11:30 AM - 11:45 AM
[MGI27-16] Spatiotemporal data analysis with dynamic mode decomposition
★Invited Papers
Keywords:Data-driven science, Machine learning
Dynamic mode decomposition (DMD) is a method for estimating a modal representation of the underlying dynamics from spatiotemporal data, and has been recently applied to a variety of scientific fields. In this talk, I give a brief review on the principles of DMD, and describe the recent development of the related methods with several applications to scientific data.