Statistical Analysis and Method to Propagate the Impact of Measurement Uncertainty on Dynamic Mode Decomposition

Pooja Algikar, Pranav Sharma, Marcos Netto, Lamine Mili

Research output: Contribution to conferencePaper

Abstract

We apply random matrix theory to study the impact of measurement uncertainty on dynamic mode decomposition. Specifically, when the measurements follow a normal probability density function, we show how the moments of that density propagate through the dynamic mode decomposition. While we focus on the first and second moments, the analytical expressions we derive are general and can be extended to higher-order moments. Furthermore, the proposed numerical method for propagating uncertainty is agnostic of specific dynamic mode decomposition formulations. Of particular relevance, the estimated second moments provide confidence bounds that may be used as a metric of trustworthiness, that is, how much one can rely on a finite-dimensional linear operator to represent an underlying dynamical system. We perform numerical experiments on two canonical systems and verify the estimated confidence levels by comparing the moments with those obtained from Monte Carlo simulations.
Original languageAmerican English
Pages4373-4379
Number of pages7
DOIs
StatePublished - 2025
EventControl and Decision Conference (CDC) - Milan, italy
Duration: 16 Dec 202419 Dec 2024

Conference

ConferenceControl and Decision Conference (CDC)
CityMilan, italy
Period16/12/2419/12/24

NREL Publication Number

  • NREL/CP-5D00-88989

Keywords

  • dynamic mode decomposition
  • Koopman operator
  • measurement uncertainty
  • uncertainty quantification

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