Duarte Jorge, Januário Cristina, Martins Nuno, Rogovchenko Svitlana, Rogovchenko Yuriy
Department of Mathematics, Instituto Superior de Engenharia de Lisboa - ISEL, Rua Conselheiro Emídio Navarro 1, 1949-014, Lisbon, Portugal.
Mathematics Department, Center for Mathematical Analysis, Geometry and Dynamical Systems, Instituto Superior Técnico, Universidade de Lisboa, Av. Rovisco Pais, 1049-001, Lisbon, Portugal.
J Math Biol. 2019 Jun;78(7):2235-2258. doi: 10.1007/s00285-019-01342-7. Epub 2019 Feb 26.
Despite numerous studies of epidemiological systems, the role of seasonality in the recurrent epidemics is not entirely understood. During certain periods of the year incidence rates of a number of endemic infectious diseases may fluctuate dramatically. This influences the dynamics of mathematical models describing the spread of infection and often leads to chaotic oscillations. In this paper, we are concerned with a generalization of a classical Susceptible-Infected-Recovered epidemic model which accounts for seasonal effects. Combining numerical and analytic techniques, we gain new insights into the complex dynamics of a recurrent disease influenced by the seasonality. Computation of the Lyapunov spectrum allows us to identify different chaotic regimes, determine the fractal dimension and estimate the predictability of the appearance of attractors in the system. Applying the homotopy analysis method, we obtain series solutions to the original nonautonomous SIR model with a high level of accuracy and use these approximations to analyze the dynamics of the system. The efficiency of the method is guaranteed by the optimal choice of an auxiliary control parameter which ensures the rapid convergence of the series to the exact solution of the forced SIR epidemic model.
尽管对流行病学系统进行了大量研究,但季节性在反复出现的流行病中所起的作用尚未完全明了。在一年中的某些时期,多种地方性传染病的发病率可能会大幅波动。这影响了描述感染传播的数学模型的动态变化,并常常导致混沌振荡。在本文中,我们关注的是一个经典的易感 - 感染 - 康复(Susceptible-Infected-Recovered,SIR)流行病模型的推广,该模型考虑了季节性影响。通过结合数值和分析技术,我们对受季节性影响的反复出现疾病的复杂动态有了新的认识。李雅普诺夫谱的计算使我们能够识别不同的混沌状态,确定分形维数并估计系统中吸引子出现的可预测性。应用同伦分析方法,我们以高精度获得了原始非自治SIR模型的级数解,并使用这些近似解来分析系统的动态。该方法的有效性通过辅助控制参数的最优选择得到保证,该参数确保级数快速收敛到强迫SIR流行病模型的精确解。