Articles | Volume 23, issue 1
https://doi.org/10.5194/bg-23-263-2026
https://doi.org/10.5194/bg-23-263-2026
Research article
 | 
09 Jan 2026
Research article |  | 09 Jan 2026

Land surface model underperformance tied to specific meteorological conditions

Jon Cranko Page, Martin G. De Kauwe, Andy J. Pitman, Isaac R. Towers, Gabriele Arduini, Martin J. Best, Craig R. Ferguson, Jürgen Knauer, Hyungjun Kim, David M. Lawrence, Tomoko Nitta, Keith W. Oleson, Catherine Ottlé, Anna Ukkola, Nicholas Vuichard, Xiaoni Wang-Faivre, and Gab Abramowitz

Data sets

Forcing and Evaluation Datasets for a Model Intercomparison Project for Land Surface Models v1.0 A. Ukkola https://doi.org/10.25914/5FDB0902607E1

Model code and software

Analysis Code for "LSM Underperformance Tied to Specific Meteorological Conditions" Jon Cranko Page https://github.com/JDCP93/LSMUnderperformance

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Short summary
This paper used a large dataset of observations, machine learning predictions, and computer model simulations to test how well land surface models represent the water, energy, and carbon cycles. We found that the models work well under "normal" weather but do not meet performance expectations during coinciding extreme conditions. Since these extremes are relatively rare, targeted model improvements could deliver major performance gains.
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