Abstract:
This dataset comprises summary statistics regarding historical and projected Southern Hemisphere total sea ice area (SIA) and 21st century global temperature change (dTAS), evaluated from the multi-model ensembles contributing to CMIP5 and CMIP6 (Coupled Model Intercomparison Project phases 5 and 6). The metrics are evaluated for two climatological periods (1979-2014 and 2081-2100) from a number of CMIP experiments; historical, and ScenarioMIP or RCP runs. These metrics were calculated to calculate projections of future Antarctic sea ice loss, and drivers of ensemble spread in this variable, for Holmes et al. (2022) "Antarctic sea ice projections constrained by historical ice cover and future global temperature change".
Funding was provided by the British Antarctic Survey Polar Science for Planet Earth Programme and under NERC large grant NE/N01829X/1
Keywords:
CMIP5, CMIP6, Climate Projections, Sea Ice
Holmes, C. (2022). Sea Ice Area climatologies and 21st century change in the CMIP5 and CMIP6 multi-model ensembles (Version 1.0) [Data set]. NERC EDS UK Polar Data Centre. https://doi.org/10.5285/e67242f2-e9aa-4402-85a3-be42d13354af
Access Constraints: | None |
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Use Constraints: | This data is governed by the NERC data policy http://www.nerc.ac.uk/research/sites/data/policy/ and supplied under Open Government Licence v.3 http://www.nationalarchives.gov.uk/doc/open-government-licence/version/3/ |
Creation Date: | 2022-04-26 |
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Dataset Progress: | Complete |
Dataset Language: | English |
ISO Topic Categories: |
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Parameters: |
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Personnel: | |
Name | UK PDC |
Role(s) | Metadata Author |
Organisation | British Antarctic Survey |
Name | Caroline Holmes |
Role(s) | Investigator, Technical Contact |
Organisation | British Antarctic Survey |
Name | Dr Thomas J Bracegirdle |
Role(s) | Investigator |
Organisation | British Antarctic Survey |
Name | Dr Paul R Holland |
Role(s) | Investigator |
Organisation | British Antarctic Survey |
Parent Dataset: | N/A |
Quality: | Missing values in one of the future scenario run columns indicate that the given model was not run for that scenario, or, that data was not available to the authors. | |
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Lineage: | Model data The tables contain the model names for all models included in the analysis, and the headers reference the CMIP experiment or forcing scenario from which data was taken. The table also lists additional details of the runs used. The details of the experiment protocol for CMIP5 and CMIP6 are given in Taylor et al. (2012) and O'Neill et al (2016) respectively: Taylor, K. E., Stouffer, R. J., & Meehl, G. A. (2012). An overview of CMIP5 and the experiment design. Bulletin of the American Meteorological Society, 93(4), 485-498. https://doi.org/10.1175/BAMS-D-11-00094.1 O'Neill, B. C., Tebaldi, C., Vuuren, D. P. V., Eyring, V., Friedlingstein, P., Hurtt, G., et al. (2016). The scenario model intercomparison project (ScenarioMIP) for CMIP6. Geoscientific Model Development, 9(9), 3461-3482. https://doi.org/10.5194/gmd-9-3461-2016 Sea ice Concentration data from satellites 'NASA-Team v1.1': Cavalieri, D. J., Parkinson, C. L., Gloersen, P., & Zwally, H. J. (1996), updated yearly. Sea Ice Concentrations from Nimbus-7 SMMR and DMSP SSM/I-SSMIS Passive Microwave Data, Version 1.1 [Dataset]. NASA National Snow and Ice Data Center Distributed Active Archive Center. https://doi.org/10.5067/8GQ8LZQVL0VL. [Accessed Apr 1 2021]. "Bootstrap v3.1": Comiso, J. C. (2017). Bootstrap Sea Ice Concentrations from Nimbus-7 SMMR and DMSP SSM/I-SSMIS, Version 3.1 [Dataset]. NASA National Snow and Ice Data Center Distributed Active Archive Center. https://doi.org/10.5067/7Q8HCCWS4I0R. [Accessed Apr 1 2021]. Processing CMIP data was accessed from the CEDA archives of CMIP5 and CMIP6 data on the UK computing resource