Lagrangian Density Space-Time Deep Neural Network Topology

06/30/2022
by   Bhupesh Bishnoi, et al.
0

As a network-based functional approximator, 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. The prototypical network respects the fundamental conservation laws of nature through the succinctly described Lagrangian and Hamiltonian density of the system by a given data-set of generalized nonlinear partial differential equations. The objective is to parameterize the Lagrangian density over a neural network and directly learn from it through data instead of hand-crafting an exact time-dependent "Action solution" of Lagrangian density for the physical system. With this novel approach, can understand and open up the information inference aspect of the "Black-box deep machine learning representation" for the physical dynamics of nature by constructing custom-tailored network interconnect topologies, activation, and loss/cost functions based on the underlying physical differential operators. This article will discuss statistical physics interpretation of neural networks in the Lagrangian and Hamiltonian domains.

READ FULL TEXT
research
02/09/2023

Discovering interpretable Lagrangian of dynamical systems from data

A complete understanding of physical systems requires models that are ac...
research
11/09/2017

A Separation Principle for Control in the Age of Deep Learning

We review the problem of defining and inferring a "state" for a control ...
research
01/20/2018

Deep Hidden Physics Models: Deep Learning of Nonlinear Partial Differential Equations

A long-standing problem at the interface of artificial intelligence and ...
research
05/26/2023

Lagrangian Flow Networks for Conservation Laws

We introduce Lagrangian Flow Networks (LFlows) for modeling fluid densit...
research
10/04/2021

Learning to Solve the AC Optimal Power Flow via a Lagrangian Approach

Using deep neural networks to predict the solutions of AC optimal power ...
research
10/06/2020

Learning effective physical laws for generating cosmological hydrodynamics with Lagrangian Deep Learning

The goal of generative models is to learn the intricate relations betwee...
research
02/12/2021

A Differentiable Contact Model to Extend Lagrangian and Hamiltonian Neural Networks for Modeling Hybrid Dynamics

The incorporation of appropriate inductive bias plays a critical role in...

Please sign up or login with your details

Forgot password? Click here to reset