yriyazi/Koopman-Operator-and-Deep-Neural-Networks-ISAV2023
In this work, we present a novel approach that combines the power of Koopman operators and deep neural networks to generate a linear representation of the Duffing oscillator. This approach enables effective parameter estimation and accurate prediction of the oscillator's future behavior.
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Dec 01, 2025
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