Communications Earth & Environment (May 2023)

Soil organic carbon models need independent time-series validation for reliable prediction

  • Julia Le Noë,
  • Stefano Manzoni,
  • Rose Abramoff,
  • Tobias Bölscher,
  • Elisa Bruni,
  • Rémi Cardinael,
  • Philippe Ciais,
  • Claire Chenu,
  • Hugues Clivot,
  • Delphine Derrien,
  • Fabien Ferchaud,
  • Patricia Garnier,
  • Daniel Goll,
  • Gwenaëlle Lashermes,
  • Manuel Martin,
  • Daniel Rasse,
  • Frédéric Rees,
  • Julien Sainte-Marie,
  • Elodie Salmon,
  • Marcus Schiedung,
  • Josh Schimel,
  • William Wieder,
  • Samuel Abiven,
  • Pierre Barré,
  • Lauric Cécillon,
  • Bertrand Guenet

DOI
https://doi.org/10.1038/s43247-023-00830-5
Journal volume & issue
Vol. 4, no. 1
pp. 1 – 8

Abstract

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Abstract Numerical models are crucial to understand and/or predict past and future soil organic carbon dynamics. For those models aiming at prediction, validation is a critical step to gain confidence in projections. With a comprehensive review of ~250 models, we assess how models are validated depending on their objectives and features, discuss how validation of predictive models can be improved. We find a critical lack of independent validation using observed time series. Conducting such validations should be a priority to improve the model reliability. Approximately 60% of the models we analysed are not designed for predictions, but rather for conceptual understanding of soil processes. These models provide important insights by identifying key processes and alternative formalisms that can be relevant for predictive models. We argue that combining independent validation based on observed time series and improved information flow between predictive and conceptual models will increase reliability in predictions.