Φ-DVAE: Learning Physically Interpretable Representations with Nonlinear Filtering

09/30/2022
by   Alex Glyn-Davies, et al.
0

Incorporating unstructured data into physical models is a challenging problem that is emerging in data assimilation. Traditional approaches focus on well-defined observation operators whose functional forms are typically assumed to be known. This prevents these methods from achieving a consistent model-data synthesis in configurations where the mapping from data-space to model-space is unknown. To address these shortcomings, in this paper we develop a physics-informed dynamical variational autoencoder (Φ-DVAE) for embedding diverse data streams into time-evolving physical systems described by differential equations. Our approach combines a standard (possibly nonlinear) filter for the latent state-space model and a VAE, to embed the unstructured data stream into the latent dynamical system. A variational Bayesian framework is used for the joint estimation of the embedding, latent states, and unknown system parameters. To demonstrate the method, we look at three examples: video datasets generated by the advection and Korteweg-de Vries partial differential equations, and a velocity field generated by the Lorenz-63 system. Comparisons with relevant baselines show that the Φ-DVAE provides a data efficient dynamics encoding methodology that is competitive with standard approaches, with the added benefit of incorporating a physically interpretable latent space.

READ FULL TEXT
research
09/24/2021

Approximate Latent Force Model Inference

Physically-inspired latent force models offer an interpretable alternati...
research
12/07/2020

Variational Autoencoders for Learning Nonlinear Dynamics of Physical Systems

We develop data-driven methods for incorporating physical information fo...
research
10/16/2021

Physics-guided Deep Markov Models for Learning Nonlinear Dynamical Systems with Uncertainty

In this paper, we propose a probabilistic physics-guided framework, term...
research
07/13/2019

Extracting Interpretable Physical Parameters from Spatiotemporal Systems using Unsupervised Learning

Experimental data is often affected by uncontrolled variables that make ...
research
07/16/2019

Structured Variational Inference in Unstable Gaussian Process State Space Models

Gaussian processes are expressive, non-parametric statistical models tha...
research
07/27/2017

Recursive Variational Bayesian Dual Estimation for Nonlinear Dynamics and Non-Gaussian Observations

State space models provide an interpretable framework for complex time s...
research
03/04/2022

LaSDI: Parametric Latent Space Dynamics Identification

Enabling fast and accurate physical simulations with data has become an ...

Please sign up or login with your details

Forgot password? Click here to reset