Gaussian Process Port-Hamiltonian Systems: Bayesian Learning with Physics Prior
Автор: Thomas Beckers
Загружено: 2023-01-13
Просмотров: 866
by Thomas Beckers, Jacob Seidman, Paris Perdikaris, and George Pappas
Data-driven approaches achieve remarkable results for the modeling of complex dynamics based on collected data. However, these models often neglect basic physical principles which determine the behavior of any real-world system. This omission is unfavorable in two ways: The models are not as data-efficient as they could be by incorporating physical prior knowledge, and the model itself might not be physically correct. We propose Gaussian Process Port-Hamiltonian systems (GP-PHS) as a physics-informed Bayesian learning approach with uncertainty quantification. The Bayesian nature of GP-PHS uses collected data to form a distribution over all possible Hamiltonians instead of a single point estimate. Due to the underlying physics model, a GP-PHS generates passive systems with respect to designated inputs and outputs. Further, the proposed approach preserves the compositional nature of Port-Hamiltonian systems.
Presented at the 2022 IEEE Conference on Decision and Control
https://ieeexplore.ieee.org/document/...
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