Plug-and-Play Physics-informed Learning using Uncertainty Quantified Port-Hamiltonian Models
By: Kaiyuan Tan , Peilun Li , Jun Wang and more
Potential Business Impact:
Helps robots predict danger, even when surprised.
The ability to predict trajectories of surrounding agents and obstacles is a crucial component in many robotic applications. Data-driven approaches are commonly adopted for state prediction in scenarios where the underlying dynamics are unknown. However, the performance, reliability, and uncertainty of data-driven predictors become compromised when encountering out-of-distribution observations relative to the training data. In this paper, we introduce a Plug-and-Play Physics-Informed Machine Learning (PnP-PIML) framework to address this challenge. Our method employs conformal prediction to identify outlier dynamics and, in that case, switches from a nominal predictor to a physics-consistent model, namely distributed Port-Hamiltonian systems (dPHS). We leverage Gaussian processes to model the energy function of the dPHS, enabling not only the learning of system dynamics but also the quantification of predictive uncertainty through its Bayesian nature. In this way, the proposed framework produces reliable physics-informed predictions even for the out-of-distribution scenarios.
Similar Papers
Uncertainties in Physics-informed Inverse Problems: The Hidden Risk in Scientific AI
Computational Physics
Finds hidden rules in science using smart computers.
Physics-informed machine learning: A mathematical framework with applications to time series forecasting
Machine Learning (Stat)
Teaches computers to predict energy use.
Physics-informed Modularized Neural Network for Advanced Building Control by Deep Reinforcement Learning
Systems and Control
Saves energy by teaching computers to control buildings.