A numerical framework for computing steady states of size-structured population models and their stability
Inom Mirzaev, David M. Bortz

TL;DR
This paper introduces a numerical framework using the Trotter-Kato Theorem to approximate and analyze steady states and their stability in size-structured population models, applicable to both linear and nonlinear biological systems.
Contribution
The authors develop a novel numerical method that reduces complex evolution equations to ODE systems for steady state analysis, with an open-source implementation.
Findings
Converges to known steady states in linear models
Extends to nonlinear population balance equations
Provides insights into stability regions of steady states
Abstract
Structured population models are a class of general evolution equations which are widely used in the study of biological systems. Many theoretical methods are available for establishing existence and stability of steady states of general evolution equations. However, except for very special cases, finding an analytical form of stationary solutions for evolution equations is a challenging task. In the present paper, we develop a numerical framework for computing approximations to stationary solutions of general evolution equations, which can also be used to produce existence and stability regions for steady states. In particular, we use the Trotter-Kato Theorem to approximate the infinitesimal generator of an evolution equation on a finite dimensional space, which in turn reduces the evolution equation into a system of ordinary differential equations. Consequently, we approximate and…
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Taxonomy
TopicsMathematical and Theoretical Epidemiology and Ecology Models · Stochastic processes and statistical mechanics · Evolution and Genetic Dynamics
