Retrieval of Summer Sea Ice Concentration in the Pacific Arctic Ocean from AMSR2 Observations and Numerical Weather Data Using Random Forest Regression

The Arctic sea ice concentration (SIC) in summer is a key indicator of global climate change and important information for the development of a more economically valuable Northern Sea Route. Passive microwave (PM) sensors have provided information on the SIC since the 1970s by observing the brightne...

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Main Authors: Hyangsun Han, Sungjae Lee, Hyun-Cheol Kim, Miae Kim
Format: Article
Language:English
Published: MDPI AG 2021-06-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/13/12/2283
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spelling doaj-f493a8e7942f4d4380e3d592cfa9fb832021-06-30T23:52:34ZengMDPI AGRemote Sensing2072-42922021-06-01132283228310.3390/rs13122283Retrieval of Summer Sea Ice Concentration in the Pacific Arctic Ocean from AMSR2 Observations and Numerical Weather Data Using Random Forest RegressionHyangsun Han0Sungjae Lee1Hyun-Cheol Kim2Miae Kim3Department of Geophysics, Kangwon National University, Chuncheon 24341, KoreaCenter of Remote Sensing and GIS, Korea Polar Research Institute, Incheon 21990, KoreaCenter of Remote Sensing and GIS, Korea Polar Research Institute, Incheon 21990, KoreaSchool of Urban and Environmental Engineering, Ulsan National Institute of Science and Technology, Ulsan 44919, KoreaThe Arctic sea ice concentration (SIC) in summer is a key indicator of global climate change and important information for the development of a more economically valuable Northern Sea Route. Passive microwave (PM) sensors have provided information on the SIC since the 1970s by observing the brightness temperature (T<sub>B</sub>) of sea ice and open water. However, the SIC in the Arctic estimated by operational algorithms for PM observations is very inaccurate in summer because the T<sub>B</sub> values of sea ice and open water become similar due to atmospheric effects. In this study, we developed a summer SIC retrieval model for the Pacific Arctic Ocean using Advanced Microwave Scanning Radiometer 2 (AMSR2) observations and European Reanalysis Agency-5 (ERA-5) reanalysis fields based on Random Forest (RF) regression. SIC values computed from the ice/water maps generated from the Korean Multi-purpose Satellite-5 synthetic aperture radar images from July to September in 2015–2017 were used as a reference dataset. A total of 24 features including the T<sub>B</sub> values of AMSR2 channels, the ratios of T<sub>B</sub> values (the polarization ratio and the spectral gradient ratio (<i>GR</i>)), total columnar water vapor (TCWV), wind speed, air temperature at 2 m and 925 hPa, and the 30-day average of the air temperatures from the ERA-5 were used as the input variables for the RF model. The RF model showed greatly superior performance in retrieving summer SIC values in the Pacific Arctic Ocean to the Bootstrap (BT) and Arctic Radiation and Turbulence Interaction STudy (ARTIST) Sea Ice (ASI) algorithms under various atmospheric conditions. The root mean square error (RMSE) of the RF SIC values was 7.89% compared to the reference SIC values. The BT and ASI SIC values had three times greater values of RMSE (20.19% and 21.39%, respectively) than the RF SIC values. The air temperatures at 2 m and 925 hPa and their 30-day averages, which indicate the ice surface melting conditions, as well as the <i>GR</i> using the vertically polarized channels at 23 GHz and 18 GHz (<i>GR</i>(23V18V)), TCWV, and <i>GR</i>(36V18V), which accounts for atmospheric water content, were identified as the variables that contributed greatly to the RF model. These important variables allowed the RF model to retrieve unbiased and accurate SIC values by taking into account the changes in T<sub>B</sub> values of sea ice and open water caused by atmospheric effects.https://www.mdpi.com/2072-4292/13/12/2283summer sea ice concentrationPacific Arctic OceanAMSR2ERA-5Random Forest regression
collection DOAJ
language English
format Article
sources DOAJ
author Hyangsun Han
Sungjae Lee