JASMIN. CMIP5 data was accessed in July 2020; CMIP6 data was accessed in November 2020. SIA was calculated from the CMIP5 variable 'sic' or CMIP6 variable 'siconc', or, where available, is the CMIP6 variable 'siareas'. Global mean surface air temperature was calculated from CMIP variable 'tas'. We define an 'exceedance year' as the year in which a model's 5-year trailing average February SIA drops below 0.1Mkm2 . Exceedance year is calculated separately for historical and scenario runs, and the exceedance year taken as the minimum of these values. Due to the use of the trailing average, there are no exceedances in the first four years of the historical (1950-1953) or future (2015-2018) analysis. Historical climatologies (SIAhist) use the period 1979-2014; CMIP5 historical runs end in 2005, so climatologies also use data from rcp45 or, where this is unavailable, rcp85. End-of-the-century climatologies, to calculate the change in SIA or TAS (dSIA and dTAS in data table), use the period 2081-2100. Ensemble linear regressions were performed (using python's statsmodels ordinary least squares method). Constrained projections were then produced using these linear regression models and one of the observation-derived SIA datasets as the predictor. Other data Equilibrium Climate Sensitivity (ECS) and Transient Climate Response (TCR) data from Meehl et al. (2020): Meehl, G. A., Senior, C. A., Eyring, V., Flato, G., Lamarque, J. F., Stouffer, R. J., et al. (2020). Context for interpreting equilibrium climate sensitivity and transient climate response from the CMIP6 Earth system models. Science Advances, 6(26). https://doi.org/10.1126/sciadv.aba1981 Data description: regression statistics For each combination of forcing scenario, dataset (i.e. CMIP5 or CMIP6 or special subsets therein) and season (February or September) and for each pair of variables named ''''''xname' and 'yname', the datafile regression_statistics.csv contains full regression statistics: * ensemble minimum, mean and max (as in Holmes et al. (2022) Table 1) and standard deviation of each variable * r2 and its p-value, regression slope and intercept * Where relevant, the constrained prediction, derived following 'processing' above; this constitutes the central prediction, 95% confidence interval, and 95% prediction interval. These correspond to the values in Holmes et al (2012) Figure 1b and 1d. * There are 71 data rows: these correspond to 60 standard cases ((2 seasons)*(3 forcing scenarios)*(2 generations, CMIP5 and CMIP6) for 5 variable pairs (SIAhist:dSIA, SIAhist:dTAS, dTAS:dSIA, ECS:dSIA, and the multiple regressions)) plus eleven special cases for subsets of all models. * All SIA values have units Mkm2 and temperatures have units degC. |
Temporal Coverage: | |
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Start Date | 1979-01-01 |
End Date | 2014-12-31 |
Start Date | 1950-01-01 |
End Date | 2100-12-31 |
Start Date | 2081-01-01 |
End Date | 2100-12-31 |
Spatial Coverage: | |
Latitude | |
Southernmost | -90 |
Northernmost | 90 |
Longitude | |
Westernmost | -180 |
Easternmost | 180 |
Altitude | |
Min Altitude | N/A |
Max Altitude | N/A |
Depth | |
Min Depth | N/A |
Max Depth | N/A |
Location: | |
Location | Global |
Detailed Location | N/A |
Location | Southern Hemisphere |
Detailed Location | N/A |
Data Collection: | The data is aggregated over the Southern Ocean, derived from CMIP models at various spatial resolution. |
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Distribution: | |
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Distribution Media | Online Internet (HTTP) |
Distribution Size | 25 kB |
Distribution Format | ASCII |
Fees | N/A |
Data Storage: | The data comprises three data files in .csv format (described in detail in 'Lineage/Methodology'): cmip5_model_data_table.csv and cmip6_model_data_table.csv contain summary metrics (SIA, TAS etc) and metadata (e.g. ensemble member chosen) for each model used in the analysis. regression_statistics.csv contains summary statistics The data have total volume ~25KB. |