Learning Hamiltonian Dynamics with Bayesian Data Assimilation
Kim, Taehyeun, Kim, Tae-Geun, Girard, Anouck, Kolmanovsky, Ilya
–arXiv.org Artificial Intelligence
In this paper, we develop a neural network-based approach for time-series prediction in unknown Hamiltonian dynamical systems. Our approach leverages a surrogate model and learns the system dynamics using generalized coordinates (positions) and their conjugate momenta while preserving a constant Hamiltonian. To further enhance long-term prediction accuracy, we introduce an Autoregressive Hamiltonian Neural Network, which incorporates autoregressive prediction errors into the training objective. Additionally, we employ Bayesian data assimilation to refine predictions in real-time using online measurement data. Numerical experiments on a spring-mass system and highly elliptic orbits under gravitational perturbations demonstrate the effectiveness of the proposed method, highlighting its potential for accurate and robust long-term predictions.
arXiv.org Artificial Intelligence
Jan-30-2025
- Country:
- Asia > South Korea
- North America > United States
- Michigan > Washtenaw County > Ann Arbor (0.14)
- Genre:
- Research Report (0.50)
- Technology: