2024
DOI: 10.3390/rs16173148
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An Ensemble Machine Learning Approach for Sea Ice Monitoring Using CFOSAT/SCAT Data

Yanping Luo,
Yang Liu,
Chuanyang Huang
et al.

Abstract: Sea ice is a crucial component of the global climate system. The China–French Ocean Satellite Scatterometer (CFOSAT/SCAT, CSCAT) employs an innovative rotating fan beam system. This study applied principal component analysis (PCA) to extract classification features and developed an ensemble machine learning approach for sea ice detection. PCA identified key features from CSCAT’s backscatter information, representing outer and sweet swath observations. The ensemble model’s performances (OA and Kappa) for the No… Show more

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