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Wang, Y., & Guerrini, L. Hopf Bifurcation of the Oregonator Oscillator with Distributed Delay. Applied Mathematics and Statistics. 2024. doi: Retrieved from https://test.sciltp.com/testj/ams/article/view/385

Article

Hopf Bifurcation of the Oregonator Oscillator with Distributed Delay

Yu Wang 1,* and Luca Guerrini 2

School of Mathematics, Southeast University, Nanjing 210096, China

Department of Management, Polytechnic University of Marche, 60121 Ancona, Italy

* Correspondence: 230218180@seu.edu.cn

Received: 2 June 2024; Revised: 10 July 2024; Accepted: 30 July 2024; Published: 19 August 2024

 

Abstract: This paper investigates the bifurcation problem of the Oregonator oscillator with distributed time delay, and two cases are considered, namely weak and strong kernels. First, theoretical approaches are provided to analyze the stability properties of the equilibrium in these systems using the chain trick method. Near the positive equilibrium point, the Routh-Hurwitz criteria are employed to establish precise conditions for stability and Hopf bifurcation and determine the bifurcation direction. Additionally, this paper explores the implications of inffnite memory within a distributed delay to gain insights into the dynamic behavior. Moreover, extensive numerical simulations are conducted to support our theoretical analysis. The main simulations illustrate the bifurcation waveform and phase diagrams and reveal complex dynamic behavior, including stable and unstable oscillations.

Keywords:

distributed delay oregonator oscillator stability hopf bifurcation

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