Articles | Volume 18, issue 11
https://doi.org/10.5194/gmd-18-3509-2025
https://doi.org/10.5194/gmd-18-3509-2025
Development and technical paper
 | 
13 Jun 2025
Development and technical paper |  | 13 Jun 2025

DustNet (v1): skilful neural network predictions of dust aerosols over the Saharan desert

Trish E. Nowak, Andy T. Augousti, Benno I. Simmons, and Stefan Siegert

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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-2024-2259', Anonymous Referee #1, 26 Sep 2024
    • AC1: 'Reply on RC1', Trish Nowak, 20 Dec 2024
  • RC2: 'Comment on egusphere-2024-2259', Narendra Ojha, 20 Nov 2024
    • AC2: 'Reply on RC2', Trish Nowak, 20 Dec 2024

Peer review completion

AR: Author's response | RR: Referee report | ED: Editor decision | EF: Editorial file upload
AR by Trish Nowak on behalf of the Authors (25 Dec 2024)  Author's response   Author's tracked changes 
EF by Anna Glados (02 Jan 2025)  Manuscript   Supplement 
ED: Reconsider after major revisions (14 Jan 2025) by Holger Tost
AR by Trish Nowak on behalf of the Authors (22 Feb 2025)  Author's response   Author's tracked changes   Manuscript 
EF by Daria Karpachova (23 Feb 2025)  Supplement 
ED: Publish as is (09 Mar 2025) by Holger Tost
AR by Trish Nowak on behalf of the Authors (10 Mar 2025)  Author's response   Manuscript 
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Short summary
The DustNet model uses deep neural networks to accurately predict Saharan mineral dust transport in the atmosphere. It offers fast and precise forecasts with predictions achieved in just 2.1 s on a standard computer. This innovative approach outperforms traditional models, which take hours to produce a forecast and use high-energy supercomputers. By making high-quality dust monitoring accessible and efficient, DustNet can improve weather, climate, and air quality forecasts.
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