Lift & Learn: Analyzable, Generalizable Data-Driven Models for Nonlinear PDEs
Elizabeth Qian (MIT)
Abstract: We present Lift & Learn, a physics-informed method for learning low-dimensional models for nonlinear PDEs. The method exploits knowledge of a system’s governing equations to identify a coordinate transformation in which the system dynamics have quadratic structure. This transformation is called a lifting map because it often adds auxiliary variables to the system state. The lifting map is applied to data obtained by evaluating a model for the original nonlinear system. This lifted data is projected onto its leading principal components, and low-dimensional linear and quadratic matrix operators are fit to the lifted reduced data using a least-squares operator inference procedure. Analysis of our method shows that the Lift & Learn models are able to capture the system physics in the lifted coordinates at least as accurately as traditional intrusive model reduction approaches. This preservation of system physics makes the Lift & Learn models robust to changes in inputs. Numerical experiments on the FitzHugh-Nagumo neuron activation model and the compressible Euler equations demonstrate the generalizability of our model.
machine learningdynamical systemsapplied physics
Audience: researchers in the topic
Workshop on Scientific-Driven Deep Learning (SciDL)
Series comments: When: 8:00-14:30pm (PST) on Wednesday July 1, 2020 Where: berkeley.zoom.us/j/95609096856 Details: scidl.netlify.app/
| Organizers: | N. Benjamin Erichson*, Michael Mahoney, Steven Brunton, Nathan Kutz |
| *contact for this listing |
