Port-metriplectic neural networks: thermodynamics-informed machine
learning of complex physical systems
- URL: http://arxiv.org/abs/2211.01873v1
- Date: Thu, 3 Nov 2022 15:04:27 GMT
- Title: Port-metriplectic neural networks: thermodynamics-informed machine
learning of complex physical systems
- Authors: Quercus Hern\'andez, Alberto Bad\'ias, Francisco Chinesta, El\'ias
Cueto
- Abstract summary: We develop inductive biases for the machine learning of complex physical systems based on the port-Hamiltonian formalism.
We show that the constructed networks are able to learn the physics of complex systems by parts.
- Score: 0.09332987715848712
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We develop inductive biases for the machine learning of complex physical
systems based on the port-Hamiltonian formalism. To satisfy by construction the
principles of thermodynamics in the learned physics (conservation of energy,
non-negative entropy production), we modify accordingly the port-Hamiltonian
formalism so as to achieve a port-metriplectic one. We show that the
constructed networks are able to learn the physics of complex systems by parts,
thus alleviating the burden associated to the experimental characterization and
posterior learning process of this kind of systems. Predictions can be done,
however, at the scale of the complete system. Examples are shown on the
performance of the proposed technique.
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