Regional-scale geostatistical inverse modeling of North American CO<sub>2</sub> fluxes: a synthetic data study

A series of synthetic data experiments is performed to investigate the ability of a regional atmospheric inversion to estimate grid-scale CO<sub>2</sub> fluxes during the growing season over North America. The inversions are performed within a geostatistical framework without the use of...

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Main Authors: A. M. Michalak, A. E. Andrews, V. Yadav, K. L. Mueller, S. M. Gourdji, A. I. Hirsch
Format: Article
Language:English
Published: Copernicus Publications 2010-07-01
Series:Atmospheric Chemistry and Physics
Online Access:http://www.atmos-chem-phys.net/10/6151/2010/acp-10-6151-2010.pdf
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spelling doaj-1895a27fa07c4ea2ac6489bc0a0d00722020-11-24T23:09:53ZengCopernicus PublicationsAtmospheric Chemistry and Physics1680-73161680-73242010-07-0110136151616710.5194/acp-10-6151-2010Regional-scale geostatistical inverse modeling of North American CO<sub>2</sub> fluxes: a synthetic data studyA. M. MichalakA. E. AndrewsV. YadavK. L. MuellerS. M. GourdjiA. I. HirschA series of synthetic data experiments is performed to investigate the ability of a regional atmospheric inversion to estimate grid-scale CO<sub>2</sub> fluxes during the growing season over North America. The inversions are performed within a geostatistical framework without the use of any prior flux estimates or auxiliary variables, in order to focus on the atmospheric constraint provided by the nine towers collecting continuous, calibrated CO<sub>2</sub> measurements in 2004. Using synthetic measurements and their associated concentration footprints, flux and model-data mismatch covariance parameters are first optimized, and then fluxes and their uncertainties are estimated at three different temporal resolutions. These temporal resolutions, which include a four-day average, a four-day-average diurnal cycle with 3-hourly increments, and 3-hourly fluxes, are chosen to help assess the impact of temporal aggregation errors on the estimated fluxes and covariance parameters. Estimating fluxes at a temporal resolution that can adjust the diurnal variability is found to be critical both for recovering covariance parameters directly from the atmospheric data, and for inferring accurate ecoregion-scale fluxes. Accounting for both spatial and temporal a priori covariance in the flux distribution is also found to be necessary for recovering accurate a posteriori uncertainty bounds on the estimated fluxes. Overall, the results suggest that even a fairly sparse network of 9 towers collecting continuous CO<sub>2</sub> measurements across the continent, used with no auxiliary information or prior estimates of the flux distribution in time or space, can be used to infer relatively accurate monthly ecoregion scale CO<sub>2</sub> surface fluxes over North America within estimated uncertainty bounds. Simulated random transport error is shown to decrease the quality of flux estimates in under-constrained areas at the ecoregion scale, although the uncertainty bounds remain realistic. While these synthetic data inversions do not consider all potential issues associated with using actual measurement data, e.g. systematic transport errors or problems with the boundary conditions, they help to highlight the impact of inversion setup choices, and help to provide a baseline set of CO<sub>2</sub> fluxes for comparison with estimates from future real-data inversions. http://www.atmos-chem-phys.net/10/6151/2010/acp-10-6151-2010.pdf
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language English
format Article
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author A. M. Michalak
A. E. Andrews
V. Yadav
K. L. Mueller
S. M. Gourdji
A. I. Hirsch
spellingShingle A. M. Michalak
A. E. Andrews
V. Yadav
K. L. Mueller
S. M. Gourdji
A. I. Hirsch
Regional-scale geostatistical inverse modeling of North American CO<sub>2</sub> fluxes: a synthetic data study
Atmospheric Chemistry and Physics
author_facet A. M. Michalak
A. E. Andrews
V. Yadav
K. L. Mueller
S. M. Gourdji
A. I. Hirsch
author_sort A. M. Michalak
title Regional-scale geostatistical inverse modeling of North American CO<sub>2</sub> fluxes: a synthetic data study
title_short Regional-scale geostatistical inverse modeling of North American CO<sub>2</sub> fluxes: a synthetic data study
title_full Regional-scale geostatistical inverse modeling of North American CO<sub>2</sub> fluxes: a synthetic data study
title_fullStr Regional-scale geostatistical inverse modeling of North American CO<sub>2</sub> fluxes: a synthetic data study
title_full_unstemmed Regional-scale geostatistical inverse modeling of North American CO<sub>2</sub> fluxes: a synthetic data study
title_sort regional-scale geostatistical inverse modeling of north american co<sub>2</sub> fluxes: a synthetic data study
publisher Copernicus Publications
series Atmospheric Chemistry and Physics
issn 1680-7316
1680-7324
publishDate 2010-07-01
description A series of synthetic data experiments is performed to investigate the ability of a regional atmospheric inversion to estimate grid-scale CO<sub>2</sub> fluxes during the growing season over North America. The inversions are performed within a geostatistical framework without the use of any prior flux estimates or auxiliary variables, in order to focus on the atmospheric constraint provided by the nine towers collecting continuous, calibrated CO<sub>2</sub> measurements in 2004. Using synthetic measurements and their associated concentration footprints, flux and model-data mismatch covariance parameters are first optimized, and then fluxes and their uncertainties are estimated at three different temporal resolutions. These temporal resolutions, which include a four-day average, a four-day-average diurnal cycle with 3-hourly increments, and 3-hourly fluxes, are chosen to help assess the impact of temporal aggregation errors on the estimated fluxes and covariance parameters. Estimating fluxes at a temporal resolution that can adjust the diurnal variability is found to be critical both for recovering covariance parameters directly from the atmospheric data, and for inferring accurate ecoregion-scale fluxes. Accounting for both spatial and temporal a priori covariance in the flux distribution is also found to be necessary for recovering accurate a posteriori uncertainty bounds on the estimated fluxes. Overall, the results suggest that even a fairly sparse network of 9 towers collecting continuous CO<sub>2</sub> measurements across the continent, used with no auxiliary information or prior estimates of the flux distribution in time or space, can be used to infer relatively accurate monthly ecoregion scale CO<sub>2</sub> surface fluxes over North America within estimated uncertainty bounds. Simulated random transport error is shown to decrease the quality of flux estimates in under-constrained areas at the ecoregion scale, although the uncertainty bounds remain realistic. While these synthetic data inversions do not consider all potential issues associated with using actual measurement data, e.g. systematic transport errors or problems with the boundary conditions, they help to highlight the impact of inversion setup choices, and help to provide a baseline set of CO<sub>2</sub> fluxes for comparison with estimates from future real-data inversions.
url http://www.atmos-chem-phys.net/10/6151/2010/acp-10-6151-2010.pdf
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