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On the Correspondence between Seasonal Forecast Biases and Long-Term Climate Biases in Sea Surface Temperature

Authors :
Jeffrey L. Anderson
Alicia Karspeck
Jiwoo Lee
A. Cheska Siongco
Shaocheng Xie
Joseph Tribbia
Hiroyuki Murakami
Ben P. Kirtman
Stephen A. Klein
Hsi-Yen Ma
William J. Merryfield
Kevin Raeder
Source :
Journal of Climate. 34:427-446
Publication Year :
2020
Publisher :
American Meteorological Society, 2020.

Abstract

The correspondence between mean sea surface temperature (SST) biases in retrospective seasonal forecasts (hindcasts) and long-term climate simulations from five global climate models is examined to diagnose the degree to which systematic SST biases develop on seasonal time scales. The hindcasts are from the North American Multimodel Ensemble, and the climate simulations are from the Coupled Model Intercomparison Project. The analysis suggests that most robust climatological SST biases begin to form within 6 months of a realistically initialized integration, although the growth rate varies with location, time, and model. In regions with large biases, interannual variability and ensemble spread is much smaller than the climatological bias. Additional ensemble hindcasts of the Community Earth System Model with a different initialization method suggest that initial conditions do matter for the initial bias growth, but the overall global bias patterns are similar after 6 months. A hindcast approach is more suitable to study biases over the tropics and subtropics than over the extratropics because of smaller initial biases and faster bias growth. The rapid emergence of SST biases makes it likely that fast processes with time scales shorter than the seasonal time scales in the atmosphere and upper ocean are responsible for a substantial part of the climatological SST biases. Studying the growth of biases may provide important clues to the causes and ultimately the amelioration of these biases. Further, initialized seasonal hindcasts can profitably be used in the development of high-resolution coupled ocean–atmosphere models.

Details

ISSN :
15200442 and 08948755
Volume :
34
Database :
OpenAIRE
Journal :
Journal of Climate
Accession number :
edsair.doi...........868c5b9430fc8bfc67f3a729e6b9eb75
Full Text :
https://doi.org/10.1175/jcli-d-20-0338.1