Physics-guided Deep Markov Models for Learning Nonlinear Dynamical Systems with Uncertainty
Wei Liu, Zhilu Lai, Kiran Bacsa, Eleni Chatzi

TL;DR
This paper introduces a hybrid probabilistic framework combining physics-based models with deep learning to improve the learning and interpretation of nonlinear dynamical systems from data.
Contribution
It proposes a physics-guided Deep Markov Model that integrates physical constraints into neural network-based state space models for better interpretability and performance.
Findings
Enhanced predictive accuracy on nonlinear system examples
More physically interpretable latent representations
Improved generalization in experimental case studies
Abstract
In this paper, we propose a probabilistic physics-guided framework, termed Physics-guided Deep Markov Model (PgDMM). The framework targets the inference of the characteristics and latent structure of nonlinear dynamical systems from measurement data, where exact inference of latent variables is typically intractable. A recently surfaced option pertains to leveraging variational inference to perform approximate inference. In such a scheme, transition and emission functions of the system are parameterized via feed-forward neural networks (deep generative models). However, due to the generalized and highly versatile formulation of neural network functions, the learned latent space often lacks physical interpretation and structured representation. To address this, we bridge physics-based state space models with Deep Markov Models, thus delivering a hybrid modeling framework for unsupervised…
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Taxonomy
MethodsVariational Inference
