Data-driven identification of port-Hamiltonian DAE systems by Gaussian processes
- URL: http://arxiv.org/abs/2406.18726v1
- Date: Wed, 26 Jun 2024 19:51:53 GMT
- Title: Data-driven identification of port-Hamiltonian DAE systems by Gaussian processes
- Authors: Peter Zaspel, Michael Günther,
- Abstract summary: Port-Hamiltonian systems (pHS) allow for a structure-preserving modeling of dynamical systems.
Some subsystems do not allow for a physical pHS description, as (a) this is not available or (b) too expensive.
Here, data-driven approaches can be used to deliver a pHS for such subsystems, which can then be coupled to the other subsystems in a structure-preserving way.
- Score: 1.1579069207536392
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Port-Hamiltonian systems (pHS) allow for a structure-preserving modeling of dynamical systems. Coupling pHS via linear relations between input and output defines an overall pHS, which is structure preserving. However, in multiphysics applications, some subsystems do not allow for a physical pHS description, as (a) this is not available or (b) too expensive. Here, data-driven approaches can be used to deliver a pHS for such subsystems, which can then be coupled to the other subsystems in a structure-preserving way. In this work, we derive a data-driven identification approach for port-Hamiltonian differential algebraic equation (DAE) systems. The approach uses input and state space data to estimate nonlinear effort functions of pH-DAEs. As underlying technique, we us (multi-task) Gaussian processes. This work thereby extends over the current state of the art, in which only port-Hamiltonian ordinary differential equation systems could be identified via Gaussian processes. We apply this approach successfully to two applications from network design and constrained multibody system dynamics, based on pH-DAE system of index one and three, respectively.
Related papers
- Data-driven identification of latent port-Hamiltonian systems [0.0]
We present a data-driven system identification framework that derives models in the port-Hamiltonian (pH) formulation.
This formulation is suitable for multi-physical systems while guaranteeing the useful system theoretical properties of passivity and stability.
arXiv Detail & Related papers (2024-08-15T14:42:28Z) - Decoherence time control by interconnection for finite-level quantum
memory systems [0.7252027234425334]
This paper is concerned with open quantum systems whose dynamic variables have an algebraic structure.
The Hamiltonian and the operators of coupling the system to the external bosonic fields depend linearly on the system variables.
We consider the decoherence time over the energy parameters of the system and obtain a condition under which the zero Hamiltonian provides a suboptimal solution.
arXiv Detail & Related papers (2023-11-04T01:21:55Z) - Gaussian Process Port-Hamiltonian Systems: Bayesian Learning with
Physics Prior [17.812064311297117]
Data-driven approaches achieve remarkable results for the modeling of complex dynamics based on collected data.
These models often neglect basic physical principles which determine the behavior of any real-world system.
We propose a physics-informed Bayesian learning approach with uncertainty quantification.
arXiv Detail & Related papers (2023-05-15T20:59:41Z) - Formal Controller Synthesis for Markov Jump Linear Systems with
Uncertain Dynamics [64.72260320446158]
We propose a method for synthesising controllers for Markov jump linear systems.
Our method is based on a finite-state abstraction that captures both the discrete (mode-jumping) and continuous (stochastic linear) behaviour of the MJLS.
We apply our method to multiple realistic benchmark problems, in particular, a temperature control and an aerial vehicle delivery problem.
arXiv Detail & Related papers (2022-12-01T17:36:30Z) - $Φ$-DVAE: Physics-Informed Dynamical Variational Autoencoders for Unstructured Data Assimilation [3.2873782624127843]
We develop a physics-informed dynamical variational autoencoder ($Phi$-DVAE) to embed diverse data streams into time-evolving physical systems.
Our approach combines a standard, possibly nonlinear, filter for the latent state-space model and a VAE, to assimilate the unstructured data into the latent dynamical system.
A variational Bayesian framework is used for the joint estimation of the encoding, latent states, and unknown system parameters.
arXiv Detail & Related papers (2022-09-30T17:34:48Z) - Port-Hamiltonian Neural Networks with State Dependent Ports [58.720142291102135]
We stress-test the method on both simple mass-spring systems and more complex and realistic systems with several internal and external forces.
Port-Hamiltonian neural networks can be extended to larger dimensions with state-dependent ports.
We propose a symmetric high-order integrator for improved training on sparse and noisy data.
arXiv Detail & Related papers (2022-06-06T14:57:25Z) - A Latent Restoring Force Approach to Nonlinear System Identification [0.0]
This work suggests an approach based on Bayesian filtering to extract and identify the contribution of an unknown nonlinear term in the system.
The approach is demonstrated to be effective in both a simulated case study and on an experimental benchmark dataset.
arXiv Detail & Related papers (2021-09-22T12:21:16Z) - Multi-objective discovery of PDE systems using evolutionary approach [77.34726150561087]
In the paper, a multi-objective co-evolution algorithm is described.
The single equations within the system and the system itself are evolved simultaneously to obtain the system.
In contrast to the single vector equation, a component-wise system is more suitable for expert interpretation and, therefore, for applications.
arXiv Detail & Related papers (2021-03-11T15:37:52Z) - Linear embedding of nonlinear dynamical systems and prospects for
efficient quantum algorithms [74.17312533172291]
We describe a method for mapping any finite nonlinear dynamical system to an infinite linear dynamical system (embedding)
We then explore an approach for approximating the resulting infinite linear system with finite linear systems (truncation)
arXiv Detail & Related papers (2020-12-12T00:01:10Z) - Identification of Probability weighted ARX models with arbitrary domains [75.91002178647165]
PieceWise Affine models guarantees universal approximation, local linearity and equivalence to other classes of hybrid system.
In this work, we focus on the identification of PieceWise Auto Regressive with eXogenous input models with arbitrary regions (NPWARX)
The architecture is conceived following the Mixture of Expert concept, developed within the machine learning field.
arXiv Detail & Related papers (2020-09-29T12:50:33Z) - Active Learning for Nonlinear System Identification with Guarantees [102.43355665393067]
We study a class of nonlinear dynamical systems whose state transitions depend linearly on a known feature embedding of state-action pairs.
We propose an active learning approach that achieves this by repeating three steps: trajectory planning, trajectory tracking, and re-estimation of the system from all available data.
We show that our method estimates nonlinear dynamical systems at a parametric rate, similar to the statistical rate of standard linear regression.
arXiv Detail & Related papers (2020-06-18T04:54:11Z)
This list is automatically generated from the titles and abstracts of the papers in this site.
This site does not guarantee the quality of this site (including all information) and is not responsible for any consequences.