Melt pond fractions on Arctic summer sea ice retrieved from Sentinel-3 satellite data with a constrained physical forward model
The presence of melt ponds on Arctic summer sea ice significantly alters its albedo and thereby the surface energy budget and mass balance. Large-scale observations of melt pond coverage and sea ice albedo are crucial to investigate the role of sea ice for Arctic amplification and its representation...
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ftcopernicus:oai:publications.copernicus.org:egusphere115027 2023-11-05T03:31:18+01:00 Melt pond fractions on Arctic summer sea ice retrieved from Sentinel-3 satellite data with a constrained physical forward model Niehaus, Hannah Istomina, Larysa Nicolaus, Marcel Tao, Ran Malinka, Aleksey Zege, Eleonora Spreen, Gunnar 2023-10-05 application/pdf https://doi.org/10.5194/egusphere-2023-2194 https://egusphere.copernicus.org/preprints/2023/egusphere-2023-2194/ eng eng doi:10.5194/egusphere-2023-2194 https://egusphere.copernicus.org/preprints/2023/egusphere-2023-2194/ eISSN: Text 2023 ftcopernicus https://doi.org/10.5194/egusphere-2023-2194 2023-10-09T16:24:15Z The presence of melt ponds on Arctic summer sea ice significantly alters its albedo and thereby the surface energy budget and mass balance. Large-scale observations of melt pond coverage and sea ice albedo are crucial to investigate the role of sea ice for Arctic amplification and its representation in global climate models. We present the new Melt Pond Detection 2 (MPD2) algorithm, which retrieves melt pond, sea ice, and open ocean fractions as well as surface albedo from Sentinel-3 visible and near-infrared reflectances. In contrast to most other algorithms, our method uses neither fixed values for the spectral albedo of the surface constituents nor an artificial neural network. Instead, it aims for a fully physical representation of the reflective properties of the surface constituents based on their optical characteristics. The state vector X , containing the optical properties of melt ponds and sea ice along with the area fractions of melt ponds and open ocean, is optimized in an iterative procedure to match the measured reflectances and describe the surface state. A major problem in unmixing a compound pixel is that a mixture of half open water and half bright ice cannot be distinguished from a homogeneous pixel of darker ice. In order to overcome this, we suggest to constrain the retrieval with a priori information. Initial values and constraint of the surface fractions are derived with an empirical retrieval which uses the same spectral reflectances as implemented in the physical retrieval. The snow grain size and optical thickness are changing with time and thus the ice surface albedo changes throughout the season. Therefore, field observations of spectral albedo are used to develop a parameterization of the sea ice optical properties as a function of the temperature history of the sea ice. With this a priori data, the iterative optimization is initialized and constrained, resulting in a retrieval uncertainty of below 8 % for melt pond and 9 % for open ocean fractions compared to the reference dataset. ... Text albedo Arctic Sea ice Copernicus Publications: E-Journals |
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Copernicus Publications: E-Journals |
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English |
description |
The presence of melt ponds on Arctic summer sea ice significantly alters its albedo and thereby the surface energy budget and mass balance. Large-scale observations of melt pond coverage and sea ice albedo are crucial to investigate the role of sea ice for Arctic amplification and its representation in global climate models. We present the new Melt Pond Detection 2 (MPD2) algorithm, which retrieves melt pond, sea ice, and open ocean fractions as well as surface albedo from Sentinel-3 visible and near-infrared reflectances. In contrast to most other algorithms, our method uses neither fixed values for the spectral albedo of the surface constituents nor an artificial neural network. Instead, it aims for a fully physical representation of the reflective properties of the surface constituents based on their optical characteristics. The state vector X , containing the optical properties of melt ponds and sea ice along with the area fractions of melt ponds and open ocean, is optimized in an iterative procedure to match the measured reflectances and describe the surface state. A major problem in unmixing a compound pixel is that a mixture of half open water and half bright ice cannot be distinguished from a homogeneous pixel of darker ice. In order to overcome this, we suggest to constrain the retrieval with a priori information. Initial values and constraint of the surface fractions are derived with an empirical retrieval which uses the same spectral reflectances as implemented in the physical retrieval. The snow grain size and optical thickness are changing with time and thus the ice surface albedo changes throughout the season. Therefore, field observations of spectral albedo are used to develop a parameterization of the sea ice optical properties as a function of the temperature history of the sea ice. With this a priori data, the iterative optimization is initialized and constrained, resulting in a retrieval uncertainty of below 8 % for melt pond and 9 % for open ocean fractions compared to the reference dataset. ... |
format |
Text |
author |
Niehaus, Hannah Istomina, Larysa Nicolaus, Marcel Tao, Ran Malinka, Aleksey Zege, Eleonora Spreen, Gunnar |
spellingShingle |
Niehaus, Hannah Istomina, Larysa Nicolaus, Marcel Tao, Ran Malinka, Aleksey Zege, Eleonora Spreen, Gunnar Melt pond fractions on Arctic summer sea ice retrieved from Sentinel-3 satellite data with a constrained physical forward model |
author_facet |
Niehaus, Hannah Istomina, Larysa Nicolaus, Marcel Tao, Ran Malinka, Aleksey Zege, Eleonora Spreen, Gunnar |
author_sort |
Niehaus, Hannah |
title |
Melt pond fractions on Arctic summer sea ice retrieved from Sentinel-3 satellite data with a constrained physical forward model |
title_short |
Melt pond fractions on Arctic summer sea ice retrieved from Sentinel-3 satellite data with a constrained physical forward model |
title_full |
Melt pond fractions on Arctic summer sea ice retrieved from Sentinel-3 satellite data with a constrained physical forward model |
title_fullStr |
Melt pond fractions on Arctic summer sea ice retrieved from Sentinel-3 satellite data with a constrained physical forward model |
title_full_unstemmed |
Melt pond fractions on Arctic summer sea ice retrieved from Sentinel-3 satellite data with a constrained physical forward model |
title_sort |
melt pond fractions on arctic summer sea ice retrieved from sentinel-3 satellite data with a constrained physical forward model |
publishDate |
2023 |
url |
https://doi.org/10.5194/egusphere-2023-2194 https://egusphere.copernicus.org/preprints/2023/egusphere-2023-2194/ |
genre |
albedo Arctic Sea ice |
genre_facet |
albedo Arctic Sea ice |
op_source |
eISSN: |
op_relation |
doi:10.5194/egusphere-2023-2194 https://egusphere.copernicus.org/preprints/2023/egusphere-2023-2194/ |
op_doi |
https://doi.org/10.5194/egusphere-2023-2194 |
_version_ |
1781706966744170496 |