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Title: Estimating surface carbon fluxes based on a local ensemble transform Kalman filter with a short assimilation window and a long observation window: an observing system simulation experiment test in GEOS-Chem 10.1

Journal Article · · Geoscientific Model Development (Online)
 [1]; ORCiD logo [2]; ORCiD logo [2];  [3];  [4]; ORCiD logo [5]
  1. Univ. of Maryland, College Park, MD (United States); Texas A & M Univ., College Station, TX (United States)
  2. Univ. of Maryland, College Park, MD (United States)
  3. Joint Global Change Research Institute/PNNL, College Park, MD (United States)
  4. Univ. of East Anglia, Norwich (United Kingdom)
  5. Chinese Academy of Sciences (CAS), Beijing (China)

We developed a carbon data assimilation system to estimate surface carbon fluxes using the local ensemble transform Kalman filter (LETKF) and atmospheric transport model GEOS-Chem driven by the MERRA-1 reanalysis of the meteorological field based on the Goddard Earth Observing System model,version 5 (GEOS-5). This assimilation system is inspired by the method of Kang et al. (2011, 2012), who estimated the surface carbon fluxes in an observing system simulation experiment (OSSE) as evolving parameters in the assimilation of the atmospheric CO2, using a short assimilation window of 6 h. They included the assimilation of the standard meteorological variables, so that the ensemble provided a measure of the uncertainty in the CO2 transport. After proposing new techniques such as “variablelocalization”, and increased observation weights near the surface, they obtained accurate surface carbon fluxes at grid-point resolution. We developed a new version of the local ensemble transform Kalman filter related to the “running-in-place”(RIP) method used to accelerate the spin-up of ensemble Kalman filter (EnKF) data assimilation(Kalnay and Yang, 2010; Wang et al., 2013; Yang et al., 2012). Like RIP, the new assimilation system uses the “no cost smoothing” algorithm for the LETKF (Kalnay et al., 2007b), which allows shifting the Kalman filter solution forward or backward within an assimilation window at no cost. In the new scheme a long “observation window” (e.g., 7 d or longer) is used to design a LETKF ensemble at 7 d. Then, the RIP smoother is used to obtain an accurate final analysis at 1 d. This new approach has the advantage of being based on a short assimilation window, which makes it more accurate,and of having been exposed to the future 7 d observations, which improves the analysis and accelerates the spin-up. The assimilation and observation windows are then shifted forward by 1 d, and the process is repeated.This reduces significantly the analysis error, suggesting that the newly developed assimilation method can be used with other Earth system models,especially in order to make greater use of observations in conjunction with models.

Research Organization:
Pacific Northwest National Laboratory (PNNL), Richland, WA (United States)
Sponsoring Organization:
USDOE
Grant/Contract Number:
AC05-76RL01830
OSTI ID:
1548274
Report Number(s):
PNNL-SA-129693
Journal Information:
Geoscientific Model Development (Online), Vol. 12, Issue 7; ISSN 1991-9603
Publisher:
European Geosciences UnionCopyright Statement
Country of Publication:
United States
Language:
English
Citation Metrics:
Cited by: 9 works
Citation information provided by
Web of Science

References (59)

