Abstract

It is of great significance to monitor sea ice for relieving and preventing sea ice disasters. In this paper, the growth and development of sea ice in Liaodong Bay of Bohai Sea in China were monitored using Sentinel-2 remote sensing data during the freezing period from January to March in 2018. Based on the comprehensive analysis of the spectral characteristics of seawater and sea ice in visible bands, supplemented by the Normalized Difference Snow Index (NDSI) and the Normalized Difference Vegetation Index (NDVI), we proposed a new method based on decision tree classification for extracting sea ice types in Liaodong Bay of Bohai Sea. Using the remote sensing data of eight satellite overpasses acquired from Sentinel-2A/B satellites, the distribution and area of the different sea ice types in Liaodong Bay during the freezing period of 2017/2018 were obtained. Compared with the maximum likelihood (ML) classification method and the support vector machine (SVM) classification method, the proposed method has higher accuracy when discriminating the sea ice types, which proved the new method proposed in this paper is suitable for extracting sea ice types from Sentinel-2 optical remote sensing data in Liaodong Bay. And its classification accuracy reaches 88.05%. The whole process of evolution such as the growth and development of sea ice in Liaodong Bay during the freezing period from January to March in 2018 was monitored. The maximum area of sea ice was detected on 27 January 2018, about 10,187 km2. At last, the quantitative relationship model between the sea ice area and the mean near-surface temperature derived by MODIS data in Liaodong Bay was established. Through research, we found that the mean near-surface temperature was the most important factor for affecting the formation and melt of sea ice in Liaodong Bay.

Highlights

  • Introduction e Bohai Sea inChina is the southernmost frozen sea in the Northern Hemisphere

  • Based on the comprehensive analysis of the spectral characteristics of seawater and sea ice in visible bands, supplemented by the Normalized Difference Snow Index (NDSI) and the Normalized Difference Vegetation Index (NDVI), we proposed a new method based on decision tree classification for extracting sea ice types in Liaodong Bay of Bohai Sea

  • Its classification accuracy reaches 88.05%. e whole process of evolution such as the growth and development of sea ice in Liaodong Bay during the freezing period from January to March in 2018 was monitored. e maximum area of sea ice was detected on 27 January 2018, about 10,187 km2

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Summary

Introduction

Introduction e Bohai Sea inChina is the southernmost frozen sea in the Northern Hemisphere. It is of great significance to effectively monitor the types, the distribution, and the spatiotemporal evolution of sea ice and to analyze the mechanism of its growth, development, and melt for relieving and preventing the sea ice disaster in the Bohai Sea. Satellite remote sensing technology has the characteristics of economy, timeliness, and large-area simultaneous observation, so it is an important technical means for monitoring the sea ice [2,3,4,5,6]. It is of great significance to accurately discriminate the sea ice types for calculating the area of sea ice, assessing the conditions of sea ice, navigation, marine production operations, and so on

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