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Enterprise AI Analysis: LEVERAGING AN ATMOSPHERIC FOUNDATIONAL MODEL FOR SUBREGIONAL SEA SURFACE TEMPERATURE FORECASTING

Deep Learning for Oceanography

LEVERAGING AN ATMOSPHERIC FOUNDATIONAL MODEL FOR SUBREGIONAL SEA SURFACE TEMPERATURE FORECASTING

This study successfully adapts Aurora, a foundational deep learning model for atmospheric forecasting, to predict sea surface temperature (SST) in the Canary Upwelling System. By fine-tuning the model with high-resolution oceanographic reanalysis data, it achieves a low RMSE of 0.119K and high anomaly correlation coefficients (ACC ≈ 0.997). The approach demonstrates the feasibility of cross-domain knowledge transfer for oceanic applications, highlighting its potential for improved climate modeling and ocean prediction accuracy, despite challenges in capturing finer coastal details.

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0.000K Achieved RMSE (Kelvin)
0.000 Anomaly Correlation Coeff.
Significant Computational Cost Reduction

Deep Analysis & Enterprise Applications

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0.119K Achieved RMSE for SST Prediction

Enterprise Process Flow

Adapt Aurora Model
Fine-tune with Reanalysis Data
Predict SST (Canary Upwelling System)
Evaluate Performance
Model Performance Comparison: Comparison of fine-tuning strategies and batch sizes.
Setting RMSE (K) Bias (K) ACC
Full fine-tuning, lr = 1e-5, batch=3 0.131 -0.069 0.997
Decoder fine-tuning, lr = 1e-4, batch=3 0.140 -0.064 0.997
Full fine-tuning with new decoder, lr = 1e-5, batch=3 0.124 -0.064 0.997
Full fine-tuning, lr = 1e-5, batch=8 0.130 -0.062 0.997
Decoder fine-tuning, lr = 1e-4, batch=8 0.135 -0.059 0.997
Full fine-tuning with new decoder, lr = 1e-5, batch=8 0.134 -0.033 0.997

Challenges in Coastal Region Forecasting

The model reveals more errors in coastal zones due to their inherent complexity and intense temperature variations. Factors like ocean currents, coastal topography, and local winds generate microclimates, making predictions challenging.

In contrast, open ocean conditions are more uniform, leading to reduced prediction errors. This suggests that specific training focused on coastal areas, potentially with high-resolution data or physics-informed neural networks, could significantly improve overall model performance.

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Estimated Annual Savings $0
Hours Reclaimed Annually 0

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