Physics Guided Deep Learning for Spatiotemporal Dynamics
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While deep learning has shown tremendous success in many domains, it remains a grand challenge to incorporate physical principles into such models for applications in physical sciences. In this talk, I will discuss (1) Turbulent-Flow Net: a hybrid approach for predicting turbulent flow by marrying well-established computational fluid dynamics techniques with deep learning (2) Equivariant Net: a systematic approach to improve generalization of spatiotemporal models by incorporating symmetries into deep neural networks. I will demonstrate the advantage of our approaches to a variety of physical systems including fluid and traffic dynamics.
Place: Zoom https://arizona.zoom.us/j/91826900125 Password: "Locute"