Robust detection of forced warming in the presence of potentially large climate variability

Sebastian Sippel, Nicolai Meinshausen, Enikő Székely, Erich Fischer, Angeline G. Pendergrass, Flavio Lehner, Reto Knutti

Research output: Contribution to journalArticlepeer-review

23 Scopus citations

Abstract

Climate warming is unequivocal and exceeds internal climate variability. However, estimates of the magnitude of decadal-scale variability from models and observations are uncertain, limiting determination of the fraction of warming attributable to external forcing. Here, we use statistical learning to extract a fingerprint of climate change that is robust to different model representations and magnitudes of internal variability. We find a best estimate forced warming trend of 0.8°C over the past 40 years, slightly larger than observed. It is extremely likely that at least 85% is attributable to external forcing based on the median variability across climate models. Detection remains robust even when evaluated against models with high variability and if decadal-scale variability were doubled. This work addresses a long-standing limitation in attributing warming to external forcing and opens up opportunities even in the case of large model differences in decadal-scale variability, model structural uncertainty, and limited observational records.

Original languageEnglish
Article numbereabh4429
JournalScience advances
Volume7
Issue number43
DOIs
StatePublished - Oct 2021

Fingerprint

Dive into the research topics of 'Robust detection of forced warming in the presence of potentially large climate variability'. Together they form a unique fingerprint.

Cite this