements are made • Release an ensemble of ‘particles’, which travel backwards in time, stochastically sampling the turbulence • Driving wind fields are of crucial importance: i.e. mass conservation
Trajectories • Meteorological Driver: WRF v2.2 • Use time-averaged mass fluxes- ensures good mass conservation • Uses analysis nudging to increase realism • Turbulence included • Release 500 particles backwards 10 days in time from each receptor • Case study used 100 particles 6 days back Using STILT, comparison w/ FLEXPART underway…, preliminary results encouraging, wind fields dominate answer, choice of LPDM does not strongly bias footprints
Footprint • Critical Item which links measurements to emissions (Unit: ppb/flux) • With this calculated can: • Interface w/ prior emissions field- bottom-up model concentrations • Follow this with simple scalar optimization • Or Perform a Bayesian optimization • Or go straight to a Geostatistical Inversion
Footprint * Prior Emission Field * Result = Enhancement of gas at measurement point due to source
Prior Emissions Fields • Nitrous Oxide • Anthropogenic- EDGAR32FT2000 • Anthropogenic & Biogenic- GEIA • Methane • Anthropogenic- EDGAR32FT2000 • Biogenic- Jed Kaplan wetland inventory FIRES
Boundary Condition • To do even a Geostatistical Inversion, need ‘background’ values from where particles are 10 days back in time • Crucial to have good values here, as any error here directly propagates into any emissions analysis • Biases in particular are of large concern
Boundary Condition • Data-derived: Globalview type product (MBL, time/lat) • Add vertical shape?? • Model-output: Forward model runs • Atmospheric Inversion output- carbontracker methane
Boundary Condition Insights2 Crucial Points • Latitude Dependence • Vertical gradient over ocean (for ch4) is negligible in comparison • Seasonal Variation • This must be correct, in order to prevent seasonal biases • Must check with measurement points in free troposphere with minimal surface influence– aircraft measurements are crucial
Bottom-Up Model Values • Enhancement + Boundary Value = Modeled Mixing Ratio @ measurement point • Facilitates direct comparison, and optimization of emissions
Case Study- COBRA-NA 2003 • ~300 flasks measured @ NOAA/Boulder, UND Citation II, 23 May to 28 June 2003
Results- Methane Slope: 0.924 ± 0.13 Scaling Factor: 1.08 ± 0.15 Note: Prior Emissions Field EDGAR32FT 2000 & JK wetland
Results- Nitrous Oxide Note: Prior Emissions Field EDGAR32FT 2000, similar results using GEIA Slope: 0.381 ± 0.072 Scaling Factor: 2.62 ± 0.50
But . . . • Limitations in coverage • Only a snapshot in time (May- June of 2003) • Seasonality in agricultural Nitrous Oxide emissions is likely at play. • Want to do with measurements over multiple years, get full seasonality picture.
Concept Here • Goal: Incorporate all measurements of CH4 and N2O over North America for 2004-2008 • Start: NOAA network, aircraft and tower flask samples, for 1 calendar year, CH4: under way • Gives an initial framework from which to expand from • Natural path is to start with same simple approach used previously
Intensive Aircraft Campaigns & Continuous measurements • Incorparation of Intensive Aircraft Campaigns and continuous measurments at towers can strongly supplement the flask measurement framework Pre-HIPPO flight, from Rodrigo Jimenez
LEF mjj, Model PredictionsModel runs at 19 GMTData Boundary,Note: -large day to day variation-dominance of anthropogenic emissions
LEF 2004 Model runs at 19 GMT Note Different slopes w/ different boundaries, indicating different seasonality in boundaries
Acknowledgements • Harvard • Bruce Daube, Elaine Gottlieb, Steve Wofsy • AER • Janusz Eluszkiewicz & Thomas Nehrkorn • MPI- Jena • Christoph Gerbig & Stefan Korner • Netherlands & Switzerland • Sander Houweling & Jed Kaplan • NOAA & NCAR • Arlyn Andrews, Adam Hirsch, John B. Miller, Brit Stephens, Colm Sweeney, Lori Bruhwiler, Ed Dlugokencky, Pieter Tans • U Michagan • Anna Michalak • University of Waterloo • John Lin