Back to Search Start Over

The Seasonal-to-Multiyear Large Ensemble (SMYLE) prediction system using the Community Earth System Model version 2

Authors :
Stephen G. Yeager
Nan Rosenbloom
Anne A. Glanville
Xian Wu
Isla Simpson
Hui Li
Maria J. Molina
Kristen Krumhardt
Samuel Mogen
Keith Lindsay
Danica Lombardozzi
Will Wieder
Who M. Kim
Jadwiga H. Richter
Matthew Long
Gokhan Danabasoglu
David Bailey
Marika Holland
Nicole Lovenduski
Warren G. Strand
Teagan King
Source :
Geoscientific Model Development. 15:6451-6493
Publication Year :
2022
Publisher :
Copernicus GmbH, 2022.

Abstract

The potential for multiyear prediction of impactful Earth system change remains relatively underexplored compared to shorter (subseasonal to seasonal) and longer (decadal) timescales. In this study, we introduce a new initialized prediction system using the Community Earth System Model version 2 (CESM2) that is specifically designed to probe potential and actual prediction skill at lead times ranging from 1 month out to 2 years. The Seasonal-to-Multiyear Large Ensemble (SMYLE) consists of a collection of 2-year-long hindcast simulations, with four initializations per year from 1970 to 2019 and an ensemble size of 20. A full suite of output is available for exploring near-term predictability of all Earth system components represented in CESM2. We show that SMYLE skill for El Niño–Southern Oscillation is competitive with other prominent seasonal prediction systems, with correlations exceeding 0.5 beyond a lead time of 12 months. A broad overview of prediction skill reveals varying degrees of potential for useful multiyear predictions of seasonal anomalies in the atmosphere, ocean, land, and sea ice. The SMYLE dataset, experimental design, model, initial conditions, and associated analysis tools are all publicly available, providing a foundation for research on multiyear prediction of environmental change by the wider community.

Subjects

Subjects :
General Medicine

Details

ISSN :
19919603
Volume :
15
Database :
OpenAIRE
Journal :
Geoscientific Model Development
Accession number :
edsair.doi.dedup.....a8b7108f75bfdb445edae0321f0d8cc7