Geometry-informed dynamic mode decomposition in origami dynamics
Origami structures often serve as the building block of mechanical systems due to their rich static and dynamic behaviors. Experimental observation and theoretical modeling of origami dynamics have been reported extensively, whereas the data-driven modeling of origami dynamics is still challenging d...
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Zusammenfassung: | Origami structures often serve as the building block of mechanical systems
due to their rich static and dynamic behaviors. Experimental observation and
theoretical modeling of origami dynamics have been reported extensively,
whereas the data-driven modeling of origami dynamics is still challenging due
to the intrinsic nonlinearity of the system. In this study, we show how the
dynamic mode decomposition (DMD) method can be enhanced by integrating geometry
information of the origami structure to model origami dynamics in an efficient
and accurate manner. In particular, an improved version of DMD with control,
that we term geometry-informed dynamic mode decomposition~(giDMD), is developed
and evaluated on the origami chain and dual Kresling origami structure to
reveal the efficacy and interpretability. We show that giDMD can accurately
predict the dynamics of an origami chain across frequencies, where the
topological boundary state can be identified by the characteristics of giDMD.
Moreover, the periodic intrawell motion can be accurately predicted in the dual
origami structure. The type of dynamics in the dual origami structure can also
be identified. The model learned by the giDMD also reveals the influential
geometrical parameters in the origami dynamics, indicating the interpretability
of this method. The accurate prediction of chaotic dynamics remains a challenge
for the method. Nevertheless, we expect that the proposed giDMD approach will
be helpful towards the prediction and identification of dynamics in complex
origami structures, while paving the way to the application to a wider variety
of lightweight and deployable structures. |
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DOI: | 10.48550/arxiv.2303.04323 |