Recurrent Deep Kernel Learning of Dynamical Systems
Botteghi, Nicolò, Motta, Paolo, Manzoni, Andrea, Zunino, Paolo, Guo, Mengwu
Digital twins require computationally-efficient reduced-order models (ROMs) that can accurately describe complex dynamics of physical assets. However, constructing ROMs from noisy high-dimensional data is challenging. In this work, we propose a data-driven, non-intrusive method that utilizes stochastic variational deep kernel learning (SVDKL) to discover low-dimensional latent spaces from data and a recurrent version of SVDKL for representing and predicting the evolution of latent dynamics. The proposed method is demonstrated with two challenging examples -- a double pendulum and a reaction-diffusion system. Results show that our framework is capable of (i) denoising and reconstructing measurements, (ii) learning compact representations of system states, (iii) predicting system evolution in low-dimensional latent spaces, and (iv) quantifying modeling uncertainties.
May-30-2024
- Country:
- Europe (0.93)
- North America > United States (0.28)
- Genre:
- Research Report > New Finding (0.48)
- Technology: