Abstract

Abstract. Consistent validation of satellite CO2 estimates is a prerequisite for using multiple satellite CO2 measurements for joint flux inversion, and for establishing an accurate long-term atmospheric CO2 data record. Harmonizing satellite CO2 measurements is particularly important since the differences in instruments, observing geometries, sampling strategies, etc. imbue different measurement characteristics in the various satellite CO2 data products. We focus on validating model and satellite observation attributes that impact flux estimates and CO2 assimilation, including accurate error estimates, correlated and random errors, overall biases, biases by season and latitude, the impact of coincidence criteria, validation of seasonal cycle phase and amplitude, yearly growth, and daily variability. We evaluate dry-air mole fraction (XCO2) for Greenhouse gases Observing SATellite (GOSAT) (Atmospheric CO2 Observations from Space, ACOS b3.5) and SCanning Imaging Absorption spectroMeter for Atmospheric CHartographY (SCIAMACHY) (Bremen Optimal Estimation DOAS, BESD v2.00.08) as well as the CarbonTracker (CT2013b) simulated CO2 mole fraction fields and the Monitoring Atmospheric Composition and Climate (MACC) CO2 inversion system (v13.1) and compare these to Total Carbon Column Observing Network (TCCON) observations (GGG2012/2014). We find standard deviations of 0.9, 0.9, 1.7, and 2.1 ppm vs. TCCON for CT2013b, MACC, GOSAT, and SCIAMACHY, respectively, with the single observation errors 1.9 and 0.9 times the predicted errors for GOSAT and SCIAMACHY, respectively. We quantify how satellite error drops with data averaging by interpreting according to error2 = a2 + b2/n (with n being the number of observations averaged, a the systematic (correlated) errors, and b the random (uncorrelated) errors). a and b are estimated by satellites, coincidence criteria, and hemisphere. Biases at individual stations have year-to-year variability of ∼ 0.3 ppm, with biases larger than the TCCON-predicted bias uncertainty of 0.4 ppm at many stations. We find that GOSAT and CT2013b underpredict the seasonal cycle amplitude in the Northern Hemisphere (NH) between 46 and 53° N, MACC overpredicts between 26 and 37° N, and CT2013b underpredicts the seasonal cycle amplitude in the Southern Hemisphere (SH). The seasonal cycle phase indicates whether a data set or model lags another data set in time. We find that the GOSAT measurements improve the seasonal cycle phase substantially over the prior while SCIAMACHY measurements improve the phase significantly for just two of seven sites. The models reproduce the measured seasonal cycle phase well except for at Lauder_125HR (CT2013b) and Darwin (MACC). We compare the variability within 1 day between TCCON and models in JJA; there is correlation between 0.2 and 0.8 in the NH, with models showing 10–50 % the variability of TCCON at different stations and CT2013b showing more variability than MACC. This paper highlights findings that provide inputs to estimate flux errors in model assimilations, and places where models and satellites need further investigation, e.g., the SH for models and 45–67° N for GOSAT and CT2013b.

Highlights

  • Carbon–climate feedbacks are a major uncertainty in predicting the climate response to anthropogenic forcing (Friedlingstein et al, 2006)

  • A revised bias correction scheme has been developed for the v3.5 retrievals. This scheme is similar to the approach described in Wunch et al (2011b), which characterized the errors in earlier versions of the Atmospheric CO2 Observations from Space (ACOS) retrieval using a simple spatial uniformity assumption of XCO2 in the Southern Hemisphere www.atmos-meas-tech.net/9/683/2016/

  • We find standard deviations of 0.9, 0.9, 1.7, and 2.1 ppm vs. Total Carbon Column Observing Network (TCCON) for CT2013b, Monitoring Atmospheric Composition and Climate (MACC), gases Observing SATellite (GOSAT), and SCIAMACHY, respectively, with the single target errors 1.9 and 0.9 times the predicted errors for GOSAT and SCIAMACHY, respecwww.atmos-meas-tech.net/9/683/2016/

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Summary

Introduction

Carbon–climate feedbacks are a major uncertainty in predicting the climate response to anthropogenic forcing (Friedlingstein et al, 2006). Satellites offer a much denser and spatially contiguous data set for top-down estimates, but are much more susceptible to biases as compared to ground-based measurements This paper tests different characteristics of model and satellite CO2 (e.g., seasonal cycle amplitude and phase, regional and seasonal biases, effects of averaging, and diurnal variations) through a series of specialized comparisons to the Total Carbon Column Observing Network (TCCON). This paper shows a set of comparisons and tests that may be useful for evaluating bottom-up flux estimates or transport schemes in models. The various satellite and model XCO2 data are compared against TCCON observations in Sect. 3. Temporal characteristics of the different XCO2 data and models, including the seasonal cycle amplitude and phase, are compared in Sect.

The TCCON
GOSAT CO2
SCIAMACHY CO2
CarbonTracker
Direct comparisons to TCCON
Coincidence criteria and other matching details
Bias and standard deviation for individual matches
Errors as a function of coincidence criteria and averaging
Seasonally dependent biases
Seasonal cycle amplitude
CO2 yearly growth rate
Seasonal cycle phase
Discussion and conclusions
704 Appendix A
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