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Emergent spatiotemporal complexity from reaction-diffusion hybridization: A new model for multistable pattern dynamics

Kolade M. OwolabiDepartment of Mathematical Sciences, Federal University of Technology Akure, Akure, PMB 704, Ondo State, NigeriaAli AkgülApplied Science Research Center. Applied Science Private University, Amman, JordanFarkhod AlisherovSchool of Exact Sciences, National Pedagogical University of Uzbekistan, Tashkent, Uzbekistan
Nonlinear Dynamicsjournal2026en
ABI

Abstract

Abstract This paper introduces and analyzes a novel hybrid reaction–diffusion model that integrates key nonlinear features from the BVAM, Schnakenberg, and Gray–Scott systems. The proposed model captures both local activation and long-range inhibition through a complex interplay of autocatalytic and cross-inhibitory kinetics. We perform a detailed mathematical analysis including linear stability, Turing instability criteria, and Lyapunov exponent computations to characterize the onset of spatiotemporal complexity. Numerical simulations in both one and two spatial dimensions reveal a diverse spectrum of dynamic behaviors, ranging from Turing-type stationary patterns (spots, stripes, and labyrinths) to high-dimensional chaotic oscillations. The presence of positive Lyapunov exponents and a non-integer Kaplan–Yorke dimension confirms the emergence of deterministic chaos in both time and space. All simulations were conducted using a custom MATLAB implementation based on the Split-Step Fourier Method (SSFM). The results establish the hybrid model as a unifying framework capable of capturing rich pattern formation dynamics in nonlinear systems, with potential applications in developmental biology, chemical media, and ecological systems. This work extends classical reaction-diffusion theory by demonstrating how hybridized kinetics can lead to robust and tunable spatiotemporal chaos.

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