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Dynamics of a stochastic vector-host epidemic model with age-dependent of vaccination and disease relapse. (English) Zbl 07920374

Summary: Due to the ubiquitous stochastic interference in nature, the uncertainty of the disease relapse and the duration of immunity, we present a stochastic vector-host epidemic model with age-dependent of vaccination and disease relapse, where two general incidences are also introduced to depict the transmission of virus between vectors and hosts. By constructing a suitable Lyapunov function, the existence and uniqueness of the global positive solution of our model are proved. Further, the stochastic extinction of disease, the existence of stationary distribution are also discussed. Moreover, the stochastic extinction of disease and the existence of stationary distribution for special incidence are obtained as an application, where the general incidence degenerates into the billinear incidence. Finally, numerical simulations are given to illuminate the main results, which also suggest that the behaviors of vectors and the self-protection of hosts are the key factors to eliminate the disease relative to the quantity of vector population during the transmission of vector-host infectious diseases.

MSC:

37H10 Generation, random and stochastic difference and differential equations
60H30 Applications of stochastic analysis (to PDEs, etc.)
92D30 Epidemiology
93E15 Stochastic stability in control theory
Full Text: DOI

References:

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