AW core data

These data were created to analyse the Atlantic Water (AW) temperature maximum (i.e. the AW core) across the Arctic from many observational programs between 1977 - 2018, with the aim to give a picture of the spatial and temporal variation in the AW core. The AW core temperature, salinity and pressur...

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Bibliographic Details
Main Authors: Richards, A, Johnson, H, Lique, C
Format: Dataset
Language:English
Published: University of Oxford 2022
Subjects:
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author Richards, A
Johnson, H
Lique, C
author_facet Richards, A
Johnson, H
Lique, C
author_sort Richards, A
collection OXFORD
description These data were created to analyse the Atlantic Water (AW) temperature maximum (i.e. the AW core) across the Arctic from many observational programs between 1977 - 2018, with the aim to give a picture of the spatial and temporal variation in the AW core. The AW core temperature, salinity and pressure (depth) are included. The data are in netCDF format, and can be interpreted by a range of software e.g. Python (xarray module), Matlab, cdo, nco, etc. The AW core of a given vertical profile is defined here as the warmest part of the profile with salinity greater than 34.7 psu. To promote accurate AW core identification, only profiles that started above 100 m depth and sampled more than 500 m of the water column are included in this dataset. Furthermore, before locating the AW core, profiles were smoothed over a vertical distance of 80 m by taking the mean of the profile data within 40 m of each data point. This removed spikes due to thermohaline intrusions and eddies, whilst preserving the general shape and magnitude of the temperature profile. Please note that in the original paper which used this data (Richards et al. 2022), monthly mean profiles were used for mooring data, whereas this dataset includes all mooring profiles. This gives the user maximum flexibility.
first_indexed 2024-03-07T07:15:05Z
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spelling oxford-uuid:4b16883c-97c2-4804-baf5-69a752ba886b2022-08-04T16:40:27ZAW core dataDatasethttp://purl.org/coar/resource_type/c_ddb1uuid:4b16883c-97c2-4804-baf5-69a752ba886bPhysical oceanographyEnglishHyrax DepositUniversity of Oxford2022Richards, AJohnson, HLique, CThese data were created to analyse the Atlantic Water (AW) temperature maximum (i.e. the AW core) across the Arctic from many observational programs between 1977 - 2018, with the aim to give a picture of the spatial and temporal variation in the AW core. The AW core temperature, salinity and pressure (depth) are included. The data are in netCDF format, and can be interpreted by a range of software e.g. Python (xarray module), Matlab, cdo, nco, etc. The AW core of a given vertical profile is defined here as the warmest part of the profile with salinity greater than 34.7 psu. To promote accurate AW core identification, only profiles that started above 100 m depth and sampled more than 500 m of the water column are included in this dataset. Furthermore, before locating the AW core, profiles were smoothed over a vertical distance of 80 m by taking the mean of the profile data within 40 m of each data point. This removed spikes due to thermohaline intrusions and eddies, whilst preserving the general shape and magnitude of the temperature profile. Please note that in the original paper which used this data (Richards et al. 2022), monthly mean profiles were used for mooring data, whereas this dataset includes all mooring profiles. This gives the user maximum flexibility.
spellingShingle Physical oceanography
Richards, A
Johnson, H
Lique, C
AW core data
title AW core data
title_full AW core data
title_fullStr AW core data
title_full_unstemmed AW core data
title_short AW core data
title_sort aw core data
topic Physical oceanography
work_keys_str_mv AT richardsa awcoredata
AT johnsonh awcoredata
AT liquec awcoredata