DSLGNAQMFeb 27, 2025

Impilict Runge-Kutta based sparse identification of governing equations in biologically motivated systems

arXiv:2502.20319v11 citationsh-index: 5
Originality Incremental advance
AI Analysis

This work addresses a long-standing problem in scientific disciplines like biology and physics for researchers needing robust data-driven modeling, though it appears incremental as it builds on existing SINDy methods.

The study tackled the challenge of identifying governing equations from noisy and scarce data by integrating implicit Runge-Kutta methods with sparse identification, resulting in a framework that outperforms conventional methods, especially under extreme data scarcity and noise conditions.

Identifying governing equations in physical and biological systems from datasets remains a long-standing challenge across various scientific disciplines, providing mechanistic insights into complex system evolution. Common methods like sparse identification of nonlinear dynamics (SINDy) often rely on precise derivative estimations, making them vulnerable to data scarcity and noise. This study presents a novel data-driven framework by integrating high order implicit Runge-Kutta methods (IRKs) with the sparse identification, termed IRK-SINDy. The framework exhibits remarkable robustness to data scarcity and noise by leveraging the lower stepsize constraint of IRKs. Two methods for incorporating IRKs into sparse regression are introduced: one employs iterative schemes for numerically solving nonlinear algebraic system of equations, while the other utilizes deep neural networks to predict stage values of IRKs. The performance of IRK-SINDy is demonstrated through numerical experiments on benchmark problems with varied dynamical behaviors, including linear and nonlinear oscillators, the Lorenz system, and biologically relevant models like predator-prey dynamics, logistic growth, and the FitzHugh-Nagumo model. Results indicate that IRK-SINDy outperforms conventional SINDy and the RK4-SINDy framework, particularly under conditions of extreme data scarcity and noise, yielding interpretable and generalizable models.

Foundations

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