Articles | Volume 20, issue 2
https://doi.org/10.5194/tc-20-905-2026
© Author(s) 2026. This work is distributed under the Creative Commons Attribution 4.0 License.
Enhanced neural network classification for Arctic summer sea ice
Download
- Final revised paper (published on 03 Feb 2026)
- Preprint (discussion started on 18 Jul 2025)
Interactive discussion
Status: closed
Comment types: AC – author | RC – referee | CC – community | EC – editor | CEC – chief editor
| : Report abuse
-
RC1: 'Comment on egusphere-2025-2789', Sanggyun Lee, 24 Aug 2025
- AC1: 'Reply on RC1', Anne Braakmann-Folgmann, 22 Sep 2025
-
RC2: 'Comment on egusphere-2025-2789', Anonymous Referee #2, 25 Aug 2025
- AC2: 'Reply on RC2', Anne Braakmann-Folgmann, 22 Sep 2025
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) (26 Sep 2025) by Valentina Radic
AR by Anne Braakmann-Folgmann on behalf of the Authors (01 Oct 2025)
Author's response
Author's tracked changes
Manuscript
ED: Referee Nomination & Report Request started (22 Oct 2025) by Valentina Radic
RR by Sanggyun Lee (29 Oct 2025)
RR by Anonymous Referee #2 (25 Nov 2025)
ED: Publish subject to minor revisions (review by editor) (11 Dec 2025) by Valentina Radic
AR by Anne Braakmann-Folgmann on behalf of the Authors (19 Dec 2025)
Author's response
Author's tracked changes
Manuscript
ED: Publish as is (10 Jan 2026) by Valentina Radic
AR by Anne Braakmann-Folgmann on behalf of the Authors (12 Jan 2026)
This study follows Dawson et al. (2022) and Landy et al. (2022), extending their work by adding more training samples and improving the CNN architecture. While the contributions are clear, there remain parts of the Methods section that require further elaboration to improve readability and reproducibility. I therefore recommend publication after a major revision.
General comments:
P4, L97: Since the addition of training samples is a key contribution of this study, I recommend providing a table summarizing the newly added samples, including their geographic region, month, and satellite source.
P4, L117: Could the authors clarify why a 7 km window was chosen?
P8, L172: Apparently, the lead and ice samples were manually extracted using visual inspection. However, as noted in Section 4.2, distinguishing between thinned floes and good floes is not straightforward in Sentinel-1 imagery. Could the authors comment on the potential impact of human error during the manual extraction of training samples, and how such uncertainty was mitigated?
P8, L175: If I understand correctly, Istomina et al. (2016) does not explicitly demonstrate that melt ponds and leads can be spectrally distinguished. It may be helpful for the authors to clarify how this reference supports their statement on spectral separation.
L8, 187: Since distinguishing leads from melt ponds is the most critical challenge in summer, could the authors clarify whether melt ponds are assumed to be entirely included in the noisy floe class? In addition, are refreezing ponds in August and September also included in this class? From a sea surface height (SSH) perspective, it may be difficult to separate thinned floes from refreezing ponds. It would be helpful if the authors could explain how refreezing ponds are treated in their classification.
Figure 3: It would strengthen the manuscript if the authors could provide quantitative evidence that the addition of the thinned floe class improves the classification performance.
Figure 6: Since surfaces with diverse geophysical conditions also occur in July, August, and September, it would be helpful to include additional examples of CryoSat-2 tracks with coincident imagery from these months. This would further support the robustness of the classification.
Minor comments:
P1, L16: One reference is missing the publication year. Please correct this.
Figure 1: The caption of Figure 1 is unclear as currently written. Please rephrase it to improve clarity.
P8, L163-164: The text refers the reader to Dawson et al. (2022), but without further explanation it may be difficult to understand Figure 3 and the use of the 11-point window. A short description would be helpful.
P10, L209: Please specify whether pooling refers to max pooling or mean pooling.
P10, L221: Did the authors also test the Adam optimizer? If so, was there any improvement in performance compared to RMSProp?
Table 1 and 2: Please place the captions above the tables rather than below.
Table 1: For the ice user/producer accuracies, does this metric include both good and noisy floes together? Please clarify.