2023
DOI: 10.1063/5.0160561
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Spectral domain graph convolutional deep neural network for predicting unsteady and nonlinear flows

Jun Wen,
Wei Zhu,
Xiyu Jia
et al.

Abstract: Mode decomposition methods, such as proper orthogonal decomposition and dynamic mode decomposition (DMD), have introduced a novel data-driven approach for flow prediction. These methods aim to identify a collection of modes that capture the essential flow features. Subsequently, the flow field data are projected onto these modes to reconstruct and predict the evolution of the flow field. However, due to their inherent linearity, mode decomposition methods are limited in effectively handling unsteady and nonlin… Show more

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