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Main Authors: Majumdar, Abhigyan, Mojahed, Navid, Nazari, Shima
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2504.00304
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author Majumdar, Abhigyan
Mojahed, Navid
Nazari, Shima
author_facet Majumdar, Abhigyan
Mojahed, Navid
Nazari, Shima
contents Koopman Operator Theory has opened the doors to data-driven learning of globally linear representations of complex nonlinear systems. However, current methodologies for Koopman Operator discovery struggle with uncertainty quantification and the dependency on a finite dictionary of heuristically chosen observable functions. We leverage Gaussian Process Regression (GPR) to learn a probabilistic Koopman linear model from data, while removing the need for heuristic observable specification. We present inverted Gaussian Process optimization based Koopman operator learning (iGPK), an automatic differentiation-based approach to simultaneously learn the observable-operator combination. Our numerical results show that the iGPK method is able to learn complex nonlinearities from simulation data while being resilient to measurement noise in the training data and consistently encapsulating the ground truth in the predictive distribution.
format Preprint
id arxiv_https___arxiv_org_abs_2504_00304
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Inverted Gaussian Process Optimization for Probabilistic Koopman Operator Discovery
Majumdar, Abhigyan
Mojahed, Navid
Nazari, Shima
Systems and Control
Koopman Operator Theory has opened the doors to data-driven learning of globally linear representations of complex nonlinear systems. However, current methodologies for Koopman Operator discovery struggle with uncertainty quantification and the dependency on a finite dictionary of heuristically chosen observable functions. We leverage Gaussian Process Regression (GPR) to learn a probabilistic Koopman linear model from data, while removing the need for heuristic observable specification. We present inverted Gaussian Process optimization based Koopman operator learning (iGPK), an automatic differentiation-based approach to simultaneously learn the observable-operator combination. Our numerical results show that the iGPK method is able to learn complex nonlinearities from simulation data while being resilient to measurement noise in the training data and consistently encapsulating the ground truth in the predictive distribution.
title Inverted Gaussian Process Optimization for Probabilistic Koopman Operator Discovery
topic Systems and Control
url https://arxiv.org/abs/2504.00304