Comparing Ocean Forecasts Driven with Machine Learning-based and Physics-based Atmospheric Forcings
Xiaobing Zhou, Frank Colberg, Debra Hudson, Yonghong Yin, Griffith Young, Christopher Bladwell, Catherine Deburgh-Day

TL;DR
This study compares ocean forecasts driven by ML-based atmospheric models versus traditional physics-based models, demonstrating that ML-based forcing can improve forecast accuracy and efficiency.
Contribution
It provides the first comprehensive evaluation of ML-based atmospheric forcing impact on ocean forecast skill using real operational models.
Findings
ML-based atmospheric forcing outperforms traditional NWP-based forcing in forecast skill.
Ocean forecasts with ML-based forcing show comparable or better accuracy for key surface variables.
ML models offer potential for more efficient and accurate operational ocean forecasting.
Abstract
Operational ocean forecasting systems conventionally employ dynamical ocean models driven by atmospheric forcing derived from numerical weather prediction (NWP) models. Recent advancements in artificial intelligence and machine learning (ML) have led to the development of ML-based atmospheric weather models, which have competitive, if not better, medium range forecast accuracy compared to traditional NWP systems. This study evaluates the impact of ML-based atmospheric forcing on ocean forecast skill through two sets of 10-day forecasts using the UK Met Office GOSI9 configuration of the NEMO dynamical ocean model. Both experiments share identical ocean initial conditions; but differ in atmospheric forcing: one uses ECMWF's ML-based AIFS model, while the other uses the Australian Bureau of Meteorology's physics-based NWP model, ACCESS-G3. Forecasts were initialized on the first day of…
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