Uncertainty-permitting machine learning reveals sources of dynamic sea level predictability across daily-to-seasonal timescales
Andrew Brettin, Laure Zanna, Elizabeth A. Barnes

TL;DR
This study uses neural networks with uncertainty quantification to identify and analyze sources of dynamic sea level predictability across daily to seasonal timescales, revealing key mechanisms like Rossby waves and oceanic anomalies.
Contribution
It introduces a neural network approach that quantifies forecast uncertainty and identifies sources of predictability in sea level forecasts across multiple timescales.
Findings
Neural networks provide skillful sea level predictions in the Indo-Pacific.
Forecast uncertainties help identify state-dependent predictability sources.
Rossby waves and oceanic anomalies are key predictability sources.
Abstract
Reliable dynamic sea level forecasts are hindered by numerous sources of uncertainty on daily-to-seasonal timescales (1-180 days) due to atmospheric boundary conditions and internal ocean variability. Studies have demonstrated that certain initial states can extend predictability horizons; thus, identifying these initial conditions may help improve forecast skill. Here, we identify sources of dynamic sea level predictability on daily-to-seasonal timescales using neural networks trained on CESM2 large ensemble data to forecast dynamic sea level. The forecasts yield not only a point estimate for sea level but also a standard deviation to quantify forecast uncertainty based on the initial conditions. Forecasted uncertainties can be leveraged to identify state-dependent sources of predictability at most locations and forecast leads. Network forecasts, particularly in the low-latitude…
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Taxonomy
TopicsGeophysics and Gravity Measurements · Oceanographic and Atmospheric Processes
