2022
DOI: 10.48550/arxiv.2203.15706
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Stabilized Neural Ordinary Differential Equations for Long-Time Forecasting of Dynamical Systems

Abstract: In data-driven modeling of spatiotemporal phenomena careful consideration often needs to be made in capturing the dynamics of the high wavenumbers. This problem becomes especially challenging when the system of interest exhibits shocks or chaotic dynamics. We present a data-driven modeling method that accurately captures shocks and chaotic dynamics by proposing a novel architecture, stabilized neural ordinary differential equation (ODE). In our proposed architecture, we learn the right-hand-side (RHS) of an OD… Show more

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