Accelerating the EnKF Spinup for Typhoon Assimilation and Prediction journal August 2012
“Variable localization” in an ensemble Kalman filter: Application to the carbon cycle data assimilation journal January 2011
Analysis Scheme in the Ensemble Kalman Filter journal June 1998
Global Carbon Budget 2016 journal January 2016
Transcom 3 inversion intercomparison: Model mean results for the estimation of seasonal carbon sources and sinks: T3 SEASONAL RESULTS journal January 2004
Comparison between the Local Ensemble Transform Kalman Filter (LETKF) and 4D‐Var in atmospheric CO 2 flux inversion with the Goddard Earth Observing System‐Chem model and the observation impact diagnostics from the LETKF journal November 2016
A local ensemble Kalman filter for atmospheric data assimilation journal October 2004
AIRS-based versus flask-based estimation of carbon surface fluxes journal January 2009
Ensemble Data Assimilation with the NCEP Global Forecast System journal February 2008
4-D-Var or ensemble Kalman filter? journal January 2007
Response to the discussion on “4-D-Var or EnKF?” by Nils Gustafsson journal January 2007
EnKF and Hybrid Gain Ensemble Data Assimilation. Part II: EnKF and Hybrid Gain Results journal December 2015
Technical Note: Adapting a fixed-lag Kalman smoother to a geostatistical atmospheric inversion framework journal January 2008
An ensemble data assimilation system to estimate CO2 surface fluxes from atmospheric trace gas observations journal January 2005
How strong is carbon cycle-climate feedback under global warming? journal January 2004
An atmospheric perspective on North American carbon dioxide exchange: CarbonTracker journal November 2007
Estimating surface CO 2 fluxes from space-borne CO 2 dry air mole fraction observations using an ensemble Kalman Filter journal January 2009
The Gaussian Approach to Adaptive Covariance Inflation and Its Implementation with the Local Ensemble Transform Kalman Filter journal May 2011
Variational data assimilation for atmospheric CO 2 journal January 2006
Estimation of global CO 2 fluxes at regional scale using the maximum likelihood ensemble filter journal January 2008
Estimation of surface carbon fluxes with an advanced data assimilation methodology: SURFACE CO journal December 2012
Accelerating the spin-up of Ensemble Kalman Filtering journal July 2010
Terrestrial mechanisms of interannual CO 2 variability : INTERANNUAL CO journal March 2005
Efficient data assimilation for spatiotemporal chaos: A local ensemble transform Kalman filter journal June 2007
Improving the temporal and spatial distribution of CO 2 emissions from global fossil fuel emission data sets : SCALING OF FOSSIL FUEL CO journal January 2013
Global sea–air CO2 flux based on climatological surface ocean pCO2, and seasonal biological and temperature effects journal January 2002
EnKF and Hybrid Gain Ensemble Data Assimilation. Part I: EnKF Implementation journal December 2015
A multiyear, global gridded fossil fuel CO 2 emission data product: Evaluation and analysis of results : GLOBAL FOSSIL FUEL CO2 EMISSIONS journal September 2014
The impact of transport model differences on CO 2 surface flux estimates from OCO-2 retrievals of column average CO 2 journal January 2018
Global modeling of tropospheric chemistry with assimilated meteorology: Model description and evaluation journal October 2001
The Orbiting Carbon Observatory (OCO) mission journal January 2004
Global carbon budget 2014 journal January 2015
CO<sub>2</sub> flux history 1982–2001 inferred from atmospheric data using a global inversion of atmospheric transport journal January 2003
The ACOS CO 2 retrieval algorithm – Part 1: Description and validation against synthetic observations journal January 2012
Carbon source/sink information provided by column CO 2 measurements from the Orbiting Carbon Observatory journal January 2010
An Ensemble Adjustment Kalman Filter for Data Assimilation journal December 2001
A Local Least Squares Framework for Ensemble Filtering journal April 2003
Ensemble Kalman Filtering conference September 2007
Data Assimilation Using an Ensemble Kalman Filter Technique journal March 1998
Ensemble-Based Parameter Estimation in a Coupled General Circulation Model journal September 2014
An Adaptive Ensemble Kalman Filter journal January 2000
The Hybrid Local Ensemble Transform Kalman Filter journal June 2014
Ensemble Square Root Filters* journal July 2003
An iterative ensemble square root filter and tests with simulated radar data for storm-scale data assimilation: Testing an Iterative Procedure for an Ensemble Square Root Filter
  • Wang, Shizhang; Xue, Ming; Schenkman, Alexander D.
  • Quarterly Journal of the Royal Meteorological Society, Vol. 139, Issue 676 https://doi.org/10.1002/qj.2077
journal January 2013
Ensemble Data Assimilation without Perturbed Observations journal July 2002
Impacts of Initial Estimate and Observation Availability on Convective-Scale Data Assimilation with an Ensemble Kalman Filter journal May 2004
A local ensemble Kalman filter for atmospheric data assimilation journal January 2004
4-D-Var or ensemble Kalman filter? journal October 2007
Variational data assimilation for atmospheric CO 2 journal November 2006
Global modeling of tropospheric chemistry with assimilated meteorology: Model description and evaluation text January 2001
Global carbon budget 2014 text January 2015
CO2 flux history 1982–2001 inferred from atmospheric data using a global inversion of atmospheric transport journal January 2003
Multi-laboratory compilation of atmospheric carbon dioxide data for the period 1957-2015; obspack_co2_1_GLOBALVIEWplus_v2.1_2016-09-02
  • Project, Cooperative Global Atmospheric Data Integration
  • NOAA Earth System Research Laboratory, Global Monitoring Division https://doi.org/10.15138/g3059z
dataset January 2016
Response to the discussion on “4-D-Var or EnKF?” by Nils Gustafsson journal October 2007
Global Carbon Budget 2016 text January 2016
Efficient Data Assimilation for Spatiotemporal Chaos: a Local Ensemble Transform Kalman Filter preprint January 2005
Global Carbon Budget 2016 text January 2016
Inverse modeling of annual atmospheric CO 2 sources and sinks: 1. Method and control inversion journal November 1999
Carbon flux bias estimation employing Maximum Likelihood Ensemble Filter (MLEF) journal January 2007