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Forecasts, neural networks, and results from the paper: 'Seasonal Arctic sea ice forecasting with probabilistic deep learning'

This dataset encompasses data produced in the study 'Seasonal Arctic sea ice forecasting with probabilistic deep learning', published in Nature Communications. The study introduces a new Arctic sea ice forecasting AI system, IceNet, which predicts monthly-averaged sea ice probability (SIP; probability of sea ice concentration > 15%) up to 6 months ahead at 25 km resolution. The study demonstrated IceNet's superior seasonal forecasting skill over a state-of-the-art physics-based sea ice forecasting system, ECMWF SEAS5, and a statistical benchmark. This dataset includes three types of data from the study. Firstly, IceNet's SIP forecasts from 2012/1 - 2020/9. Secondly, the 25 neural network files underlying the IceNet model. Thirdly, CSV files of results from the study. The codebase associated with this work includes a script to download this dataset and reproduce all the paper's figures.





This dataset is supported by Wave 1 of The UKRI Strategic Priorities Fund under the EPSRC Grant EP/T001569/1, particularly the "AI for Science" theme within that grant and The Alan Turing Institute. The dataset is also supported by the NERC ACSIS project (grant NE/N018028/1).

Simple

Date (Creation)
2021-07-16
Date (Revision)
2021-07-16
Date (Publication)
2021-07-16
Date (released)
2021-07-16
Edition

1.0

Unique resource identifier
https://doi.org/10.5285/71820e7d-c628-4e32-969f-464b7efb187c
Codespace

doi

Unique resource identifier
GB/NERC/BAS/PDC/01526
Codespace

https://data.bas.ac.uk/

Unique resource identifier
NE/N018028/1
Codespace

award

Other citation details

Please cite this item as: Andersson, T., & Hosking, J. (2021). Forecasts, neural networks, and results from the paper: 'Seasonal Arctic sea ice forecasting with probabilistic deep learning' (Version 1.0) [Data set]. NERC EDS UK Polar Data Centre. https://doi.org/10.5285/71820e7d-c628-4e32-969f-464b7efb187c

Credit

No credit.

Status
Completed
Point of contact
Organisation name Individual name Electronic mail address Role
British Antarctic Survey Andersson, Tom R. Author
British Antarctic Survey Hosking, J. Scott Author
NERC EDS UK Polar Data Centre

PDCServiceDesk@bas.ac.uk

Point of contact
Maintenance and update frequency
As needed
Maintenance note
Completed
Global Change Master Directory (GCMD) Science Keywords
  • EARTH SCIENCE > Cryosphere > Sea Ice
  • EARTH SCIENCE > Oceans > Sea Ice
Theme
  • deep learning

  • forecasting

  • machine learning

  • sea ice

Place
  • Arctic

GEMET - INSPIRE themes, version 1.0

  • Oceanographic geographical features
Access constraints
Other restrictions
Other constraints
no limitations to public access
Access constraints
Other restrictions
Other constraints
no limitations
Use constraints
License
Other constraints
Open Government Licence v3.0
Use constraints
Other restrictions
Other constraints

This data is governed by the NERC Data Policy: https://www.ukri.org/who-we-are/nerc/our-policies-and-standards/nerc-data-policy/

Use constraints
Other restrictions
Other constraints

This data is governed by the NERC data policy and supplied under Open Government Licence v.3

Unique resource identifier
url
Codespace

url

Association Type
Cross reference
Unique resource identifier
url
Codespace

url

Association Type
Larger work citation
Unique resource identifier
url
Codespace

url

Association Type
dependency
Unique resource identifier
url
Codespace

url

Association Type
dependency
Unique resource identifier
url
Codespace

url

Association Type
dependency
Unique resource identifier
doi
Codespace

doi

Association Type
Cross reference
Unique resource identifier
url
Codespace

url

Association Type
Cross reference
Unique resource identifier
url
Codespace

url

Association Type
Cross reference
Unique resource identifier
url
Codespace

url

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Cross reference
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url
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url

Association Type
Cross reference
Unique resource identifier
url
Codespace

url

Association Type
Cross reference
Spatial representation type
Text, table
Language
English
Character set
UTF8
Topic category
  • Climatology, meteorology, atmosphere
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E
W
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Begin date
2012-01-01
End date
2020-09-30
Supplemental Information

It is recommended that careful attention be paid to the contents of any data, and that the author be contacted with any questions regarding appropriate use. If you find any errors or omissions, please report them to polardatacentre@bas.ac.uk.

