Evaluation of the ECOSSE-Model for Estimating Soil Respiration from Eight European Permanent Grassland Sites
Preprint 2023 en
Authors
MA
Mohamed Abdalla
IF
Iris Feigenwinter
MR
Mark Richards
Abstract
1 min read
This study used the ECOSSE model (v. 5.0.1) to simulate soil respiration (Rs) flux-es estimated from ecosystem respiration (Reco) for eight European permanent grassland (PG) sites with varying grass species, soils, and management. The main aim was to evaluate the strengths and weaknesses of the model in estimating Rs from grasslands, and to gain a better understanding of the terrestrial carbon cycle and how Rs is affect-ed by natural and anthropogenic drivers. Results revealed that the current version of the ECOSSE model may not be reliable for estimating daily Rs fluxes, particularly in dry sites. However, it could still be a valuable tool for predicting cumulative Rs from PG. Additionally, the model demonstrated accurate simulation of Rs in response to grass cutting and slurry application practices. The sensitivity analyses and attribution tests revealed that increased soil organic carbon (SOC), soil pH, temperature, reduced precipitation, and lower water table (WT) depth could lead to increased Rs from soils. The variability of Rs fluxes across sites and years was attributed to climate, weather, soil properties, and management practices. The study suggests the need for additional development and application of the ECOSSE model, specifically in dry and low input sites, to evaluate the impacts of various land management interventions on carbon sequestration and emissions in PG.
Mohamed Abdalla, Iris Feigenwinter, Mark Richards, Sylvia H. Vetter, Georg Wohlfahrt, Ute Skiba, Krisztina Pintér, Zoltán Nagy, Stanislav Hejduk, Nina Buchmann, Paul Newell‐Price, Pete Smith
Marta Dondini, Giorgio Alberti, Gemini Delle Vedove, Maurizio Ventura, Giustino Tonon, Maud Viger, Zoe M. Harris, Joseph R. Jenkins, Mark Richards, Mark Pogson, Gail Taylor, Jo Smith, Pete Smith
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