We investigate inverse problems of finding unknown parameters of
mathematical models SEIR-HCD and SEIR-D of COVID-19 spread with
additional information about the number of detected cases, mortality,
self-isolation coefficient, and tests performed for the city of Moscow
and Novosibirsk region since 23.03.2020. In SEIR-HCD the population is
divided into seven groups, and in SEIR-D into five groups with similar
characteristics and transition probabilities depending on the specific
region of interest. An identifiability analysis of SEIR-HCD is made to
reveal the least sensitive unknown parameters as related to the
additional information. The parameters are corrected by minimizing some
objective functionals which is made by stochastic methods (simulated
annealing, differential evolution, and genetic algorithm). Prognostic
scenarios for COVID-19 spread in Moscow and in Novosibirsk region are
developed, and the applicability of the models is analyzed.
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