Online learning of subgrid-scale models for quasi-geostrophic turbulence in planetary interiors
- URL: http://arxiv.org/abs/2511.14581v1
- Date: Tue, 18 Nov 2025 15:21:38 GMT
- Title: Online learning of subgrid-scale models for quasi-geostrophic turbulence in planetary interiors
- Authors: Hugo Frezat, Thomas Gastine, Alexandre Fournier,
- Abstract summary: We study quasi-geostrophic turbulent flow in an axisymmetric bounded domain.<n>Flow is driven by a prescribed analytical forcing.<n>We show that an SGS model trained on data spanning only one turnover time remains stable and accurate over integrations at least a hundred times longer than the training period.
- Score: 41.99844472131922
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The use of machine learning to represent subgrid-scale (SGS) dynamics is now well established in weather forecasting and climate modelling. Recent advances have demonstrated that SGS models trained via ``online'' end-to-end learning -- where the dynamical solver operating on the filtered equations participates in the training -- can outperform traditional physics-based approaches. Most studies, however, have focused on idealised periodic domains, neglecting the mechanical boundaries present e.g. in planetary interiors. To address this issue, we consider two-dimensional quasi-geostrophic turbulent flow in an axisymmetric bounded domain that we model using a pseudo-spectral differentiable solver, thereby enabling online learning. We examine three configurations, varying the geometry (between an exponential container and a spherical shell) and the rotation rate. Flow is driven by a prescribed analytical forcing, allowing for precise control over the energy injection scale and an exact estimate of the power input. We evaluate the accuracy of the online-trained SGS model against the reference direct numerical simulation using integral quantities and spectral diagnostics. In all configurations, we show that an SGS model trained on data spanning only one turnover time remains stable and accurate over integrations at least a hundred times longer than the training period. Moreover, we demonstrate the model's remarkable ability to reproduce slow processes occurring on time scales far exceeding the training duration, such as the inward drift of jets in the spherical shell. These results suggest a promising path towards developing SGS models for planetary and stellar interior dynamics, including dynamo processes.
Related papers
- Stable Long-Horizon Spatiotemporal Prediction on Meshes Using Latent Multiscale Recurrent Graph Neural Networks [0.0]
We propose a deep learning framework for predicting full temperature histories directly on meshes.<n>The framework maintains over thousands of time steps and generalizing across heterogeneous geometries.<n>Experiments on simulated powder bed fusion data demonstrate accurate and temporally stable long-horizon predictions.
arXiv Detail & Related papers (2026-02-20T11:22:47Z) - Forecasting Continuous Non-Conservative Dynamical Systems in SO(3) [51.510040541600176]
We propose a novel approach to modeling the rotation of moving objects in computer vision.<n>Our approach is agnostic to energy and momentum conservation while being robust to input noise.<n>By learning to approximate object dynamics from noisy states during training, our model attains robust extrapolation capabilities in simulation and various real-world settings.
arXiv Detail & Related papers (2025-08-11T09:03:10Z) - Flow Matching for Geometric Trajectory Simulation [4.271235935891555]
N-body systems are a fundamental problem with applications in a wide range of fields, such as molecular dynamics, biochemistry, and pedestrian dynamics.<n>Machine learning has become an invaluable tool for scaling physics-based simulators and developing models directly from experimental data.<n>To generate realistic trajectories, existing methods must learn complex transformations starting from uninformed noise and do not allow for the exploitation of domain-informed priors.<n>We propose STFlow to address this limitation. By leveraging flow matching and data-dependent couplings, STFlow facilitates physics-informed simulation of geometric trajectories without sacrificing model expressivity or scalability.
arXiv Detail & Related papers (2025-05-24T11:18:59Z) - Learning Effective Dynamics across Spatio-Temporal Scales of Complex Flows [4.798951413107239]
We propose a novel framework, Graph-based Learning of Effective Dynamics (Graph-LED), that leverages graph neural networks (GNNs) and an attention-based autoregressive model.<n>We evaluate the proposed approach on a suite of fluid dynamics problems, including flow past a cylinder and flow over a backward-facing step over a range of Reynolds numbers.
arXiv Detail & Related papers (2025-02-11T22:14:30Z) - Differentiable Turbulence: Closure as a partial differential equation constrained optimization [1.8749305679160366]
We leverage the concept of differentiable turbulence, whereby an end-to-end differentiable solver is used in combination with physics-inspired choices of deep learning architectures.
