Learning the Delay Using Neural Delay Differential Equations

04/03/2023
by   Maria Oprea, et al.
0

The intersection of machine learning and dynamical systems has generated considerable interest recently. Neural Ordinary Differential Equations (NODEs) represent a rich overlap between these fields. In this paper, we develop a continuous time neural network approach based on Delay Differential Equations (DDEs). Our model uses the adjoint sensitivity method to learn the model parameters and delay directly from data. Our approach is inspired by that of NODEs and extends earlier neural DDE models, which have assumed that the value of the delay is known a priori. We perform a sensitivity analysis on our proposed approach and demonstrate its ability to learn DDE parameters from benchmark systems. We conclude our discussion with potential future directions and applications.

READ FULL TEXT
research
04/11/2023

Neural Delay Differential Equations: System Reconstruction and Image Classification

Neural Ordinary Differential Equations (NODEs), a framework of continuou...
research
01/07/2022

Forecasting emissions through Kaya identity using Neural Ordinary Differential Equations

Starting from the Kaya identity, we used a Neural ODE model to predict t...
research
11/26/2021

Asian Giant Hornet Control based on Image Processing and Biological Dispersal

The Asian giant hornet (AGH) appeared in Washington State appears to hav...
research
12/12/2020

Delay Differential Neural Networks

Neural ordinary differential equations (NODEs) treat computation of inte...
research
09/19/2017

Synthesizing SystemC Code from Delay Hybrid CSP

Delay is omnipresent in modern control systems, which can prompt oscilla...
research
04/11/2021

Weak Form Generalized Hamiltonian Learning

We present a method for learning generalized Hamiltonian decompositions ...
research
11/08/2020

Learning Neural Event Functions for Ordinary Differential Equations

The existing Neural ODE formulation relies on an explicit knowledge of t...

Please sign up or login with your details

Forgot password? Click here to reset