Approximating the complex nonlinear relationships that dominate the exchange of carbon dioxide fluxes between the biosphere and atmosphere is fundamentally important for addressing the issue of climate change. The progress of machine learning techniques has offered a number of useful tools for the scientific community aiming to gain new insights into the temporal and spatial variation of different carbon fluxes in terrestrial ecosystems. In this study, adaptive neuro-fuzzy inference system (ANFIS) and generalized regression neural network (GRNN) models were developed to predict the daily carbon fluxes in three boreal forest ecosystems based on eddy covariance (EC) measurements. Moreover, a comparison was made between the modeled values deri...
Understanding and modeling ecosystem responses to their climatic controls is one of the major challe...
Uncertainties in model projections of carbon cycling in terrestrial ecosystems stem from inaccurate ...
We upscaled FLUXNET observations of carbon dioxide, water, and energy fluxes to the global scale usi...
Accurate estimation of carbon and water fluxes of forest ecosystems is of particular importance for ...
Accurately estimating the carbon budgets in terrestrial ecosystems ranging from flux towers to regio...
Eddy covariance observation is an applicable way to obtain accurate and continuous carbon flux at fl...
Spatio-temporal fields of land–atmosphere fluxes derived from data-driven models can complement simu...
Carbon and latent heat fluxes can be simulated with different model strategies to fulfil different r...
The net ecosystem CO2 exchange (NEE) is a critical parameter for quantifying terrestrial ecosystems ...
Forests sequester atmospheric carbon dioxide (CO2) which is important for climate mitigation. Net ec...
Simulating the carbon-water fluxes at more widely distributed meteorological stations based on the s...
The eddy covariance (EC) technique is used to measure the net ecosystem exchange (NEE) of CO2 betwee...
We review 15 techniques for estimating missing values of net ecosystem CO2 exchange (NEE) in eddy co...
Long-term measurements of CO2 flux can be obtained using the eddy covariance technique, but these da...
Understanding and modeling ecosystem responses to their climatic controls is one of the major challe...
Uncertainties in model projections of carbon cycling in terrestrial ecosystems stem from inaccurate ...
We upscaled FLUXNET observations of carbon dioxide, water, and energy fluxes to the global scale usi...
Accurate estimation of carbon and water fluxes of forest ecosystems is of particular importance for ...
Accurately estimating the carbon budgets in terrestrial ecosystems ranging from flux towers to regio...
Eddy covariance observation is an applicable way to obtain accurate and continuous carbon flux at fl...
Spatio-temporal fields of land–atmosphere fluxes derived from data-driven models can complement simu...
Carbon and latent heat fluxes can be simulated with different model strategies to fulfil different r...
The net ecosystem CO2 exchange (NEE) is a critical parameter for quantifying terrestrial ecosystems ...
Forests sequester atmospheric carbon dioxide (CO2) which is important for climate mitigation. Net ec...
Simulating the carbon-water fluxes at more widely distributed meteorological stations based on the s...
The eddy covariance (EC) technique is used to measure the net ecosystem exchange (NEE) of CO2 betwee...
We review 15 techniques for estimating missing values of net ecosystem CO2 exchange (NEE) in eddy co...
Long-term measurements of CO2 flux can be obtained using the eddy covariance technique, but these da...
Understanding and modeling ecosystem responses to their climatic controls is one of the major challe...
Uncertainties in model projections of carbon cycling in terrestrial ecosystems stem from inaccurate ...
We upscaled FLUXNET observations of carbon dioxide, water, and energy fluxes to the global scale usi...