4.7 Article

Projecting Global Mean Sea-Level Change Using CMIP6 Models

Journal

GEOPHYSICAL RESEARCH LETTERS
Volume 48, Issue 5, Pages -

Publisher

AMER GEOPHYSICAL UNION
DOI: 10.1029/2020GL092064

Keywords

climate sensitivity; global climate models; global mean sea‐ level projections; global surface air temperature; global thermal expansion; twenty‐ first century

Funding

  1. ESGF
  2. Met Office Hadley Center Climate Program - BEIS
  3. Defra, UK

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The effective climate sensitivity of CMIP6 models has increased compared to CMIP5, leading to higher projections of global surface air temperature and more pronounced differences in global mean sea-level rise rates around 2100. Early emission reductions are crucial for mitigating sea-level rise.
The effective climate sensitivity (EffCS) of models in the Coupled Model Intercomparison Project 6 (CMIP6) has increased relative to CMIP5. We explore the implications of this for global mean sea-level (GMSL) change projections in 2100 for three emissions scenarios. CMIP6 projections of global surface air temperature are substantially higher than in CMIP5, but projections of global mean thermal expansion are not. Using these projections as input to construct projections of GMSL change with IPCC AR5 methods, the 95th percentile of GMSL change at 2100 only increases by 3-7 cm. Projected rates of GMSL rise around 2100 increase more strongly, though, implying more pronounced differences beyond 2100 and greater committed sea-level rise. Intermodel differences in GMSL projections indicate that EffCS-based model selection may substantially alter the ensemble projections. GMSL change in 2100 is accurately predicted by time-integrated temperature change, and thus requires reducing emissions early to be mitigated.

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