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      Modeling and Forecasting of COVID-19 Spreading by Delayed Stochastic Differential Equations

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      MDPI AG

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          Abstract

          The novel coronavirus disease (COVID-19) pneumonia has posed a great threat to the world recent months by causing many deaths and enormous economic damage worldwide. The first case of COVID-19 in Morocco was reported on 2 March 2020, and the number of reported cases has increased day by day. In this work, we extend the well-known SIR compartmental model to deterministic and stochastic time-delayed models in order to predict the epidemiological trend of COVID-19 in Morocco and to assess the potential role of multiple preventive measures and strategies imposed by Moroccan authorities. The main features of the work include the well-posedness of the models and conditions under which the COVID-19 may become extinct or persist in the population. Parameter values have been estimated from real data and numerical simulations are presented for forecasting the COVID-19 spreading as well as verification of theoretical results.

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          A simple stochastic SIR model for COVID 19 infection dynamics for Karnataka: Learning from Europe

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            Journal
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            Axioms
            MDPI AG
            2075-1680
            March 2021
            February 07 2021
            : 10
            : 1
            : 18
            Article
            10.3390/axioms10010018
            db7d5b2c-a936-48d4-aad4-15a692d03736
            © 2021

            https://creativecommons.org/licenses/by/4.0/

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