It is important to accurately evaluate ecosystem respiration (RE) in the alpine grasslands of the Tibetan Plateau and the temperate grasslands of the Inner Mongolian Plateau, as it serves as a sensitivity indicator of regional and global carbon cycles. Here, we combined flux measurements taken between 2003 and 2013 from 16 grassland sites across northern China and the corresponding MODIS land surface temperature (LST), enhanced vegetation index (EVI), and land surface water index (LSWI) to build a satellite-based model to estimate RE at a regional scale. First, the dependencies of both spatial and temporal variations of RE on these biotic and climatic factors were examined explicitly. We found that plant productivity and moisture, but not t...
Estimate of net ecosystem carbon exchange (NEE) between the atmosphere and terrestrial ecosystems, t...
Estimate of net ecosystem carbon exchange (NEE) between the atmosphere and terrestrial ecosystems, t...
While a number of machine learning (ML) models have been used to estimate RE, systematic evaluation ...
It is important to accurately evaluate ecosystem respiration (RE) in the alpine grasslands of the Ti...
It is important to accurately evaluate ecosystem respiration (RE) in the alpine grasslands of the Ti...
It is important to accurately evaluate ecosystem respiration (RE) in the alpine grasslands of the Ti...
Ecosystem respiration (R-e) is rarely quantified from remote sensing data because satellite techniqu...
Selecting an appropriate model for simulating ecosystem respiration is critical in modeling the carb...
Soil respiration (Rs), a key process in the terrestrial carbon cycle, is very sensitive to climate c...
Soil respiration (Rs), a key process in the terrestrial carbon cycle, is very sensitive to climate ...
Soil respiration (Rs), a key process in the terrestrial carbon cycle, is very sensitive to climate c...
In order to understand how changes in climate and land cover affect carbon cycles and structure and ...
Carbon fluxes in temperate grassland ecosystems are characterized by large inter-annual variations d...
<div><p>Estimate of net ecosystem carbon exchange (NEE) between the atmosphere and terrestrial ecosy...
Current climate change (e.g., temperature and precipitation variations) profoundly influences terres...
Estimate of net ecosystem carbon exchange (NEE) between the atmosphere and terrestrial ecosystems, t...
Estimate of net ecosystem carbon exchange (NEE) between the atmosphere and terrestrial ecosystems, t...
While a number of machine learning (ML) models have been used to estimate RE, systematic evaluation ...
It is important to accurately evaluate ecosystem respiration (RE) in the alpine grasslands of the Ti...
It is important to accurately evaluate ecosystem respiration (RE) in the alpine grasslands of the Ti...
It is important to accurately evaluate ecosystem respiration (RE) in the alpine grasslands of the Ti...
Ecosystem respiration (R-e) is rarely quantified from remote sensing data because satellite techniqu...
Selecting an appropriate model for simulating ecosystem respiration is critical in modeling the carb...
Soil respiration (Rs), a key process in the terrestrial carbon cycle, is very sensitive to climate c...
Soil respiration (Rs), a key process in the terrestrial carbon cycle, is very sensitive to climate ...
Soil respiration (Rs), a key process in the terrestrial carbon cycle, is very sensitive to climate c...
In order to understand how changes in climate and land cover affect carbon cycles and structure and ...
Carbon fluxes in temperate grassland ecosystems are characterized by large inter-annual variations d...
<div><p>Estimate of net ecosystem carbon exchange (NEE) between the atmosphere and terrestrial ecosy...
Current climate change (e.g., temperature and precipitation variations) profoundly influences terres...
Estimate of net ecosystem carbon exchange (NEE) between the atmosphere and terrestrial ecosystems, t...
Estimate of net ecosystem carbon exchange (NEE) between the atmosphere and terrestrial ecosystems, t...
While a number of machine learning (ML) models have been used to estimate RE, systematic evaluation ...