Gaussian Processes at the Helm(holtz): A More Fluid Model for Ocean Currents
Abstract
Oceanographers are interested in predicting ocean currents and identifying divergences in a current vector field based on sparse observations of buoy velocities. Since we expect current dynamics to be smooth but highly non-linear, Gaussian processes (GPs) offer an attractive model. But we show that applying a GP with a standard stationary kernel directly to buoy data can struggle at both current prediction and divergence identification – due to some physically unrealistic prior assumptions. To better reflect known physical properties of currents, we propose to instead put a standard stationary kernel on the divergence and curl-free components of a vector field obtained through a Helmholtz decomposition. We show that, because this decomposition relates to the original vector field just via mixed partial derivatives, we can still perform inference given the original data with only a small constant multiple of additional computational expense. We illustrate the benefits of our method on synthetic and real oceans data.
Cite
Text
Berlinghieri et al. "Gaussian Processes at the Helm(holtz): A More Fluid Model for Ocean Currents." International Conference on Machine Learning, 2023.Markdown
[Berlinghieri et al. "Gaussian Processes at the Helm(holtz): A More Fluid Model for Ocean Currents." International Conference on Machine Learning, 2023.](https://mlanthology.org/icml/2023/berlinghieri2023icml-gaussian/)BibTeX
@inproceedings{berlinghieri2023icml-gaussian,
title = {{Gaussian Processes at the Helm(holtz): A More Fluid Model for Ocean Currents}},
author = {Berlinghieri, Renato and Trippe, Brian L. and Burt, David R. and Giordano, Ryan James and Srinivasan, Kaushik and Özgökmen, Tamay and Xia, Junfei and Broderick, Tamara},
booktitle = {International Conference on Machine Learning},
year = {2023},
pages = {2113-2163},
volume = {202},
url = {https://mlanthology.org/icml/2023/berlinghieri2023icml-gaussian/}
}