Ensemble forecasting greatly expands the prediction horizon for ocean mesoscale variability

Author:

Thoppil Prasad G.ORCID,Frolov SergeyORCID,Rowley Clark D.ORCID,Reynolds Carolyn A.ORCID,Jacobs Gregg A.ORCID,Joseph Metzger E.ORCID,Hogan Patrick J.,Barton NeilORCID,Wallcraft Alan J.,Smedstad Ole MartinORCID,Shriver Jay F.ORCID

Abstract

AbstractMesoscale eddies dominate energetics of the ocean, modify mass, heat and freshwater transport and primary production in the upper ocean. However, the forecast skill horizon for ocean mesoscales in current operational models is shorter than 10 days: eddy-resolving ocean models, with horizontal resolution finer than 10 km in mid-latitudes, represent mesoscale dynamics, but mesoscale initial conditions are hard to constrain with available observations. Here we analyze a suite of ocean model simulations at high (1/25°) and lower (1/12.5°) resolution and compare with an ensemble of lower-resolution simulations. We show that the ensemble forecast significantly extends the predictability of the ocean mesoscales to between 20 and 40 days. We find that the lack of predictive skill in data assimilative deterministic ocean models is due to high uncertainty in the initial location and forecast of mesoscale features. Ensemble simulations account for this uncertainty and filter-out unconstrained scales. We suggest that advancements in ensemble analysis and forecasting should complement the current focus on high-resolution modeling of the ocean.

Funder

United States Department of Defense | United States Navy | Office of Naval Research

Publisher

Springer Science and Business Media LLC

Subject

General Earth and Planetary Sciences,General Environmental Science

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