Physics-Informed Neural Networks to Reconstruct Surface Velocity Field
from Drifter Data
Abstract
Accessing velocity data in the Gulf of Mexico is critical for
environmental conservation and predicting debris and oil spill
movements. This data can provide valuable insights for cleaning the
ocean and mitigating marine pollution. Traditionally, researchers have
relied on physics models to reconstruct and predict velocity fields at
desired spatial and temporal resolutions. However, obtaining this data
is not only computationally expensive but also error-prone. While
accurate measurements can be obtained using ocean drifters, their
sparsity necessitates extensive extrapolation to create comprehensive
velocity fields.
We propose applying a deep learning model called Physics-Informed Neural
Networks to reconstruct ocean surface velocity fields using sparse
measurements obtained from drifters. With data from 200 drifters, we
successfully reconstructed the surface velocity field in the Gulf of
Mexico, achieving a Correlation Coefficient of more than 0.91. Notably,
this performance surpasses that of classical data extrapolation methods,
including Inverse Distance Weighted and Universal Kriging algorithms.