(299h) PDE+Pinn: Neural Identification and Solution of Partial Differential Equations on Partial Data
AIChE Annual Meeting
2020
2020 Virtual AIChE Annual Meeting
Computing and Systems Technology Division
Data-Driven Techniques for Dynamic Modeling, Estimation and Control I
Monday, November 16, 2020 - 9:30am to 9:45am
We begin the exposition by describing our method for extracting a PDE from space-time data, with a sample application to learning the Kuramoto-Sivashiksky equation and the viscous Burgers equation. We then proceed to show how this network can be used in the PINN framework to produce long-range interpolations without recourse to a known governing PDE. In both parts, we additionally describe some relevant computational implementation details.
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