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Addressing Challenges in Simulating Inter–Annual Variability of Gross Primary Production

  • Ranit De*
  • , Shanning Bao
  • , Sujan Koirala
  • , Alexander Brenning
  • , Markus Reichstein
  • , Torbern Tagesson
  • , Michael Liddell
  • , Andreas Ibrom
  • , Sebastian Wolf
  • , Ladislav Šigut
  • , Lukas Hörtnagl
  • , William Woodgate
  • , Mika Korkiakoski
  • , Lutz Merbold
  • , T. Andrew Black
  • , Marilyn Roland
  • , Anne Klosterhalfen
  • , Peter D. Blanken
  • , Sara Knox
  • , Simone Sabbatini
  • Bert Gielen, Leonardo Montagnani, Rasmus Fensholt, Georg Wohlfahrt, Ankur R. Desai, Eugénie Paul-Limoges, Marta Galvagno, Albin Hammerle, Georg Jocher, Borja Ruiz Reverter, David Holl, Jiquan Chen, Luca Vitale, M. Altaf Arain, Nuno Carvalhais*
*Corresponding author for this work
  • Friedrich Schiller University Jena
  • Chinese Academy of Sciences
  • Max Planck Institute for Biogeochemistry
  • Lund University
  • James Cook University Queensland
  • Swiss Federal Institute of Technology Zurich
  • Czech Academy of Sciences
  • University of Queensland
  • Finnish Meteorological Institute
  • Agroscope
  • University of British Columbia
  • University of Antwerp
  • University of Göttingen
  • University of Colorado Boulder
  • McGill University
  • Euro-Mediterranean Center on Climate Change
  • Free University of Bozen-Bolzano
  • University of Copenhagen
  • University of Innsbruck
  • University of Wisconsin-Madison
  • Swiss Federal Institute for Forest, Snow and Landscape Research
  • Environmental Protection Agency of Aosta Valley
  • Johann Heinrich von Thunen Institute
  • Universidade Federal da Paraíba
  • University of Hamburg
  • Michigan State University
  • National Research Council of Italy
  • McMaster University
  • NOVA University Lisbon

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Abstract

A long‐standing challenge in studying the global carbon cycle has been understanding the factors controlling inter–annual variation (IAV) of carbon fluxes, and improving their representations in existing biogeochemical models. Here, we compared an optimality‐based model and a semi‐empirical light use efficiency model to understand how current models can be improved to simulate IAV of gross primary production (GPP). Both models simulated hourly GPP and were parameterized for (a) each site–year, (b) each site with an additional constraint on IAV (CostIAV ), (c) each site, (d) each plant–functional type, and (e) globally. This was followed by forward runs using calibrated parameters, and model evaluations using Nash–Sutcliffe efficiency (NSE) as a model‐fitness measure at different temporal scales across 198 eddy‐covariance sites representing diverse climate–vegetation types. Both models simulated hourly GPP better (median normalized NSE: 0.83 and 0.85) than annual GPP (median normalized NSE: 0.54 and 0.63) for most sites. Specifically, the optimality‐based model substantially improved from NSE of – 1.39 to 0.92 when drought stress was explicitly included. Most of the variability in model performances was due to model types and parameterization strategies. The semi‐empirical model produced statistically better hourly simulations than the optimality‐based model, and site–year parameterization yielded better annual model performance. model performance did not improve even when parameterized using CostIAV. Furthermore, both models underestimated the peaks of diurnal GPP, suggesting that improving predictions of peaks could produce better annual model performance. Our findings reveal current modeling deficiencies in representing IAV of carbon fluxes and guide improvements in further model development.

Original languageEnglish
Article numbere2024MS004697
JournalJournal of Advances in Modeling Earth Systems
Volume17
Issue number5
Number of pages44
ISSN1942-2466
DOIs
Publication statusPublished - 2025

UN SDGs

This output contributes to the following UN Sustainable Development Goals (SDGs)

  1. SDG 13 - Climate Action
    SDG 13 Climate Action

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