Abstract

Arctic sea ice and snow affect the energy balance of the global climate system through the radiation budget. Accurate determination of the snow cover over Arctic sea ice is significant for the retrieval of the sea ice thickness (SIT). In this study, we developed a new snow depth retrieval method over Arctic sea ice with a long short-term memory (LSTM) deep learning algorithm based on Operation IceBridge (OIB) snow depth data and brightness temperature data of AMSR-2 passive microwave radiometers. We compared climatology products (modified W99 and AWI), altimeter products (Kwok) and microwave radiometer products (Bremen, Neural Network and LSTM). The climatology products and altimeter products are completely independent of the OIB data used for training, while microwave radiometer products are not completely independent of the OIB data. We also compared the SITs retrieved from the above different snow depth products based on Cryosat-2 radar altimeter data. First, the snow depth spatial patterns for all products are in broad agreement, but the temporal evolution patterns are distinct. Snow products of microwave radiometers, such as Bremen, Neural Network and LSTM snow depth products, show thicker snow in early winter with respect to the climatology snow depth products and the altimeter snow depth product, especially in the multiyear ice (MYI) region. In addition, the differences in all snow depth products are relatively large in the early winter and relatively small in spring. Compared with the OIB and IceBird observation data (April 2019), the snow depth retrieved by the LSTM algorithm is better than that retrieved by the other algorithms in terms of accuracy, with a correlation of 0.55 (0.90), a root mean square error (RMSE) of 0.06 m (0.05 m) and a mean absolute error (MAE) of 0.05 m (0.04 m). The spatial pattern and seasonal variation of the SITs retrieved from different snow depths are basically consistent. The total sea ice decreases first and then thickens as the seasons change. Compared with the OIB SIT in April 2019, the SIT retrieved by the LSTM snow depth is superior to that retrieved by the other SIT products in terms of accuracy, with the highest correlation of 0.46, the lowest RMSE of 0.59 m and the lowest MAE of 0.44 m. In general, it is promising to retrieve Arctic snow depth using the LSTM algorithm, but the retrieval of snow depth over MYI still needs to be verified with more measured data, especially in early winter.

Highlights

  • The extent and thickness of Arctic sea ice are dramatically decreasing due to global warming [1–4]

  • We explored a snow depth retrieval method with a long short-term memory (LSTM) deep learning algorithm over Arctic sea ice, relying on brightness temperatures acquired by Advanced Microwave Scanning Radiometer 2 (AMSR-2) and snow depth measurements from the Operation IceBridge (OIB) snow radar

  • We conduct a comparative analysis on six snow depth products and use the snow depth measured by OIB to test the performance of the LSTM algorithm

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Summary

Introduction

The extent and thickness of Arctic sea ice are dramatically decreasing due to global warming [1–4]. Sea ice regulates the overall radiation budget of the polar region through ice-albedo feedback [5,6], and snow has a higher reflectivity and much lower thermal conductivity than sea ice [7,8]. 2022, 14, 1041 it increases surface albedo, leading to reduced solar radiation absorbed by sea ice (except during the polar night) [9]. As Arctic snow melts, it may form melt ponds, enhancing the solar radiation absorbed by sea ice and the melting of the ice pack [12,13]. The changes in sea ice and snow are intricately linked. Accurate knowledge of sea ice thickness (SIT) and snow depth is essential for understanding regional and global climate change

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