Abstract
Rangelands provide significant environmental benefits through many ecosystem services, which may include soil organic carbon (SOC) sequestration. However, quantifying SOC stocks and monitoring carbon (C) fluxes in rangelands are challenging due to the considerable spatial and temporal variability tied to rangeland C dynamics as well as limited data availability. We developed the Rangeland Carbon Tracking and Management (RCTM) system to track long-term changes in SOC and ecosystem C fluxes by leveraging remote sensing inputs and environmental variable data sets with algorithms representing terrestrial C-cycle processes. Bayesian calibration was conducted using quality-controlled C flux data sets obtained from 61 Ameriflux and NEON flux tower sites from Western and Midwestern US rangelands to parameterize the model according to dominant vegetation classes (perennial and/or annual grass, grass-shrub mixture, and grass-tree mixture). The resulting RCTM system produced higher model accuracy for estimating annual cumulative gross primary productivity (GPP) (R2 > 0.6, RMSE <390 g C m−2) relative to net ecosystem exchange of CO2 (NEE) (R2 > 0.4, RMSE <180 g C m−2). Model performance in estimating rangeland C fluxes varied by season and vegetation type. The RCTM captured the spatial variability of SOC stocks with R2 = 0.6 when validated against SOC measurements across 13 NEON sites. Model simulations indicated slightly enhanced SOC stocks for the flux tower sites during the past decade, which is mainly driven by an increase in precipitation. Future efforts to refine the RCTM system will benefit from long-term network-based monitoring of vegetation biomass, C fluxes, and SOC stocks.
Original language | English |
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Article number | e2024MS004342 |
Journal | Journal of Advances in Modeling Earth Systems |
Volume | 17 |
Issue number | 3 |
DOIs | |
State | Published - Mar 2025 |
Keywords
- C
- DNDC
- DSM
- Denitrification-Decomposition
- GEE
- GPP
- Google Earth Engine
- Gross Primary Productivity
- HOC
- L4C
- LOOCV
- LUE
- Level 4 Carbon
- MBE
- NDVI
- NEE
- NEON
- NIR
- NLCD
- NLDAS
- NPP
- National Ecological Observatory Network
- National Land Cover Database
- Normalized Difference Vegetation Index
- North American Land Data Assimilation System
- PI
- POC
- QC
- RAP
- RB
- RCTM
- RECO
- RMSE
- ROC
- RS
- Rangeland Analysis Platform
- Rangeland Carbon Tracking and Management
- Root Mean Square Error
- RothC
- Rothamsted Carbon
- SMAP
- SMLR
- SOC
- SOM
- STARFM
- Soil Moisture Active-Passive
- Spatial and Temporal Adaptive Reflectance Fusion Model
- VPD
- carbon
- digital soil mapping
- ecosystem respiration
- fPAR
- flux towers
- fraction of absorbed photosynthetically active radiation
- gross primary productivity
- humus organic carbon
- leave-one-out cross-validation
- light use efficiency
- mean bias error
- modeling
- nRMSE
- near infrared band
- net ecosystem exchange
- net ecosystem exchange of carbon dioxide
- net primary productivity
- normalized Root Mean Square Error
- particulate organic carbon
- principal investigator
- quality control
- rangeland
- relative bias
- remote sensing
- resistant organic carbon
- soil organic carbon
- soil organic matter
- stepwise multiple linear regression
- vapor pressure deficit