Tsachev Tsvetomir, Veliov Vladimir M, Widder Andreas
Institute of Mathematics and Informatics, Bulgarian Academy of Sciences, Acad. G. Bonchev Str., Block 8, 1113, Sofia, Bulgaria.
ORCOS, Institute of Statistics and Mathematical Methods in Economics, Vienna University of Technology, Wiedner Hauptstraße 8/E105-4, 1040, Vienna, Austria.
J Math Biol. 2017 Apr;74(5):1081-1106. doi: 10.1007/s00285-016-1050-0. Epub 2016 Sep 7.
The paper presents an approach for set-membership estimation of the state of a heterogeneous population in which an infectious disease is spreading. The population state may consist of susceptible, infected, recovered, etc. groups, where the individuals are heterogeneous with respect to traits, relevant to the particular disease. Set-membership estimations in this context are reasonable, since only vague information about the distribution of the population along the space of heterogeneity is available in practice. The presented approach comprises adapted versions of methods which are known in estimation and control theory, and involve solving parametrized families of optimization problems. Since the models of disease spreading in heterogeneous populations involve distributed systems (with non-local dynamics and endogenous boundary conditions), these problems are non-standard. The paper develops the needed theoretical instruments and a solution scheme. SI and SIR models of epidemic diseases are considered as case studies and the results reveal qualitative properties that may be of interest.
本文提出了一种用于估计传染病正在传播的异质人群状态的集员估计方法。人群状态可能由易感、感染、康复等群体组成,其中个体在与特定疾病相关的特征方面是异质的。在这种情况下进行集员估计是合理的,因为在实际中关于人群在异质性空间上的分布只有模糊信息。所提出的方法包括估计与控制理论中已知方法的适配版本,并且涉及求解参数化的优化问题族。由于异质人群中疾病传播模型涉及分布式系统(具有非局部动力学和内生边界条件),这些问题是非标准的。本文开发了所需的理论工具和解决方案。将传染病的SI和SIR模型作为案例研究,结果揭示了可能令人感兴趣的定性特性。