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CryoSat-2-based Antarctic sea ice thickness dataset for 2010–2024

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科学数据银行2025-12-10 更新2026-04-23 收录
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https://www.scidb.cn/detail?dataSetId=e17f7174c6684450ba948928dbba6f1c
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资源简介:
Sea ice is crucial for modulating Antarctic air–sea fluxes, and its thickness (SIT) is the primary factor controlling the exchange of heat, moisture, and momentum. Although CryoSat-2 is commonly used for SIT retrieval, conventional algorithms rely on empirical parameters and auxiliary data that introduce substantial uncertainties. In this study, we developed a novel SIT dataset for 2010–2024, derived directly from radar parameters using a machine learning (ML) method. Intercomparisons show that the ML-derived SIT shows better consistency with the ICESat-2 product than conventional algorithm results. Validation against shipborne observations indicates that ML-based SIT achieves a mean absolute error of 0.558 m, lower than conventional methods (0.823 m). Temporal comparisons reveal that the ML-derived sea ice volume (SIV) exhibits a more realistic seasonal cycle, with the maximum value occurring in September, compared to the conventional method, which shows a peak in August. This new SIT dataset provides a robust basis for estimating SIV with reduced uncertainty, investigating sea ice variability mechanisms, and assessing the impact of sea ice changes.
提供机构:
Qinghua Yang; Ziqi Ma; Yafei Nie
创建时间:
2025-12-10
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