Abstract

This paper presents a modeling approach aimed at seasonal resolution of global climatic and edaphic controls on patterns of terrestrial ecosystem production and soil microbial respiration. We use satellite imagery (Advanced Very High Resolution Radiometer and International Satellite Cloud Climatology Project solar radiation), along with historical climate (monthly temperature and precipitation) and soil attributes (texture, C and N contents) from global (1°) data sets as model inputs. The Carnegie‐Ames‐Stanford approach (CASA) Biosphere model runs on a monthly time interval to simulate seasonal patterns in net plant carbon fixation, biomass and nutrient allocation, litterfall, soil nitrogen mineralization, and microbial CO 2 production. The model estimate of global terrestrial net primary production is 48 Pg C yr −1 with a maximum light use efficiency of 0.39 g C MJ −1 PAR. Over 70% of terrestrial net production takes place between 30°N and 30°S latitude. Steady state pools of standing litter represent global storage of around 174 Pg C (94 and 80 Pg C in nonwoody and woody pools, respectively), whereas the pool of soil C in the top 0.3 m that is turning over on decadal time scales comprises 300 Pg C. Seasonal variations in atmospheric CO 2 concentrations from three stations in the Geophysical Monitoring for Climate Change Flask Sampling Network correlate significantly with estimated net ecosystem production values averaged over 50°–80° N, 10°–30° N, and 0°–10° N.

Keywords

Environmental sciencePrimary productionEcosystemTerrestrial ecosystemBiosphereAtmospheric sciencesCarbon cyclePlant litterEcology

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Publication Info

Year
1993
Type
article
Volume
7
Issue
4
Pages
811-841
Citations
2937
Access
Closed

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Citation Metrics

2937
OpenAlex
259
Influential
2470
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Cite This

Christopher Potter, James T. Randerson, Christopher B. Field et al. (1993). Terrestrial ecosystem production: A process model based on global satellite and surface data. Global Biogeochemical Cycles , 7 (4) , 811-841. https://doi.org/10.1029/93gb02725

Identifiers

DOI
10.1029/93gb02725

Data Quality

Data completeness: 81%