Hyun-Cheol Kim
Miae Kim
spellingShingle Hyangsun Han
Sungjae Lee
Hyun-Cheol Kim
Miae Kim
Retrieval of Summer Sea Ice Concentration in the Pacific Arctic Ocean from AMSR2 Observations and Numerical Weather Data Using Random Forest Regression
Remote Sensing
summer sea ice concentration
Pacific Arctic Ocean
AMSR2
ERA-5
Random Forest regression
author_facet Hyangsun Han
Sungjae Lee
Hyun-Cheol Kim
Miae Kim
author_sort Hyangsun Han
title Retrieval of Summer Sea Ice Concentration in the Pacific Arctic Ocean from AMSR2 Observations and Numerical Weather Data Using Random Forest Regression
title_short Retrieval of Summer Sea Ice Concentration in the Pacific Arctic Ocean from AMSR2 Observations and Numerical Weather Data Using Random Forest Regression
title_full Retrieval of Summer Sea Ice Concentration in the Pacific Arctic Ocean from AMSR2 Observations and Numerical Weather Data Using Random Forest Regression
title_fullStr Retrieval of Summer Sea Ice Concentration in the Pacific Arctic Ocean from AMSR2 Observations and Numerical Weather Data Using Random Forest Regression
title_full_unstemmed Retrieval of Summer Sea Ice Concentration in the Pacific Arctic Ocean from AMSR2 Observations and Numerical Weather Data Using Random Forest Regression
title_sort retrieval of summer sea ice concentration in the pacific arctic ocean from amsr2 observations and numerical weather data using random forest regression
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2021-06-01
description The Arctic sea ice concentration (SIC) in summer is a key indicator of global climate change and important information for the development of a more economically valuable Northern Sea Route. Passive microwave (PM) sensors have provided information on the SIC since the 1970s by observing the brightness temperature (T<sub>B</sub>) of sea ice and open water. However, the SIC in the Arctic estimated by operational algorithms for PM observations is very inaccurate in summer because the T<sub>B</sub> values of sea ice and open water become similar due to atmospheric effects. In this study, we developed a summer SIC retrieval model for the Pacific Arctic Ocean using Advanced Microwave Scanning Radiometer 2 (AMSR2) observations and European Reanalysis Agency-5 (ERA-5) reanalysis fields based on Random Forest (RF) regression. SIC values computed from the ice/water maps generated from the Korean Multi-purpose Satellite-5 synthetic aperture radar images from July to September in 2015–2017 were used as a reference dataset. A total of 24 features including the T<sub>B</sub> values of AMSR2 channels, the ratios of T<sub>B</sub> values (the polarization ratio and the spectral gradient ratio (<i>GR</i>)), total columnar water vapor (TCWV), wind speed, air temperature at 2 m and 925 hPa, and the 30-day average of the air temperatures from the ERA-5 were used as the input variables for the RF model. The RF model showed greatly superior performance in retrieving summer SIC values in the Pacific Arctic Ocean to the Bootstrap (BT) and Arctic Radiation and Turbulence Interaction STudy (ARTIST) Sea Ice (ASI) algorithms under various atmospheric conditions. The root mean square error (RMSE) of the RF SIC values was 7.89% compared to the reference SIC values. The BT and ASI SIC values had three times greater values of RMSE (20.19% and 21.39%, respectively) than the RF SIC values. The air temperatures at 2 m and 925 hPa and their 30-day averages, which indicate the ice surface melting conditions, as well as the <i>GR</i> using the vertically polarized channels at 23 GHz and 18 GHz (<i>GR</i>(23V18V)), TCWV, and <i>GR</i>(36V18V), which accounts for atmospheric water content, were identified as the variables that contributed greatly to the RF model. These important variables allowed the RF model to retrieve unbiased and accurate SIC values by taking into account the changes in T<sub>B</sub> values of sea ice and open water caused by atmospheric effects.
topic summer sea ice concentration
Pacific Arctic Ocean
AMSR2
ERA-5
Random Forest regression
url https://www.mdpi.com/2072-4292/13/12/2283
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