Articles | Volume 17, issue 2
https://doi.org/10.5194/tc-17-499-2023
https://doi.org/10.5194/tc-17-499-2023
Research article
 | 
07 Feb 2023
Research article |  | 07 Feb 2023

Predicting ocean-induced ice-shelf melt rates using deep learning

Sebastian H. R. Rosier, Christopher Y. S. Bull, Wai L. Woo, and G. Hilmar Gudmundsson

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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 tc-2021-396', Timothy Smith, 16 Feb 2022
    • AC1: 'Author's response', Sebastian Rosier, 21 Apr 2022
  • RC2: 'Review of Rosier et al.', Jordi Bolibar, 21 Feb 2022
    • AC1: 'Author's response', Sebastian Rosier, 21 Apr 2022
  • RC3: 'Review of tc-2021-396, can the 2 networks be merged into a single regression network?', Guillaume Jouvet, 21 Feb 2022
    • AC1: 'Author's response', Sebastian Rosier, 21 Apr 2022
  • AC1: 'Author's response', Sebastian Rosier, 21 Apr 2022

Peer review completion

AR: Author's response | RR: Referee report | ED: Editor decision | EF: Editorial file upload
ED: Reconsider after major revisions (further review by editor and referees) (23 May 2022) by Kerim Nisancioglu
AR by Sebastian Rosier on behalf of the Authors (24 Aug 2022)  Author's response   Author's tracked changes   Manuscript 
ED: Referee Nomination & Report Request started (09 Sep 2022) by Kerim Nisancioglu
RR by Timothy Smith (27 Sep 2022)
RR by Jordi Bolibar (27 Sep 2022)
ED: Publish subject to revisions (further review by editor and referees) (26 Oct 2022) by Kerim Nisancioglu
AR by Sebastian Rosier on behalf of the Authors (01 Dec 2022)  Author's response   Author's tracked changes   Manuscript 
ED: Publish as is (09 Jan 2023) by Kerim Nisancioglu
AR by Sebastian Rosier on behalf of the Authors (10 Jan 2023)  Manuscript 
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Short summary
Future ice loss from Antarctica could raise sea levels by several metres, and key to this is the rate at which the ocean melts the ice sheet from below. Existing methods for modelling this process are either computationally expensive or very simplified. We present a new approach using machine learning to mimic the melt rates calculated by an ocean model but in a fraction of the time. This approach may provide a powerful alternative to existing methods, without compromising on accuracy or speed.