Internal Variability Increased Arctic Amplification During 1980–2022

Author:

Sweeney Aodhan J.1ORCID,Fu Qiang1ORCID,Po‐Chedley Stephen2ORCID,Wang Hailong3ORCID,Wang Muyin45

Affiliation:

1. Department of Atmospheric Sciences University of Washington Seattle WA USA

2. Program for Climate Model Diagnosis and Intercomparison Lawrence Livermore National Laboratory Livermore CA USA

3. Atmospheric Sciences and Global Change Division PNNL Richland WA USA

4. Cooperative Institute for Climate, Ocean, and Ecosystem Studies University of Washington Seattle WA USA

5. Pacific Marine Environmental Laboratory Oceanic and Atmospheric Research NOAA Silver Spring MD USA

Abstract

AbstractSince 1980, the Arctic surface has warmed four times faster than the global mean. Enhanced Arctic warming relative to the global average warming is referred to as Arctic Amplification (AA). While AA is a robust feature in climate change simulations, models rarely reproduce the observed magnitude of AA, leading to concerns that models may not accurately capture the response of the Arctic to greenhouse gas emissions. Here, we use CMIP6 data to train a machine learning algorithm to quantify the influence of internal variability in surface air temperature trends over both the Arctic and global domains. Application of this machine learning algorithm to observations reveals that internal variability increases the Arctic warming but slows global warming in recent decades, inflating AA since 1980 by 38% relative to the externally forced AA. Accounting for the role of internal variability reconciles the discrepancy between simulated and observed AA.

Funder

Earth Sciences Division

National Science Foundation

Lawrence Livermore National Laboratory

Pacific Northwest National Laboratory

NOAA Pacific Marine Environmental Laboratory

National Aeronautics and Space Administration

Office of Science

U.S. Department of Energy

National Oceanic and Atmospheric Administration

Environmental Laboratory

Publisher

American Geophysical Union (AGU)

Subject

General Earth and Planetary Sciences,Geophysics

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