Submitted:
02 October 2025
Posted:
06 October 2025
You are already at the latest version
Abstract
Keywords:
1. Introduction
2. Materials and Methods
2.1. Site Selection and Rationale
2.2. GCOM-C/SGLI Data Acquisition and Extraction
2.3. Machine Learning Approach to Pytoplankton Identification and Classification
2.4. Assessment of the Results
3. Results
3.1. Coccolithophore Blooms Identification and Classification

3.2. Diatom Blooms Identification and Classification
3.3. Dinoflagellate Blooms Identification and Classification
| Scenario | Overall Accuracy | Kappa Coefficient |
|---|---|---|
| RF with seven bands | 0.9879518072289156 | 0.9816534040671971 |
| RF with six bands | 0.9215686274509803 | 0.8879890185312285 |
| CART with seven bands | 0.9879518072289156 | 0.9815062388591798 |
| GTB with seven bands | 0.9759036144578314 | 0.9631602308033732 |
4. Discussion
5. Conclusions
Author Contributions
Funding
Acknowledgments
Conflicts of Interest
References
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| Sub-region | Observation date | Consideration/ confirmation |
|---|---|---|
| Southeastern Indian Ocean | 2 December 2023 | Phytoplankton bloom due to upwelling associated with the 2023 El Niño |
| Malacca Strait | 1 July 2021 | Well-known turbid water [35] |
| East China Sea | 30 January 2021 | Well-known turbid water especially in winter due to intense wind- driven vertical mixing [36] |
| Bohai Sea | 30 January 2022 | Well-known turbid water especially in winter due to intense wind- driven vertical mixing [37] |
| Yellow Sea | 30 January 2022 | Well-known turbid water especially in winter due to intense wind- driven vertical mixing [37] |
| Tokyo Bay | 17 July 2023 | Well-known to be optically complex water attributed to riverine effluent rich in CDOM [38,39] |
| Sagami Bay | 17 May 2020 | Confirmed phytoplankton coccolithophore bloom [40] |
| Southeast Hokkaido | 13 October 2021 | Confirmed red tide caused by phytoplankton from the dinoflagellate group [41,42] |
| 8 May 2022 | Expected to be seasonal blooms of phytoplankton diatom | |
| 7 May 2022 | Expected to be seasonal blooms of phytoplankton diatom |
| Scenario | Overall Accuracy | Kappa Coefficient |
|---|---|---|
| RF with seven bands | 0.975609756097561 | 0.9622119815668202 |
| RF with six bands | 0.9391304347826087 | 0.9105555555555555 |
| CART with seven bands | 0.967479674796748 | 0.9496520671305773 |
| GTB with seven bands | 0.983739837398374 | 0.9749056411302665 |
| Scenario | Overall Accuracy | Kappa Coefficient |
|---|---|---|
| RF with seven bands | 0.9775280898876404 | 0.9687719298245613 |
| RF with six bands | 0.9642857142857143 | 0.9503154574132492 |
| CART with seven bands | 0.9662921348314607 | 0.9532317393589069 |
| GTB with seven bands | 0.9775280898876404 | 0.9687719298245613 |
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