Abstract

The knowledge of Arctic Sea ice coverage is of particular importance in studies of climate change. This study develops a new sea ice classification approach based on machine learning (ML) classifiers through analyzing spaceborne GNSS-R features derived from the TechDemoSat-1 (TDS-1) data collected over open water (OW), first-year ice (FYI), and multi-year ice (MYI). A total of eight features extracted from GNSS-R observables collected in five months are applied to classify OW, FYI, and MYI using the ML classifiers of random forest (RF) and support vector machine (SVM) in a two-step strategy. Firstly, randomly selected 30% of samples of the whole dataset are used as a training set to build classifiers for discriminating OW from sea ice. The performance is evaluated using the remaining 70% of samples through validating with the sea ice type from the Special Sensor Microwave Imager Sounder (SSMIS) data provided by the Ocean and Sea Ice Satellite Application Facility (OSISAF). The overall accuracy of RF and SVM classifiers are 98.83% and 98.60% respectively for distinguishing OW from sea ice. Then, samples of sea ice, including FYI and MYI, are randomly split into training and test dataset. The features of the training set are used as input variables to train the FYI-MYI classifiers, which achieve an overall accuracy of 84.82% and 71.71% respectively by RF and SVM classifiers. Finally, the features in every month are used as training and testing set in turn to cross-validate the performance of the proposed classifier. The results indicate the strong sensitivity of GNSS signals to sea ice types and the great potential of ML classifiers for GNSS-R applications.

Highlights

  • This study demonstrated the potential of an NN-based approach for sea ice detection and sea ice concentration (SIC) estimation, which was further explored through the convolutional neural network (CNN) algorithm [37]

  • The results showed that the first-year ice (FYI) and multi-year ice (MYI) can be classified with an accuracy of 70% and 82.34% respectively

  • This study investigates the random forest (RF) and support vector machine (SVM)-based classifiers for Arctic Sea ice classifi6

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Summary

Introduction

Arctic sea ice is one of the most significant components in studies of climate change [1]. The knowledge of sea ice information is useful for shipping route planning and offshore oil/gas exploration. As one of the most important sea ice parameters, sea ice type is of particular interest since the characteristics of first-year ice (FYI) and multi-year ice (MYI). Compared to FYI, MYI has greater thickness and higher albedo, which is critical for energy exchange in the air-sea interface. Some previous studies indicated that the Arctic sea ice has reduced in extent and a part of ice cover is becoming thinner, changing from thicker MYI to thinner FYI [3]. The surface roughness and dielectric constant of different sea ice types change at different stages of ice growth.

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