Saved in:
Bibliographic Details
Main Authors: De Paepe, Geert, De Cruz, Lesley
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2404.18314
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866909594952925184
author De Paepe, Geert
De Cruz, Lesley
author_facet De Paepe, Geert
De Cruz, Lesley
contents In meteorology, finding similar weather patterns or analogs in historical datasets can be useful for data assimilation, forecasting, and postprocessing. In climate science, analogs in historical and climate projection data are used for attribution and impact studies. However, most of the time, those large weather and climate datasets are nearline. This means that they must be downloaded, which takes a lot of bandwidth and disk space, before the computationally expensive search can be executed. We propose a dimension reduction technique based on autoencoder (AE) neural networks to compress the datasets and perform the search in an interpretable, compressed latent space. A distance-regularized Siamese twin autoencoder (DIRESA) architecture is designed to preserve distance in latent space while capturing the nonlinearities in the datasets. Using conceptual climate models of different complexities, we show that the latent components thus obtained provide physical insight into the dominant modes of variability in the system. Compressing datasets with DIRESA reduces the online storage and keeps the latent components uncorrelated, while the distance (ordering) preservation and reconstruction fidelity robustly outperform Principal Component Analysis (PCA) and other dimension reduction techniques such as UMAP or variational autoencoders.
format Preprint
id arxiv_https___arxiv_org_abs_2404_18314
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle DIRESA, a distance-preserving nonlinear dimension reduction technique based on regularized autoencoders
De Paepe, Geert
De Cruz, Lesley
Machine Learning
Chaotic Dynamics
Atmospheric and Oceanic Physics
In meteorology, finding similar weather patterns or analogs in historical datasets can be useful for data assimilation, forecasting, and postprocessing. In climate science, analogs in historical and climate projection data are used for attribution and impact studies. However, most of the time, those large weather and climate datasets are nearline. This means that they must be downloaded, which takes a lot of bandwidth and disk space, before the computationally expensive search can be executed. We propose a dimension reduction technique based on autoencoder (AE) neural networks to compress the datasets and perform the search in an interpretable, compressed latent space. A distance-regularized Siamese twin autoencoder (DIRESA) architecture is designed to preserve distance in latent space while capturing the nonlinearities in the datasets. Using conceptual climate models of different complexities, we show that the latent components thus obtained provide physical insight into the dominant modes of variability in the system. Compressing datasets with DIRESA reduces the online storage and keeps the latent components uncorrelated, while the distance (ordering) preservation and reconstruction fidelity robustly outperform Principal Component Analysis (PCA) and other dimension reduction techniques such as UMAP or variational autoencoders.
title DIRESA, a distance-preserving nonlinear dimension reduction technique based on regularized autoencoders
topic Machine Learning
Chaotic Dynamics
Atmospheric and Oceanic Physics
url https://arxiv.org/abs/2404.18314