Asymptotic Properties of a Stochastic SIR Epidemic Model with Beddington–DeAngelis Incidence Rate

Springer Science and Business Media LLC - Tập 30 - Trang 93-106 - 2017
Nguyen Thanh Dieu1
1Department of Mathematics, Vinh University, Vinh, Vietnam

Tóm tắt

In this paper, the stochastic SIR epidemic model with Beddington–DeAngelis incidence rate is investigated. We classify the model by introducing a threshold value $$\lambda $$ . To be more specific, we show that if $$\lambda <0$$ then the disease-free is globally asymptotic stable i.e., the disease will eventually disappear while the epidemic is persistence provided that $$\lambda >0$$ . In this case, we derive that the model under consideration has a unique invariant probability measure. We also depict the support of invariant probability measure and prove the convergence in total variation norm of transition probabilities to the invariant measure. Some of numerical examples are given to illustrate our results.

Tài liệu tham khảo

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