Geophysical Research Letters (Aug 2019)

Skillful Prediction of Monthly Major Hurricane Activity in the North Atlantic with Two‐way Nesting

  • Kun Gao,
  • Jan‐Huey Chen,
  • Lucas Harris,
  • Yongqiang Sun,
  • Shian‐Jiann Lin

DOI
https://doi.org/10.1029/2019GL083526
Journal volume & issue
Vol. 46, no. 15
pp. 9222 – 9230

Abstract

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Abstract We investigate the monthly prediction of North Atlantic hurricane and especially major hurricane activity based on the Geophysical Fluid Dynamics Laboratory High‐Resolution Atmospheric Model (HiRAM). We compare the performance of two grid configurations: a globally uniform 25‐km grid and the other with an 8‐km interactive nest over the tropical North Atlantic. Both grid configurations show skills in predicting anomalous monthly hurricane frequency and accumulated cyclone energy. Particularly, the 8‐km nested model shows improved skills in predicting major hurricane frequency and accumulated cyclone energy. The skill in anomalous monthly hurricane occurrence prediction arises from the accurate prediction of zonal wind shear anomalies in the Main Development Region, which in turn arises from the sea surface temperature anomalies persisted from the initialization time. The enhanced resolution on the nested grid permits a better representation of hurricanes and especially intense hurricanes, thereby showing the ability and the potential for prediction of major hurricanes on subseasonal timescales.

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