Publications des scientifiques de l'IRD

Wang Q., Barre P., Baudin F., Clivot H., Ferchaud F., Li Y., Gao X. S., Le Noe Julia. (2023). The AMG model coupled with Rock-Eval (R) analysis accurately predicts cropland soil organic carbon dynamics in the Tuojiang River Basin, Southwest China. Journal of Environmental Management, 345, 118850 [11 p.]. ISSN 0301-4797.

Titre du document
The AMG model coupled with Rock-Eval (R) analysis accurately predicts cropland soil organic carbon dynamics in the Tuojiang River Basin, Southwest China
Année de publication
2023
Type de document
Article référencé dans le Web of Science WOS:001063770900001
Auteurs
Wang Q., Barre P., Baudin F., Clivot H., Ferchaud F., Li Y., Gao X. S., Le Noe Julia
Source
Journal of Environmental Management, 2023, 345, 118850 [11 p.] ISSN 0301-4797
Accurate soil organic carbon models are key to understand the mechanisms governing carbon sequestration in soil and to help develop targeted management strategies to carbon budget. The accuracy and reliability of soil organic carbon (SOC) models remains strongly limited by incorrect initialization of the conceptual kinetic pools and lack of stringent model evaluation using time-series datasets. Notably, due to legacy effects of management and land use change, the traditional spin-up approach for initial allocation of SOC among kinetic pools can bring substantial uncertainties in predicting the evolution of SOC stocks. The AMG model can fulfill these conditions as it is a parsimonious yet accurate SOC model using widely-available input data. In this study, we first evaluated the performance of AMGv2 before and after optimizing the potential mineralization rate (k0) of SOC stock following a leave-one-site-out cross-validation based on 24 long-term field experiments (LTEs) in the Southwest of China. Then, we used Rock-Eval & REG; thermal analysis results as input variables in the PARTYSOC machine learning model to estimate the initial stable SOC fraction (CS/C0) for the 14 LTEs where soil samples were available. The results showed that initializing the CS/C0 ratio using PARTYSOC combined with the optimized k0 further improved the accuracy of model simulations (R2 = 0.87, RMSE = 0.25, d = 0.90). Combining average measured CS/C0 and k0 optimization across all 24 LTEs also improved the model predictive capability by 25% compared to using default parameterization, thus suggesting promising avenue for upscaling model applications at the regional level where only a few measurement data on SOC stability can be available. In conclusion, the new version of the AMG model developed in the Tuojiang River Basin context exhibits excellent performance. This result paves the way for further calibration and validation of the AMG model in a wider set of contexts, with the potential to significantly improve confidence in SOC predictions in croplands over regional scales.
Plan de classement
Sciences fondamentales / Techniques d'analyse et de recherche [020] ; Sciences du milieu [021] ; Pédologie [068]
Description Géographique
CHINE
Localisation
Fonds IRD [F B010090220]
Identifiant IRD
fdi:010090220
Contact