Compositional Learning of Dynamical System Models Using Port-Hamiltonian Neural Networks
Cyrus Neary, Ufuk Topcu

TL;DR
This paper introduces a modular framework for learning composite dynamical system models using port-Hamiltonian neural networks, enabling accurate predictions of complex systems from data on simpler subsystems.
Contribution
It proposes a novel compositional neural network approach based on port-Hamiltonian systems, with algorithms for training, composing, and learning the interconnection structure from data.
Findings
Accurate composition of models with minimal data
Models exhibit port-Hamiltonian properties like cyclo-passivity
Framework applicable to nonlinear energy systems
Abstract
Many dynamical systems -- from robots interacting with their surroundings to large-scale multiphysics systems -- involve a number of interacting subsystems. Toward the objective of learning composite models of such systems from data, we present i) a framework for compositional neural networks, ii) algorithms to train these models, iii) a method to compose the learned models, iv) theoretical results that bound the error of the resulting composite models, and v) a method to learn the composition itself, when it is not known a priori. The end result is a modular approach to learning: neural network submodels are trained on trajectory data generated by relatively simple subsystems, and the dynamics of more complex composite systems are then predicted without requiring additional data generated by the composite systems themselves. We achieve this compositionality by representing the system…
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Taxonomy
TopicsModel Reduction and Neural Networks · Neural Networks and Applications · Control and Stability of Dynamical Systems
