The lack of a process-level understanding of the carbon cycle is a major contributor to our uncertainty in understanding future changes in the carbon cycle and its interplay with the climate system. Recent initiatives to reduce this uncertainty, including increases in data density and the estimation of emissions and uptake (a.k.a. fluxes) at fine spatiotemporal scales, presents computational challenges that call for numerically-efficient schemes. Often based on data assimilation (DA) approaches, these schemes are common within the numerical weather prediction community. The goal of this research is to identify fundamental gaps in our knowledge regarding the precision and accuracy of DA for CO2 applications, and develop suitable methods to ...
The ability to monitor and understand natural and anthropogenic variability in atmospheric carbon di...
We develop and test new methodologies to best estimate CO2 fluxes on the Earth's surface by assimila...
We developed a carbon data assimilation system to estimate surface carbon fluxes using the local ens...
The lack of a process-level understanding of the carbon cycle is a major contributor to our uncertai...
This dissertation explores the utility of high-resolution satellite carbon dioxide (CO2) and water v...
As a first step to build an ensemble data assimilation and source inversion system for atmospheric c...
In any data assimilation framework, the background error covariance statistics play the critical rol...
Data assimilation systems allow for estimating surface fluxes of greenhouse gases from atmospheric c...
Data assimilation systems allow for estimating surface fluxes of greenhouse gases from atmospheric c...
Data assimilation systems allow for estimating surface fluxes of greenhouse gases from atmospheric c...
Author Posting. © Blackwell, 2006. This is the author's version of the work. It is posted here by p...
We present a data assimilation system to estimate surface fluxes of CO2 and other trace gases from o...
Current inverse modeling-based estimates of carbon dioxide (CO2) fluxes in urban areas typically use...
The ability to monitor and understand natural and anthropogenic variability in atmospheric carbon di...
We develop and test new methodologies to best estimate CO2 fluxes on the Earth's surface by assimila...
We developed a carbon data assimilation system to estimate surface carbon fluxes using the local ens...
The lack of a process-level understanding of the carbon cycle is a major contributor to our uncertai...
This dissertation explores the utility of high-resolution satellite carbon dioxide (CO2) and water v...
As a first step to build an ensemble data assimilation and source inversion system for atmospheric c...
In any data assimilation framework, the background error covariance statistics play the critical rol...
Data assimilation systems allow for estimating surface fluxes of greenhouse gases from atmospheric c...
Data assimilation systems allow for estimating surface fluxes of greenhouse gases from atmospheric c...
Data assimilation systems allow for estimating surface fluxes of greenhouse gases from atmospheric c...
Author Posting. © Blackwell, 2006. This is the author's version of the work. It is posted here by p...
We present a data assimilation system to estimate surface fluxes of CO2 and other trace gases from o...
Current inverse modeling-based estimates of carbon dioxide (CO2) fluxes in urban areas typically use...
The ability to monitor and understand natural and anthropogenic variability in atmospheric carbon di...
We develop and test new methodologies to best estimate CO2 fluxes on the Earth's surface by assimila...
We developed a carbon data assimilation system to estimate surface carbon fluxes using the local ens...