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Robust Parameter and State Estimation in Multiscale Neuronal Systems Using Physics-Informed Neural Networks
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Robust Parameter and State Estimation in Multiscale Neuronal Systems Using Physics-Informed Neural Networks

Changliang Wei, Yangyang Wang and Xueyu Zhu
ArXiv.org
Cornell University
02/27/2026
DOI: 10.48550/arxiv.2603.08742
url
https://doi.org/10.48550/arxiv.2603.08742View
Preprint (Author's original)This preprint has not been evaluated by subject experts through peer review. Preprints may undergo extensive changes and/or become peer-reviewed journal articles. Open Access

Abstract

Inferring biophysical parameters and hidden state variables from partial and noisy observations is a fundamental challenge in computational neuroscience. This problem is particularly difficult for fast - slow spiking and bursting models, where strong nonlinearities, multiscale dynamics, and limited observational data often lead to severe sensitivity to initial parameter guesses and convergence failure in the methods replying on the traditional numerical forward solvers. In this work, we developed a physics-informed neural network (PINN) framework for the joint reconstruction of unobserved state variables and the estimation of unknown biophysical parameters in neuronal models. We demonstrate the effectiveness of the method on biophysical neuron models, including the Morris-Lecar model across multiple spiking and bursting regimes and a respiratory model neuron. The method requires only partial voltage observations over short observation windows and remains robust even when initialized with non-informative parameter guesses. These results suggest that PINN can deliver robust and accurate parameter inference and state reconstruction, providing a promising alternative for inverse problems in multiscale neuronal dynamics, where traditional techniques often struggle.
Computer Science - Learning Computer Science - Neural and Evolutionary Computing Computer Science - Numerical Analysis Mathematics - Numerical Analysis Statistics - Machine Learning

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