arXiv Analytics

Sign in

arXiv:2208.07746 [physics.flu-dyn]AbstractReferencesReviewsResources

Linear and Nonlinear Dimensionality Reduction from Fluid Mechanics to Machine Learning

Miguel A. Mendez

Published 2022-08-16Version 1

Dimensionality reduction is the essence of many data processing problems, including filtering, data compression, reduced-order modeling and pattern analysis. While traditionally tackled using linear tools in the fluid dynamics community, nonlinear tools from machine learning are becoming increasingly popular. This article, halfway between a review and a tutorial, introduces a general framework for linear and nonlinear dimensionality reduction techniques. Differences and links between autoencoders and manifold learning methods are highlighted, and popular nonlinear techniques such as kernel Principal Component Analysis (kPCA), isometric feature learning (ISOMAPs) and Locally Linear Embedding (LLE) are placed in this framework. These algorithms are benchmarked in three classic problems: 1) filtering, 2) identification of oscillatory patterns, and 3) data compression. Their performances are compared against the traditional Proper Orthogonal Decomposition (POD) to provide a perspective on their diffusion in fluid dynamics.

Related articles: Most relevant | Search more
arXiv:1911.06613 [physics.flu-dyn] (Published 2019-11-15)
A geometric look at momentum flux and stress in fluid mechanics
arXiv:1910.11994 [physics.flu-dyn] (Published 2019-10-26)
Data compression for turbulence databases using spatio-temporal sub-sampling and local re-simulation
On the invariant formulation of fluid mechanics