Homotopy-based training of NeuralODEs for accurate dynamics discovery

10/04/2022
by   Joon-Hyuk Ko, et al.
0

Conceptually, Neural Ordinary Differential Equations (NeuralODEs) pose an attractive way to extract dynamical laws from time series data, as they are natural extensions of the traditional differential equation-based modeling paradigm of the physical sciences. In practice, NeuralODEs display long training times and suboptimal results, especially for longer duration data where they may fail to fit the data altogether. While methods have been proposed to stabilize NeuralODE training, many of these involve placing a strong constraint on the functional form the trained NeuralODE can take that the actual underlying governing equation does not guarantee satisfaction. In this work, we present a novel NeuralODE training algorithm that leverages tools from the chaos and mathematical optimization communities - synchronization and homotopy optimization - for a breakthrough in tackling the NeuralODE training obstacle. We demonstrate architectural changes are unnecessary for effective NeuralODE training. Compared to the conventional training methods, our algorithm achieves drastically lower loss values without any changes to the model architectures. Experiments on both simulated and real systems with complex temporal behaviors demonstrate NeuralODEs trained with our algorithm are able to accurately capture true long term behaviors and correctly extrapolate into the future.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
11/05/2022

Discovering ordinary differential equations that govern time-series

Natural laws are often described through differential equations yet find...
research
03/08/2020

Progressive Growing of Neural ODEs

Neural Ordinary Differential Equations (NODEs) have proven to be a power...
research
07/17/2021

STRODE: Stochastic Boundary Ordinary Differential Equation

Perception of time from sequentially acquired sensory inputs is rooted i...
research
07/23/2021

Forecasting the outcome of spintronic experiments with Neural Ordinary Differential Equations

Deep learning has an increasing impact to assist research, allowing, for...
research
05/11/2020

Revealing hidden dynamics from time-series data by ODENet

To understand the hidden physical concepts from observed data is the mos...
research
10/01/2022

FINDE: Neural Differential Equations for Finding and Preserving Invariant Quantities

Many real-world dynamical systems are associated with first integrals (a...

Please sign up or login with your details

Forgot password? Click here to reset