We show that the differentiable physics paradigm is more successful than offline, textita-priori learning, and that hybrid solver-in-the-loop approaches to deep learning offer an ideal balance between computational efficiency, accuracy, and generalization.
arXiv Detail & Related papers (2023-07-07T15:51:55Z) - Learning Large-scale Subsurface Simulations with a Hybrid Graph Network
Simulator [57.57321628587564]
We introduce Hybrid Graph Network Simulator (HGNS) for learning reservoir simulations of 3D subsurface fluid flows.
HGNS consists of a subsurface graph neural network (SGNN) to model the evolution of fluid flows, and a 3D-U-Net to model the evolution of pressure.
Using an industry-standard subsurface flow dataset (SPE-10) with 1.1 million cells, we demonstrate that HGNS is able to reduce the inference time up to 18 times compared to standard subsurface simulators.
arXiv Detail & Related papers (2022-06-15T17:29:57Z) - Physics-Inspired Temporal Learning of Quadrotor Dynamics for Accurate
Model Predictive Trajectory Tracking [76.27433308688592]
Accurately modeling quadrotor's system dynamics is critical for guaranteeing agile, safe, and stable navigation.
We present a novel Physics-Inspired Temporal Convolutional Network (PI-TCN) approach to learning quadrotor's system dynamics purely from robot experience.
Our approach combines the expressive power of sparse temporal convolutions and dense feed-forward connections to make accurate system predictions.
arXiv Detail & Related papers (2022-06-07T13:51:35Z) - Towards Fast Simulation of Environmental Fluid Mechanics with
Multi-Scale Graph Neural Networks [0.0]
We introduce MultiScaleGNN, a novel multi-scale graph neural network model for learning to infer unsteady continuum mechanics.
We demonstrate this method on advection problems and incompressible fluid dynamics, both fundamental phenomena in oceanic and atmospheric processes.
Simulations obtained with MultiScaleGNN are between two and four orders of magnitude faster than those on which it was trained.
arXiv Detail & Related papers (2022-05-05T13:33:03Z) - Gradient-Based Trajectory Optimization With Learned Dynamics [80.41791191022139]
We use machine learning techniques to learn a differentiable dynamics model of the system from data.
We show that a neural network can model highly nonlinear behaviors accurately for large time horizons.
In our hardware experiments, we demonstrate that our learned model can represent complex dynamics for both the Spot and Radio-controlled (RC) car.
arXiv Detail & Related papers (2022-04-09T22:07:34Z) - Using scientific machine learning for experimental bifurcation analysis
of dynamic systems [2.204918347869259]
This study focuses on training universal differential equation (UDE) models for physical nonlinear dynamical systems with limit cycles.
We consider examples where training data is generated by numerical simulations, whereas we also employ the proposed modelling concept to physical experiments.
We use both neural networks and Gaussian processes as universal approximators alongside the mechanistic models to give a critical assessment of the accuracy and robustness of the UDE modelling approach.
arXiv Detail & Related papers (2021-10-22T15:43:03Z) - Learning to Simulate Complex Physics with Graph Networks [68.43901833812448]
We present a machine learning framework and model implementation that can learn to simulate a wide variety of challenging physical domains.
Our framework---which we term "Graph Network-based Simulators" (GNS)--represents the state of a physical system with particles, expressed as nodes in a graph, and computes dynamics via learned message-passing.
Our results show that our model can generalize from single-timestep predictions with thousands of particles during training, to different initial conditions, thousands of timesteps, and at least an order of magnitude more particles at test time.
arXiv Detail & Related papers (2020-02-21T16:44:28Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.