Retrieval of daily sea ice thickness from AMSR2 passive microwave data using ensemble convolutional neural networks

Recently, measurement of sea ice thickness (SIT) has received increasing attention due to the importance of thinning ice in the context of global warming. Although altimeter sensors onboard satellite missions enable continuous SIT measurements over larger areas compared to in situ observations, thes...

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Main Authors: Junhwa Chi, Hyun-Cheol Kim
Format: Article
Language:English
Published: Taylor & Francis Group 2021-08-01
Series:GIScience & Remote Sensing
Subjects:
Online Access:http://dx.doi.org/10.1080/15481603.2021.1943213
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author Junhwa Chi
Hyun-Cheol Kim
author_facet Junhwa Chi
Hyun-Cheol Kim
author_sort Junhwa Chi
collection DOAJ
description Recently, measurement of sea ice thickness (SIT) has received increasing attention due to the importance of thinning ice in the context of global warming. Although altimeter sensors onboard satellite missions enable continuous SIT measurements over larger areas compared to in situ observations, these sensors are inadequate for mapping daily Arctic SIT because of their small footprints. We exploited passive microwave data from AMSR2 (Advanced Microwave Scanning Radiometer 2) by incorporating a state-of-the-art deep learning (DL) approach to address this limitation. Passive microwave data offer better temporal resolutions than those from a single altimeter sensors, but are rarely used for SIT estimations due to their limited physical relationship with SIT. In this study, we proposed an ensemble DL model with different modalities to produce daily pan-Arctic SIT retrievals. The proposed model determined the hidden and unknown relationships between the brightness temperatures of AMSR2 channels and SITs measured by CryoSat-2 (CS2) from the extended input features defined by our feature augmentation strategy. Although AMSR2-based SITs agreed well with CS2-derived gridded SIT values, they had similar uncertainties and errors in the CS2 SIT measurements, particularly for thin ice. However, based on quantitative validations using long-term unseen data and IceBridge data, the proposed retrieval model consistently generated SITs from AMSR2 at 25 km spatial resolution, regardless of time and space.
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spelling doaj.art-d9a6a10dad474ddc9b2c538a3a5a48cd2023-09-21T12:34:17ZengTaylor & Francis GroupGIScience & Remote Sensing1548-16031943-72262021-08-0158681283010.1080/15481603.2021.19432131943213Retrieval of daily sea ice thickness from AMSR2 passive microwave data using ensemble convolutional neural networksJunhwa Chi0Hyun-Cheol Kim1Korea Polar Research InstituteKorea Polar Research InstituteRecently, measurement of sea ice thickness (SIT) has received increasing attention due to the importance of thinning ice in the context of global warming. Although altimeter sensors onboard satellite missions enable continuous SIT measurements over larger areas compared to in situ observations, these sensors are inadequate for mapping daily Arctic SIT because of their small footprints. We exploited passive microwave data from AMSR2 (Advanced Microwave Scanning Radiometer 2) by incorporating a state-of-the-art deep learning (DL) approach to address this limitation. Passive microwave data offer better temporal resolutions than those from a single altimeter sensors, but are rarely used for SIT estimations due to their limited physical relationship with SIT. In this study, we proposed an ensemble DL model with different modalities to produce daily pan-Arctic SIT retrievals. The proposed model determined the hidden and unknown relationships between the brightness temperatures of AMSR2 channels and SITs measured by CryoSat-2 (CS2) from the extended input features defined by our feature augmentation strategy. Although AMSR2-based SITs agreed well with CS2-derived gridded SIT values, they had similar uncertainties and errors in the CS2 SIT measurements, particularly for thin ice. However, based on quantitative validations using long-term unseen data and IceBridge data, the proposed retrieval model consistently generated SITs from AMSR2 at 25 km spatial resolution, regardless of time and space.http://dx.doi.org/10.1080/15481603.2021.1943213amsr2arctic sea iceconvolutional neural networkdeep learningpassive microwavesea ice thickness
spellingShingle Junhwa Chi
Hyun-Cheol Kim
Retrieval of daily sea ice thickness from AMSR2 passive microwave data using ensemble convolutional neural networks
GIScience & Remote Sensing
amsr2
arctic sea ice
convolutional neural network
deep learning
passive microwave
sea ice thickness
title Retrieval of daily sea ice thickness from AMSR2 passive microwave data using ensemble convolutional neural networks
title_full Retrieval of daily sea ice thickness from AMSR2 passive microwave data using ensemble convolutional neural networks
title_fullStr Retrieval of daily sea ice thickness from AMSR2 passive microwave data using ensemble convolutional neural networks
title_full_unstemmed Retrieval of daily sea ice thickness from AMSR2 passive microwave data using ensemble convolutional neural networks
title_short Retrieval of daily sea ice thickness from AMSR2 passive microwave data using ensemble convolutional neural networks
title_sort retrieval of daily sea ice thickness from amsr2 passive microwave data using ensemble convolutional neural networks
topic amsr2
arctic sea ice
convolutional neural network
deep learning
passive microwave
sea ice thickness
url http://dx.doi.org/10.1080/15481603.2021.1943213
work_keys_str_mv AT junhwachi retrievalofdailyseaicethicknessfromamsr2passivemicrowavedatausingensembleconvolutionalneuralnetworks
AT hyuncheolkim retrievalofdailyseaicethicknessfromamsr2passivemicrowavedatausingensembleconvolutionalneuralnetworks