A Bayesian framework for discovering interpretable Lagrangian of
dynamical systems from data
- URL: http://arxiv.org/abs/2310.06241v1
- Date: Tue, 10 Oct 2023 01:35:54 GMT
- Title: A Bayesian framework for discovering interpretable Lagrangian of
dynamical systems from data
- Authors: Tapas Tripura and Souvik Chakraborty
- Abstract summary: We propose an alternate framework for learning interpretable Lagrangian descriptions of physical systems.
Unlike existing neural network-based approaches, the proposed approach yields an interpretable description of Lagrangian.
- Score: 1.0878040851638
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: Learning and predicting the dynamics of physical systems requires a profound
understanding of the underlying physical laws. Recent works on learning
physical laws involve generalizing the equation discovery frameworks to the
discovery of Hamiltonian and Lagrangian of physical systems. While the existing
methods parameterize the Lagrangian using neural networks, we propose an
alternate framework for learning interpretable Lagrangian descriptions of
physical systems from limited data using the sparse Bayesian approach. Unlike
existing neural network-based approaches, the proposed approach (a) yields an
interpretable description of Lagrangian, (b) exploits Bayesian learning to
quantify the epistemic uncertainty due to limited data, (c) automates the
distillation of Hamiltonian from the learned Lagrangian using Legendre
transformation, and (d) provides ordinary (ODE) and partial differential
equation (PDE) based descriptions of the observed systems. Six different
examples involving both discrete and continuous system illustrates the efficacy
of the proposed approach.
Related papers
- Mechanistic Neural Networks for Scientific Machine Learning [58.99592521721158]
We present Mechanistic Neural Networks, a neural network design for machine learning applications in the sciences.
It incorporates a new Mechanistic Block in standard architectures to explicitly learn governing differential equations as representations.
Central to our approach is a novel Relaxed Linear Programming solver (NeuRLP) inspired by a technique that reduces solving linear ODEs to solving linear programs.
arXiv Detail & Related papers (2024-02-20T15:23:24Z) - Learning Neural Constitutive Laws From Motion Observations for
Generalizable PDE Dynamics [97.38308257547186]
Many NN approaches learn an end-to-end model that implicitly models both the governing PDE and material models.
We argue that the governing PDEs are often well-known and should be explicitly enforced rather than learned.
We introduce a new framework termed "Neural Constitutive Laws" (NCLaw) which utilizes a network architecture that strictly guarantees standard priors.
arXiv Detail & Related papers (2023-04-27T17:42:24Z) - Discovering interpretable Lagrangian of dynamical systems from data [0.0]
Recent trends in representation learning involve learning Lagrangian from data rather than the direct discovery of governing equations of motion.
We propose a novel data-driven machine-learning algorithm to automate the discovery of interpretable Lagrangian from data.
arXiv Detail & Related papers (2023-02-09T01:57:05Z) - Lagrangian Density Space-Time Deep Neural Network Topology [0.0]
We have proposed a "Lagrangian Density Space-Time Deep Neural Networks" (LDDNN) topology.
It is qualified for unsupervised training and learning to predict the dynamics of underlying physical science governed phenomena.
This article will discuss statistical physics interpretation of neural networks in the Lagrangian and Hamiltonian domains.
arXiv Detail & Related papers (2022-06-30T03:29:35Z) - Decimation technique for open quantum systems: a case study with
driven-dissipative bosonic chains [62.997667081978825]
Unavoidable coupling of quantum systems to external degrees of freedom leads to dissipative (non-unitary) dynamics.
We introduce a method to deal with these systems based on the calculation of (dissipative) lattice Green's function.
We illustrate the power of this method with several examples of driven-dissipative bosonic chains of increasing complexity.
arXiv Detail & Related papers (2022-02-15T19:00:09Z) - Structure-Preserving Learning Using Gaussian Processes and Variational
Integrators [62.31425348954686]
We propose the combination of a variational integrator for the nominal dynamics of a mechanical system and learning residual dynamics with Gaussian process regression.
We extend our approach to systems with known kinematic constraints and provide formal bounds on the prediction uncertainty.
arXiv Detail & Related papers (2021-12-10T11:09:29Z) - Supervised DKRC with Images for Offline System Identification [77.34726150561087]
Modern dynamical systems are becoming increasingly non-linear and complex.
There is a need for a framework to model these systems in a compact and comprehensive representation for prediction and control.
Our approach learns these basis functions using a supervised learning approach.
arXiv Detail & Related papers (2021-09-06T04:39:06Z) - Gaussian processes meet NeuralODEs: A Bayesian framework for learning
the dynamics of partially observed systems from scarce and noisy data [0.0]
This paper presents a machine learning framework (GP-NODE) for Bayesian systems identification from partial, noisy and irregular observations of nonlinear dynamical systems.
The proposed method takes advantage of recent developments in differentiable programming to propagate gradient information through ordinary differential equation solvers.
A series of numerical studies is presented to demonstrate the effectiveness of the proposed GP-NODE method including predator-prey systems, systems biology, and a 50-dimensional human motion dynamical system.
arXiv Detail & Related papers (2021-03-04T23:42:14Z) - Simplifying Hamiltonian and Lagrangian Neural Networks via Explicit
Constraints [49.66841118264278]
We introduce a series of challenging chaotic and extended-body systems to push the limits of current approaches.
Our experiments show that Cartesian coordinates with explicit constraints lead to a 100x improvement in accuracy and data efficiency.
arXiv Detail & Related papers (2020-10-26T13:35:16Z) - Unsupervised Learning of Lagrangian Dynamics from Images for Prediction
and Control [12.691047660244335]
We introduce a new unsupervised neural network model that learns Lagrangian dynamics from images.
The model infers Lagrangian dynamics on generalized coordinates that are simultaneously learned with a coordinate-aware variational autoencoder.
arXiv Detail & Related papers (2020-07-03T20:06:43Z) - Bayesian differential programming for robust systems identification
under uncertainty [14.169588600819546]
This paper presents a machine learning framework for Bayesian systems identification from noisy, sparse and irregular observations of nonlinear dynamical systems.
The proposed method takes advantage of recent developments in differentiable programming to propagate gradient information through ordinary differential equation solvers.
The use of sparsity-promoting priors enables the discovery of interpretable and parsimonious representations for the underlying latent dynamics.
arXiv Detail & Related papers (2020-04-15T00:51:14Z)
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.