Adjoint-based online learning of two-layer quasi-geostrophic baroclinic turbulence
For reasons of computational constraint, most global ocean circulation models used for Earth System Modeling still rely on parameterizations of sub-grid processes, and limitations in these parameterizations affect the modeled ocean circulation and impact on predictive skill. An increasingly popular...
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Zusammenfassung: | For reasons of computational constraint, most global ocean circulation models
used for Earth System Modeling still rely on parameterizations of sub-grid
processes, and limitations in these parameterizations affect the modeled ocean
circulation and impact on predictive skill. An increasingly popular approach is
to leverage machine learning approaches for parameterizations, regressing for a
map between the resolved state and missing feedbacks in a fluid system as a
supervised learning task. However, the learning is often performed in an
`offline' fashion, without involving the underlying fluid dynamical model
during the training stage. Here, we explore the `online' approach that involves
the fluid dynamical model during the training stage for the learning of
baroclinic turbulence and its parameterization, with reference to ocean eddy
parameterization. Two online approaches are considered: a full adjoint-based
online approach, related to traditional adjoint optimization approaches that
require a `differentiable' dynamical model, and an approximately online
approach that approximates the adjoint calculation and does not require a
differentiable dynamical model. The online approaches are found to be generally
more skillful and numerically stable than offline approaches. Others details
relating to online training, such as window size, machine learning model set up
and designs of the loss functions are detailed to aid in further explorations
of the online training methodology for Earth System Modeling. |
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DOI: | 10.48550/arxiv.2411.14106 |