2021
DOI: 10.48550/arxiv.2106.15091
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The Effect of Sensor Fusion on Data-Driven Learning of Koopman Operators

Shara Balakrishnan,
Aqib Hasnain,
Rob Egbert
et al.

Abstract: Dictionary methods for system identification typically rely on one set of measurements to learn governing dynamics of a system. In this paper, we investigate how fusion of output measurements with state measurements affects the dictionary selection process in Koopman operator learning problems. While prior methods use dynamical conjugacy to show a direct link between Koopman eigenfunctions in two distinct data spaces (measurement channels), we explore the specific case where output measurements are nonlinear, … Show more

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