Learning High-dimensional Ionic Model Dynamics Using Fourier Neural Operators
Luca Pellegrini, Massimiliano Ghiotto, Edoardo Centofanti, Luca Franco Pavarino

TL;DR
This paper demonstrates that Fourier Neural Operators can effectively learn the complex, high-dimensional dynamics of ionic models in computational neuroscience and cardiology, outperforming traditional neural network approaches.
Contribution
The study extends previous low-dimensional results by successfully applying Fourier Neural Operators to high-dimensional ionic models, with comprehensive hyperparameter tuning and comparative analysis.
Findings
Fourier Neural Operators accurately model high-dimensional ionic dynamics.
Unconstrained models train faster than constrained ones with similar accuracy.
The approach captures complex multiscale behaviors in diverse ionic models.
Abstract
Ionic models, described by systems of stiff ordinary differential equations, are fundamental tools for simulating the complex dynamics of excitable cells in both Computational Neuroscience and Cardiology. Approximating these models using Artificial Neural Networks poses significant challenges due to their inherent stiffness, multiscale nonlinearities, and the wide range of dynamical behaviors they exhibit, including multiple equilibrium points, limit cycles, and intricate interactions. While in previous studies the dynamics of the transmembrane potential has been predicted in low dimensionality settings, in the present study we extend these results by investigating whether Fourier Neural Operators can effectively learn the evolution of all the state variables within these dynamical systems in higher dimensions. We demonstrate the effectiveness of this approach by accurately learning the…
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Taxonomy
TopicsNeural Networks and Applications · Fault Detection and Control Systems
