Featurizing Koopman mode decomposition for robust forecasting

Author:

Aristoff David1ORCID,Copperman Jeremy2ORCID,Mankovich Nathan3ORCID,Davies Alexander24ORCID

Affiliation:

1. Colorado State University 1 , Fort Collins, Colorado 80523, USA

2. Oregon Health and Science University, Cancer Early Detection Advanced Research Center, Knight Cancer Institute 2 , Portland, Oregon 97201, USA

3. University of Valencia 3 , València 46010, Spain

4. Oregon Health and Science University, Division of Oncological Science, Knight Cancer Institute 4 , Portland, Oregon 97201, USA

Abstract

This article introduces an advanced Koopman mode decomposition (KMD) technique—coined Featurized Koopman Mode Decomposition (FKMD)—that uses delay embedding and a learned Mahalanobis distance to enhance analysis and prediction of high-dimensional dynamical systems. The delay embedding expands the observation space to better capture underlying manifold structures, while the Mahalanobis distance adjusts observations based on the system’s dynamics. This aids in featurizing KMD in cases where good features are not a priori known. We show that FKMD improves predictions for a high-dimensional linear oscillator, a high-dimensional Lorenz attractor that is partially observed, and a cell signaling problem from cancer research.

Funder

National Science Foundation

Conselleria de Innovación, Universidades, Ciencia y Sociedad Digital, Generalitat Valenciana

Cancer Early Detection Advanced Research Center, Knight Cancer Institute, Oregon Health and Science University

National Institutes of Health

Publisher

AIP Publishing

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