Quantifying stratospheric biases and identifying their potential sources in subseasonal forecast systems

The stratosphere can be a source of predictability for surface weather on timescales of several weeks to months. However, the potential predictive skill gained from stratospheric variability can be limited by biases in the representation of stratospheric processes and the coupling of the stratosphere with surface climate in forecast systems. This study provides a first systematic identification of model biases in the stratosphere across a wide range of subseasonal forecast systems.

It is found that many of the forecast systems considered exhibit warm global-mean temperature biases from the lower to middle stratosphere, too strong/cold wintertime polar vortices, and too cold extratropical upper-troposphere/lower-stratosphere regions. Furthermore, tropical stratospheric anomalies associated with the Quasi-Biennial Oscillation tend to decay toward each system's climatology with lead time. In the Northern Hemisphere (NH), most systems do not capture the seasonal cycle of extreme-vortex-event probabilities, with an underestimation of sudden stratospheric warming events and an overestimation of strong vortex events in January. In the Southern Hemisphere (SH), springtime interannual variability in the polar vortex is generally underestimated, but the timing of the final breakdown of the polar vortex often happens too early in many of the prediction systems. These stratospheric biases tend to be considerably worse in systems with lower model lid heights. In both hemispheres, most systems with low-top atmospheric models also consistently underestimate the upward wave driving that affects the strength of the stratospheric polar vortex. We expect that the biases identified here will help guide model development for subseasonal-to-seasonal forecast systems and further our understanding of the role of the stratosphere in predictive skill in the troposphere.

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Author Lawrence, Zachary D.
Abalos, Marta
Ayarzagüena, Blanca
Barriopedro, David
Butler, Amy H.
Calvo, Natalia
de la Cámara, Alvaro
Charlton-Perez, Andrew
Domeisen, Daniela I. V.
Dunn-Sigouin, Etienne
García-Serrano, Javier
Garfinkel, Chaim I.
Hindley, Neil P.
Jia, Liwei
Jucker, Martin
Karpechko, Alexey Y.
Kim, Hera
Lang, Andrea L.
Lee, Simon H.
Lin, Pu
Osman, Marisol
Palmeiro, Froila M.
Perlwitz, Judith
Polichtchouk, Inna
Richter, Jadwiga H.
Schwartz, Chen
Son, Seok-Woo
Statnaia, Irina
Taguchi, Masakazu
Tyrrell, Nicholas L.
Wright, Corwin J.
Wu, Rachel W.-Y.
Publisher UCAR/NCAR - Library
Publication Date 2022-08-19T00:00:00
Digital Object Identifier (DOI) Not Assigned
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Topic Category geoscientificInformation
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Metadata Date 2023-08-18T18:36:49.774758
Metadata Record Identifier edu.ucar.opensky::articles:25750
Metadata Language eng; USA
Suggested Citation Lawrence, Zachary D., Abalos, Marta, Ayarzagüena, Blanca, Barriopedro, David, Butler, Amy H., Calvo, Natalia, de la Cámara, Alvaro, Charlton-Perez, Andrew, Domeisen, Daniela I. V., Dunn-Sigouin, Etienne, García-Serrano, Javier, Garfinkel, Chaim I., Hindley, Neil P., Jia, Liwei, Jucker, Martin, Karpechko, Alexey Y., Kim, Hera, Lang, Andrea L., Lee, Simon H., Lin, Pu, Osman, Marisol, Palmeiro, Froila M., Perlwitz, Judith, Polichtchouk, Inna, Richter, Jadwiga H., Schwartz, Chen, Son, Seok-Woo, Statnaia, Irina, Taguchi, Masakazu, Tyrrell, Nicholas L., Wright, Corwin J., Wu, Rachel W.-Y.. (2022). Quantifying stratospheric biases and identifying their potential sources in subseasonal forecast systems. UCAR/NCAR - Library. http://n2t.net/ark:/85065/d75b069n. Accessed 23 June 2025.

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