Articles | Volume 25, issue 1
https://doi.org/10.5194/nhess-25-41-2025
https://doi.org/10.5194/nhess-25-41-2025
Brief communication
 | 
03 Jan 2025
Brief communication |  | 03 Jan 2025

Brief communication: Training of AI-based nowcasting models for rainfall early warning should take into account user requirements

Georgy Ayzel and Maik Heistermann

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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-2024-1945', Anonymous Referee #1, 20 Aug 2024
    • AC1: 'Reply on RC1', Maik Heistermann, 06 Sep 2024
  • RC2: 'Comment on egusphere-2024-1945', Remko Uijlenhoet, 27 Aug 2024
    • AC2: 'Reply on RC2', Maik Heistermann, 06 Sep 2024

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) (10 Sep 2024) by Vassiliki Kotroni
AR by Maik Heistermann on behalf of the Authors (17 Oct 2024)  Author's response   Author's tracked changes   Manuscript 
ED: Referee Nomination & Report Request started (28 Oct 2024) by Vassiliki Kotroni
RR by Remko Uijlenhoet (28 Oct 2024)
RR by Anonymous Referee #3 (11 Nov 2024)
ED: Publish as is (11 Nov 2024) by Vassiliki Kotroni
AR by Maik Heistermann on behalf of the Authors (11 Nov 2024)  Manuscript 
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Short summary
Forecasting rainfall over the next hour is an essential feature of early warning systems. Deep learning (DL) has emerged as a powerful alternative to conventional nowcasting technologies, but it still struggles to adequately predict impact-relevant heavy rainfall. We think that DL could do much better if the training tasks were defined more specifically and that such specification presents an opportunity to better align the output of nowcasting models with actual user requirements.
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