Title

European Petroleum Survey Group (EPSG) Geodetic Parameter Registry

Date (Publication)
2008-11-12
Cited responsible party
Organisation name Individual name Electronic mail address Role

European Petroleum Survey Group

EPSGadministrator@iogp.org

Publisher
Unique resource identifier
urn:ogc:def:crs:EPSG::3031
Version

6.18.3

Distributor

Distributor contact
Organisation name Individual name Electronic mail address Role
NERC EDS UK Polar Data Centre

PDCServiceDesk@bas.ac.uk

Distributor
Distributor format
Name Version
application/x-hdf
application/netcdf
text/csv
Units of distribution

bytes

Transfer size
7408818586
OnLine resource
Protocol Linkage Name

WWW:LINK-1.0-http--link

https://ramadda.data.bas.ac.uk/repository/entry/show?entryid=71820e7d-c628-4e32-969f-464b7efb187c

Get Data

Units of distribution

bytes

Transfer size
7408818586
OnLine resource
Protocol Linkage Name

WWW:LINK-1.0-http--link

https://ramadda.data.bas.ac.uk/repository/entry/show?entryid=71820e7d-c628-4e32-969f-464b7efb187c

Get Data

Units of distribution

bytes

Transfer size
7408818586
OnLine resource
Protocol Linkage Name

WWW:LINK-1.0-http--link

https://ramadda.data.bas.ac.uk/repository/entry/show?entryid=71820e7d-c628-4e32-969f-464b7efb187c

Get Data

Hierarchy level
Dataset
Statement

Methodology:

The IceNet model comprises an ensemble of 25 individual U-Net deep learning models, whose forecasts are averaged to compute the ensemble mean. IceNet's monthly-averaged inputs comprise sea ice concentration (SIC), 11 climate variables, statistical SIC forecasts, and metadata. IceNet is trained to forecast the next 6 months of monthly-averaged SIC classification maps at 25 km resolution. At each grid cell and lead time, IceNet's ensemble members produce a discrete probability distribution over three SIC classes: SIC < 15%, 15% < SIC < 80%, and SIC > 80%. The latter two SIC classes are summed to obtain the sea ice probability, P(SIC > 15%). IceNet's training data comprises climate simulations covering 1850-2100 and observational (reanalysis and satellite) data from 1979-2011. Observational data from 2012-2017 was used to validate the model during production, and 2018-2020 was used as the final test set. After training the IceNet model, we calibrated IceNet's probabilities using 2012-2017 data using an approach called temperature scaling. We then used the held-out data from 2012-2020 to compare IceNet's forecasting skill with a dynamical model (ECMWF SEAS5) and a statistical benchmark (a linear trend extrapolation model). A binary accuracy metric was used to measure performance, which computes the percentage of grid cells with the correct binary prediction for SIC > 15%. We then devised a framework for bounding the ice edge based on predicted SIP values and analysed the ability of IceNet and SEAS5 to bound the ice edge. Finally, we used a variable importance method (permute-and-predict) to identify the climate variables most important for IceNet's forecasts.





Full details on the methodology behind the generation of this dataset can be found in the associated paper, particularly the Methods section, as well as the GitHub codebase.





We thank the contributors to the Sea Ice Outlooks from 2012 to 2020, whose sea ice extent predictions are used for the sea_ice_outlook_errors.csv file.

Data collection:

All data was generated using Python v3.7. The IceNet model was developed using the Python package TensorFlow v2.2

Data quality:

IceNet makes predictions based on ERA5 reanalysis data and OSI-SAF SIC data - for information on their errors see their associated documentation. IceNet's SIP values were set to zero over a land mask and outside of a monthly maximum SIC climatology mask obtained from OSI-SAF.

Metadata

File identifier
71820e7d-c628-4e32-969f-464b7efb187c XML
Metadata language
English
Character set
UTF8
Hierarchy level
Dataset
Hierarchy level name

dataset

Date stamp
2021-07-16
Metadata standard name

ISO 19115 Geographic Information - Metadata

Metadata standard version

ISO 19115:2003(E)

Metadata author
Organisation name Individual name Electronic mail address Role
NERC EDS UK Polar Data Centre

polardatacentre@bas.ac.uk

Point of contact
 
 

Overviews

Spatial extent

thumbnail

Keywords

deep learning forecasting machine learning sea ice
GEMET - INSPIRE themes, version 1.0

Oceanographic geographical features
Global Change Master Directory (GCMD) Science Keywords

EARTH SCIENCE > Cryosphere > Sea Ice EARTH SCIENCE > Oceans > Sea Ice


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