Articles | Volume 18, issue 10
https://doi.org/10.5194/gmd-18-2921-2025
https://doi.org/10.5194/gmd-18-2921-2025
Model description paper
 | 
19 May 2025
Model description paper |  | 19 May 2025

H2MV (v1.0): global physically constrained deep learning water cycle model with vegetation

Zavud Baghirov, Martin Jung, Markus Reichstein, Marco Körner, and Basil Kraft

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Interactive discussion

Status: closed

Comment types: AC – author | RC – referee | CC – community | EC – editor | CEC – chief editor | : Report abuse
  • RC1: 'Comment on egusphere-2024-2044', Anonymous Referee #1, 14 Oct 2024
    • AC1: 'Reply on RC1', Zavud Baghirov, 11 Dec 2024
  • RC2: 'Comment on egusphere-2024-2044', Uwe Ehret, 15 Oct 2024
    • AC2: 'Reply on RC2', Zavud Baghirov, 11 Dec 2024

Peer review completion

AR: Author's response | RR: Referee report | ED: Editor decision | EF: Editorial file upload
AR by Zavud Baghirov on behalf of the Authors (21 Jan 2025)  Author's response   Author's tracked changes   Manuscript 
ED: Referee Nomination & Report Request started (11 Feb 2025) by Nathaniel Chaney
RR by Uwe Ehret (14 Feb 2025)
RR by Anonymous Referee #1 (21 Feb 2025)
ED: Publish as is (05 Mar 2025) by Nathaniel Chaney
AR by Zavud Baghirov on behalf of the Authors (05 Mar 2025)
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Short summary
We use an innovative approach to studying the Earth's water cycle by integrating advanced machine learning techniques with a traditional water cycle model. Our model is designed to learn from observational data, with a particular emphasis on understanding the influence of vegetation on water movement. By closely aligning with real-world observations, our model offers new possibilities for enhancing our understanding of the water cycle and its interactions with vegetation.
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