UDASH-AI: Unified Database for Arctic and Subarctic Hydrography Optimized for Artificial Intelligence Applications
UDASH-AI represents an updated version of the UDASH dataset, that has been created to develop an artificial intelligence algorithm, that we name SalaciaML-Arctic to support the visual/human quality control of the data. UDASH-AI can be directly used with our algorithm, provided under the DOI: https:/...
Main Authors: | , , , , |
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Format: | Dataset |
Language: | English |
Published: |
PANGAEA
2024
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Subjects: | |
Online Access: | https://doi.pangaea.de/10.1594/PANGAEA.973235 https://doi.org/10.1594/PANGAEA.973235 |
_version_ | 1821787685383045120 |
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author | Chouai, Mohamed Mieruch-Schnülle, Sebastian Behrendt, Axel Vredenborg, Myriel Rabe, Benjamin |
author_facet | Chouai, Mohamed Mieruch-Schnülle, Sebastian Behrendt, Axel Vredenborg, Myriel Rabe, Benjamin |
author_sort | Chouai, Mohamed |
collection | PANGAEA - Data Publisher for Earth & Environmental Science |
description | UDASH-AI represents an updated version of the UDASH dataset, that has been created to develop an artificial intelligence algorithm, that we name SalaciaML-Arctic to support the visual/human quality control of the data. UDASH-AI can be directly used with our algorithm, provided under the DOI: https://doi.org/10.5281/zenodo.11535790 and the respective GitHub repository, to reproduce our results, extend the methods and more. Additionally, we have implemented SalaciaML-Arctic as an user-friendly app at https://mvre.autoqc.cloud.awi.de. Following steps have been applied on the original UDASH dataset to create UDASH-AI: • Concatenation of the single, annual txt files into one single csv file. • The original encoding of missing time and day information in the date/time string as 'T99:99' and '-00T' have been changed to ISO8601 conformity: 'T00:00' and '-01T'. To not loose this information we have added a quality flag ('QF_time') in the column next to the date/time with following encoding: ◦ 0: No missing data (good quality). ◦ 1: Missing day. ◦ 2: Missing time. ◦ 3: Missing day and time. • Further we have included the two temperature gradients and the density gradient described in the original UDASH paper as extra columns: ◦ Depth over temperature gradient, denoted as 'd/d_Temp_Depth_[m_°C^-1]'. ◦ Temperature over depth gradient, denoted as 'd/d_Depth_Temp_[°C_m^-1]'. ◦ Density gradient as 'd/d_Depth_Dens_[kg_m^-4]'. • The missing value is marked with an indicator: NaN. • We added the quality flags for temperature from the classical/traditional UDASH automatic checks: outlier and spike (flag=4), density inversion (flag=3) and suspect gradient (flag=2) as an extra column named 'QF_trad'. |
format | Dataset |
genre | Arctic Arctic Subarctic |
genre_facet | Arctic Arctic Subarctic |
geographic | Arctic |
geographic_facet | Arctic |
id | ftpangaea:oai:pangaea.de:doi:10.1594/PANGAEA.973235 |
institution | Open Polar |
language | English |
long_lat | ENVELOPE(0.000000,0.000000,90.000000,90.000000) |
op_collection_id | ftpangaea |
op_coverage | LATITUDE: 90.000000 * LONGITUDE: 0.000000 |
op_doi | https://doi.org/10.1594/PANGAEA.97323510.1594/PANGAEA.87293110.5281/ZENODO.11535790 |
op_relation | Behrendt, Axel; Sumata, Hiroshi; Rabe, Benjamin; Schauer, Ursula (2017): A comprehensive, quality-controlled and up-to-date data set of temperature and salinity data for the Arctic Mediterranean Sea (Version 1.0), links to data files [dataset]. PANGAEA, https://doi.org/10.1594/PANGAEA.872931 autoQC [webpage]. https://mvre.autoqc.cloud.awi.de/ MOSAiC-VRE [webpage]. https://mosaic-vre.org/ Chouai, Mohamed (2024): mchouai27/SalaciaML-Arctic: SalaciaML-Arctic v1.0.0 [software]. Zenodo, https://doi.org/10.5281/ZENODO.11535790 https://doi.pangaea.de/10.1594/PANGAEA.973235 https://doi.org/10.1594/PANGAEA.973235 |
op_rights | CC-BY-4.0: Creative Commons Attribution 4.0 International Access constraints: unrestricted info:eu-repo/semantics/openAccess |
publishDate | 2024 |
publisher | PANGAEA |
record_format | openpolar |
