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Examining the Capability of Machine Learning Methods for Unraveling Ocean Dynamics from Long-Range M-Sequence Data
Conference proceeding   Peer reviewed

Examining the Capability of Machine Learning Methods for Unraveling Ocean Dynamics from Long-Range M-Sequence Data

Andrew Christensen, Timothy Linhardt, Ananya Sen Gupta, Ivars Kirsteins, Nicholas Durofchalk and Kay L. Gemba
Oceans (New York. Online), pp.1-5
09/23/2024
DOI: 10.1109/OCEANS55160.2024.10754099

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Abstract

Machine Learning Mathematical Models Complex Auto encoder Complexity theory Dynamic Mode Decomposition Encoding LoRa Monitoring Ocean dynamics Oceans

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