GBDT Method Integrating Feature-Enhancement and Active-Learning Strategies—Sea Ice Thickness Inversion in Beaufort Sea

Author:

Han Yanling1ORCID,Huang Junjie1,Ma Zhenling1ORCID,Zheng Bowen1,Wang Jing1ORCID,Zhang Yun1

Affiliation:

1. Shanghai Marine Intelligent Information and Navigation Remote Sensing Engineering Technology Research Center, Key Laboratory of Fisheries Information, Ministry of Agriculture, College of Information, Shanghai Ocean University, Shanghai 201306, China

Abstract

Sea ice, as an important component of the Earth’s ecosystem, has a profound impact on global climate and human activities due to its thickness. Therefore, the inversion of sea ice thickness has important research significance. Due to environmental and equipment-related limitations, the number of samples available for remote sensing inversion is currently insufficient. At high spatial resolutions, remote sensing data contain limited information and noise interference, which seriously affect the accuracy of sea ice thickness inversion. In response to the above issues, we conducted experiments using ice draft data from the Beaufort Sea and designed an improved GBDT method that integrates feature-enhancement and active-learning strategies (IFEAL-GBDT). In this method, the incident angle and time series are used to perform spatiotemporal correction of the data, reducing both temporal and spatial impacts. Meanwhile, based on the original polarization information, effective multi-attribute features are generated to expand the information content and improve the separability of sea ice with different thicknesses. Taking into account the growth cycle and age of sea ice, attributes were added for month and seawater temperature. In addition, we studied an active learning strategy based on the maximum standard deviation to select more informative and representative samples and improve the model’s generalization ability. The improved GBDT model was used for training and prediction, offering advantages in dealing with nonlinear, high-dimensional data, and data noise problems, further expanding the effectiveness of feature-enhancement and active-learning strategies. Compared with other methods, the method proposed in this paper achieves the best inversion accuracy, with an average absolute error of 8 cm and a root mean square error of 13.7 cm for IFEAL-GBDT and a correlation coefficient of 0.912. This research proves the effectiveness of our method, which is suitable for the high-precision inversion of sea ice thickness determined using Sentinel-1 data.

Funder

National Natural Science Foundation of China

Publisher

MDPI AG

Reference26 articles.

1. Wadhams, P. (2000). Ice in the Ocean, CRC Press. [1st ed.].

2. Advances in Sea lce Concentration Retrieval Based on Satellite Remote Sensing;Xie;Adv. Mar. Sci.,2022

3. Retrieval of daily sea ice thickness from AMSR2 passive microwave data using ensemble convolutional neural networks;Chi;GIScience Remote Sens.,2021

4. Passive microwave remote sensing of thin sea ice using principal component analysis;Wensnahan;J. Geophys. Res.,1993

5. Comparison of Sea Ice Thickness Retrieval Algorithms from CryoSat-2 Satellite Altimeter Data;Ji;Geomat. Inf. Sci. Wuhan Univ.,2015

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