spelling | ftpangaea:oai:pangaea.de:doi:10.1594/PANGAEA.973235 2025-01-16T19:51:33+00:00 UDASH-AI: Unified Database for Arctic and Subarctic Hydrography Optimized for Artificial Intelligence Applications Chouai, Mohamed Mieruch-Schnülle, Sebastian Behrendt, Axel Vredenborg, Myriel Rabe, Benjamin LATITUDE: 90.000000 * LONGITUDE: 0.000000 2024 application/zip, 1.2 GBytes https://doi.pangaea.de/10.1594/PANGAEA.973235 https://doi.org/10.1594/PANGAEA.973235 en eng PANGAEA Behrendt, Axel; Sumata, Hiroshi; Rabe, Benjamin; Schauer, Ursula (2017): A comprehensive, quality-controlled and up-to-date data set of temperature and salinity data for the Arctic Mediterranean Sea (Version 1.0), links to data files [dataset]. PANGAEA, https://doi.org/10.1594/PANGAEA.872931 autoQC [webpage]. https://mvre.autoqc.cloud.awi.de/ MOSAiC-VRE [webpage]. https://mosaic-vre.org/ Chouai, Mohamed (2024): mchouai27/SalaciaML-Arctic: SalaciaML-Arctic v1.0.0 [software]. Zenodo, https://doi.org/10.5281/ZENODO.11535790 https://doi.pangaea.de/10.1594/PANGAEA.973235 https://doi.org/10.1594/PANGAEA.973235 CC-BY-4.0: Creative Commons Attribution 4.0 International Access constraints: unrestricted info:eu-repo/semantics/openAccess AI Applications Arctic Artificial Intelligence hydrography pan-Arctic Quality Assessment subarctic UDASH dataset 2024 ftpangaea https://doi.org/10.1594/PANGAEA.97323510.1594/PANGAEA.87293110.5281/ZENODO.11535790 2024-12-04T15:23:37Z UDASH-AI represents an updated version of the UDASH dataset, that has been created to develop an artificial intelligence algorithm, that we name SalaciaML-Arctic to support the visual/human quality control of the data. UDASH-AI can be directly used with our algorithm, provided under the DOI: https://doi.org/10.5281/zenodo.11535790 and the respective GitHub repository, to reproduce our results, extend the methods and more. Additionally, we have implemented SalaciaML-Arctic as an user-friendly app at https://mvre.autoqc.cloud.awi.de. Following steps have been applied on the original UDASH dataset to create UDASH-AI: • Concatenation of the single, annual txt files into one single csv file. • The original encoding of missing time and day information in the date/time string as 'T99:99' and '-00T' have been changed to ISO8601 conformity: 'T00:00' and '-01T'. To not loose this information we have added a quality flag ('QF_time') in the column next to the date/time with following encoding: ◦ 0: No missing data (good quality). ◦ 1: Missing day. ◦ 2: Missing time. ◦ 3: Missing day and time. • Further we have included the two temperature gradients and the density gradient described in the original UDASH paper as extra columns: ◦ Depth over temperature gradient, denoted as 'd/d_Temp_Depth_[m_°C^-1]'. ◦ Temperature over depth gradient, denoted as 'd/d_Depth_Temp_[°C_m^-1]'. ◦ Density gradient as 'd/d_Depth_Dens_[kg_m^-4]'. • The missing value is marked with an indicator: NaN. • We added the quality flags for temperature from the classical/traditional UDASH automatic checks: outlier and spike (flag=4), density inversion (flag=3) and suspect gradient (flag=2) as an extra column named 'QF_trad'. Dataset Arctic Arctic Subarctic PANGAEA - Data Publisher for Earth & Environmental Science Arctic ENVELOPE(0.000000,0.000000,90.000000,90.000000) |
spellingShingle | AI Applications Arctic Artificial Intelligence hydrography pan-Arctic Quality Assessment subarctic UDASH Chouai, Mohamed Mieruch-Schnülle, Sebastian Behrendt, Axel Vredenborg, Myriel Rabe, Benjamin UDASH-AI: Unified Database for Arctic and Subarctic Hydrography Optimized for Artificial Intelligence Applications |
title | UDASH-AI: Unified Database for Arctic and Subarctic Hydrography Optimized for Artificial Intelligence Applications |
title_full | UDASH-AI: Unified Database for Arctic and Subarctic Hydrography Optimized for Artificial Intelligence Applications |
title_fullStr | UDASH-AI: Unified Database for Arctic and Subarctic Hydrography Optimized for Artificial Intelligence Applications |
title_full_unstemmed | UDASH-AI: Unified Database for Arctic and Subarctic Hydrography Optimized for Artificial Intelligence Applications |
title_short | UDASH-AI: Unified Database for Arctic and Subarctic Hydrography Optimized for Artificial Intelligence Applications |
title_sort | udash-ai: unified database for arctic and subarctic hydrography optimized for artificial intelligence applications |
topic | AI Applications Arctic Artificial Intelligence hydrography pan-Arctic Quality Assessment subarctic UDASH |
topic_facet | AI Applications Arctic Artificial Intelligence hydrography pan-Arctic Quality Assessment subarctic UDASH |
url | https://doi.pangaea.de/10.1594/PANGAEA.973235 https://doi.org/10.1594/PANGAEA.973235 |