Bounded nonlinear forecasts of partially observed geophysical systems with physics-constrained deep learning
Ouala, Said, Brunton, Steven L., Pascual, Ananda, Chapron, Bertrand, Collard, Fabrice, Gaultier, Lucile, Fablet, Ronan
The complexity of real-world geophysical systems is often compounded by the fact that the observed measurements depend on hidden variables. These latent variables include unresolved small scales and/or rapidly evolving processes, partially observed couplings, or forcings in coupled systems. This is the case in ocean-atmosphere dynamics, for which unknown interior dynamics can affect surface observations. The identification of computationally-relevant representations of such partially-observed and highly nonlinear systems is thus challenging and often limited to short-term forecast applications. Here, we investigate the physics-constrained learning of implicit dynamical embeddings, leveraging neural ordinary differential equation (NODE) representations. A key objective is to constrain their boundedness, which promotes the generalization of the learned dynamics to arbitrary initial condition. The proposed architecture is implemented within a deep learning framework, and its relevance is demonstrated with respect to state-of-the-art schemes for different case-studies representative of geophysical dynamics.
Feb-11-2022
- Country:
- Europe (0.68)
- North America > United States
- New York > New York County > New York City (0.14)
- Genre:
- Research Report (1.00)
- Industry:
- Energy (0.46)
- Technology: