npj Climate and Atmospheric Science (Oct 2024)

Exploring multiyear-to-decadal North Atlantic sea level predictability and prediction using machine learning

  • Qinxue Gu,
  • Liping Zhang,
  • Liwei Jia,
  • Thomas L. Delworth,
  • Xiaosong Yang,
  • Fanrong Zeng,
  • William F. Cooke,
  • Shouwei Li

DOI
https://doi.org/10.1038/s41612-024-00802-2
Journal volume & issue
Vol. 7, no. 1
pp. 1 – 15

Abstract

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Abstract Coastal communities face substantial risks from long-term sea level rise and decadal sea level variations, with the North Atlantic and U.S. East Coast being particularly vulnerable under changing climates. Employing a self-organizing map-based framework, we assess the North Atlantic sea level variability and predictability using 5000-year sea level anomalies (SLA) from two preindustrial control model simulations. Preferred transitions among patterns of variability are identified, revealing long-term predictability on decadal timescales related to shifts in Atlantic meridional overturning circulation phases. Combining this framework with model-analog techniques, we demonstrate prediction skill of large-scale SLA patterns and low-frequency coastal SLA variations comparable to that from initialized hindcasts. Moreover, additional short-term predictability is identified after the exclusion of low-frequency signals, which arises from slow gyre circulation adjustment triggered by the North Atlantic Oscillation-like stochastic variability. This study highlights the potential of machine learning to assess sources of predictability and to enable long-term climate prediction.