19–21 Aug 2024
Lundbeck Auditorium
Europe/Copenhagen timezone

Joint Parameter and Parameterization Inference with Uncertainty Quantification through Differentiable Programming

19 Aug 2024, 16:30
1h 30m
Lundbeck Auditorium

Lundbeck Auditorium

Parallel or poster Poster Session

Speaker

Yongquan Qu (Columbia University)

Description

Accurate representations of unknown and sub-grid physical processes through parameterizations (or closure) in numerical simulations with quantified uncertainty are critical for resolving the coarse-grained partial differential equations that govern many problems ranging from weather and climate prediction to turbulence simulations. Recent advances have seen machine learning (ML) increasingly applied to model these subgrid processes, resulting in the development of hybrid physics-ML models through the integration with numerical solvers. In this work, we introduce a novel framework for the joint estimation of physical parameters and machine learning parameterizations with uncertainty quantification. Our framework incorporates online training and efficient Bayesian inference within a high-dimensional parameter space, facilitated by differentiable programming. This proof of concept underscores the substantial potential of differentiable programming in synergistically combining machine learning with differential equations, thereby enhancing the capabilities of hybrid physics-ML modeling.

Primary author

Yongquan Qu (Columbia University)

Co-authors

Dr Mohamed Aziz Bhouri (Columbia University) Prof. Pierre Gentine (Columbia University)

Presentation materials

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