A review of shape-morphing solutions and evolutional neural networks for spatiotemporal dynamics
Mohammad Farazmand

TL;DR
This paper reviews shape-morphing solutions and evolutional neural networks for modeling complex spatiotemporal PDE dynamics, emphasizing their adaptability, scalability, and recent theoretical and computational advances.
Contribution
It provides a comprehensive survey of recent developments in shape-morphing solutions and evolutional neural networks, highlighting their applications and open research challenges.
Findings
SMS are effective for reduced-order modeling of multiscale systems.
Evolutional neural networks adapt basis functions over time.
The survey identifies key open problems in the field.
Abstract
Shape-morphing solutions (SMS) refer to a class of approximate solutions of partial differential equations (PDEs) with the distinguishing feature that they depend nonlinearly on a set of time-dependent parameters. They generalize Galerkin truncations by allowing the basis (or trial functions) to evolve in time in order to adapt to the solution of the PDE. As such, SMS are particularly suitable for reduced-order modeling as well as high fidelity simulation of multiscale systems which exhibit localized time-dependent features, such as vortices, dispersive wave packets, and shocks. Furthermore, being mesh-free, SMS is scalable for solving PDEs in higher spatial dimensions. As a special case, SMS allows the approximation of the PDE's solution by a neural network whose weights and biases depend on time. Such neural networks are known as evolutional neural networks or neural Galerkin schemes.…
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Taxonomy
TopicsModel Reduction and Neural Networks · Nonlinear Dynamics and Pattern Formation · Neural Networks and Reservoir Computing
