Transfer learning for nonlinear dynamics and its application to fluid turbulence

09/03/2020
by   Masanobu Inubushi, et al.
0

We introduce transfer learning for nonlinear dynamics, which enables efficient predictions of chaotic dynamics by utilizing a small amount of data. For the Lorenz chaos, by optimizing the transfer rate, we accomplish more accurate inference than the conventional method by an order of magnitude. Moreover, a surprisingly small amount of learning is enough to infer the energy dissipation rate of the Navier-Stokes turbulence because we can, thanks to the small-scale universality of turbulence, transfer a large amount of the knowledge learned from turbulence data at lower Reynolds number.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
07/15/2020

Visualizing Transfer Learning

We provide visualizations of individual neurons of a deep image recognit...
research
11/06/2012

Visual Transfer Learning: Informal Introduction and Literature Overview

Transfer learning techniques are important to handle small training sets...
research
08/23/2018

Transfer Learning for Estimating Causal Effects using Neural Networks

We develop new algorithms for estimating heterogeneous treatment effects...
research
08/23/2022

AniWho : A Quick and Accurate Way to Classify Anime Character Faces in Images

This paper aims to dive more deeply into various models available, inclu...
research
03/26/2023

Guided Transfer Learning

Machine learning requires exuberant amounts of data and computation. Als...
research
03/22/2022

Locally Adaptive Transfer Learning Algorithms for Large-Scale Multiple Testing

Transfer learning has enjoyed increasing popularity in a range of big da...
research
04/11/2023

Conditional Adapters: Parameter-efficient Transfer Learning with Fast Inference

We propose Conditional Adapter (CoDA), a parameter-efficient transfer le...

Please sign up or login with your details

Forgot password? Click here to reset