Port-Hamiltonian Neural Networks for Learning Explicit Time-Dependent Dynamical Systems

07/16/2021
by   Shaan Desai, et al.
0

Accurately learning the temporal behavior of dynamical systems requires models with well-chosen learning biases. Recent innovations embed the Hamiltonian and Lagrangian formalisms into neural networks and demonstrate a significant improvement over other approaches in predicting trajectories of physical systems. These methods generally tackle autonomous systems that depend implicitly on time or systems for which a control signal is known apriori. Despite this success, many real world dynamical systems are non-autonomous, driven by time-dependent forces and experience energy dissipation. In this study, we address the challenge of learning from such non-autonomous systems by embedding the port-Hamiltonian formalism into neural networks, a versatile framework that can capture energy dissipation and time-dependent control forces. We show that the proposed port-Hamiltonian neural network can efficiently learn the dynamics of nonlinear physical systems of practical interest and accurately recover the underlying stationary Hamiltonian, time-dependent force, and dissipative coefficient. A promising outcome of our network is its ability to learn and predict chaotic systems such as the Duffing equation, for which the trajectories are typically hard to learn.

READ FULL TEXT
research
09/29/2019

Symplectic Recurrent Neural Networks

We propose Symplectic Recurrent Neural Networks (SRNNs) as learning algo...
research
09/03/2023

Separable Hamiltonian Neural Networks

The modelling of dynamical systems from discrete observations is a chall...
research
03/15/2021

Tomography of time-dependent quantum spin networks with machine learning

Interacting spin networks are fundamental to quantum computing. Data-bas...
research
06/02/2020

Data-driven learning of non-autonomous systems

We present a numerical framework for recovering unknown non-autonomous d...
research
07/31/2021

Statistical learning method for predicting density-matrix based electron dynamics

We develop a statistical method to learn a molecular Hamiltonian matrix ...
research
03/05/2022

Koopman operator for time-dependent reliability analysis

Time-dependent structural reliability analysis of nonlinear dynamical sy...
research
10/28/2020

Forecasting Hamiltonian dynamics without canonical coordinates

Conventional neural networks are universal function approximators, but b...

Please sign up or login with your details

Forgot password? Click here to reset