(470f) Learning the Dynamics of Coupled Oscillator Systems through the Discovery of Emergent PDEs Via Artificial Neural Networks and Manifold Learning
AIChE Annual Meeting
2020
2020 Virtual AIChE Annual Meeting
Computing and Systems Technology Division
Data-Driven Techniques for Dynamic Modeling, Estimation and Control II
Tuesday, November 17, 2020 - 9:15am to 9:30am
We discuss the challenges and benefits of such a coarse-grained emergent PDE description â for example, the selection of appropriate boundary conditions â and present an application of this approach to Hodgkin-Huxley type coupled neurons. We also consider the case in which the model heterogeneities are unknown, and demonstrate how a manifold learning tool (Diffusion Maps) can be leveraged to identify data-driven features that are suitable for use as independent variables for our PDE methodology [1-2]. Finally, we elaborate on the technical challenge of ensuring stability for the learned dynamics, outline different approaches to tackle this problem, and contrast these with methods proposed in recent literature.
[1] Thiem, Thomas N., Kooshkbaghi, Mahdi, Bertalan, Tom, Laing, Carlo R., and Kevrekidis, Ioannis G. "Emergent spaces for coupled oscillators." arXiv preprint., 2020, arXiv:2004.06053v1.
[2] Kemeth, Felix P., et al. "An Emergent Space for Distributed Data With Hidden Internal Order Through Manifold Learning." IEEE Access, vol. 6, 2018, pp. 77402-77413.