Improving the joint estimation of CO 2 and surface carbon fluxes using a constrained ensemble Kalman filter in COLA (v1.0)
[摘要] Atmospheric inversion of carbon dioxide (CO 2 ) measurements tobetter understand carbon sources and sinks has made great progress over thelast 2 decades. However, most of the studies, including a four-dimensionalvariational ensemble Kalman filter and Bayesian synthesis approaches,directly obtain only fluxes, while CO 2 concentration is derived withthe forward model as part of a post-analysis. Kang et al. (2012) used the local ensemble transform Kalman filter (LETKF), which updates the CO 2 , surface carbon flux (SCF), and meteorology fields simultaneously. Following this track, a system with a short assimilation window and a long observation window was developed (Liu et al., 2019). However, this data assimilation system faces the challenge of maintaining carbon mass conservation. To overcome this shortcoming, here we apply a constrained ensemble Kalman filter (CEnKF) approach to ensure the conservation of global CO 2 mass. After a standard LETKF procedure, an additional assimilation is used to adjust CO 2 at each model grid point and to ensure the consistency between the analysis and the first guess of the global CO 2 mass. Compared to an observing system simulation experiment without mass conservation, the CEnKF significantly reduces the annual global SCF bias from ∼ 0.2 to less than 0.06 Gt and slightly improves the seasonal and annual performance over tropical and southern extratropical regions. We show that this system can accurately track the spatial distribution of annual mean SCF. And the system reduces the seasonal flux root mean square error from a priori to analysis by 48 %–90 %, depending on the continental region. Moreover, the 2015–2016 El Niño impact is well captured with anomalies mainly in the tropics.
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[效力级别] [学科分类] 土木及结构工程学
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