Mohamed A. Bahloul, Member, IEEE, Abderrazak Chahid, Member, IEEE,and Taous-MeriemLaleg-Kirati, Associate Member, IEEE
Estimation, Modeling and Analysis Group, Computer, Electrical and Mathematical Sciences and Engineering Division, King Abdullah University of Science and Technology
Coronavirus disease (COVID-19) is a contagious disease caused by a newly discovered coronavirus, initially identified in the mainland of China, late December2019. COVID-19 has been confirmed as a higher infectious disease that can spread quickly in a community population depending on the number of susceptible and infected cases and also depending on their movement in the community. Since January 2020, COVID-19 has reached out to many countries worldwide, and the number of daily cases remains to increase rapidly.
Several mathematical and statistical models have been developed to understand, track, and forecast the trend of the virus spread.Susceptible-Exposed-Infected-Quarantined-Recovered-Death-Insusceptible (SEIQRDP)model is one of the most promising epidemiological models that has been suggested for estimating the transmissibility of the COVID-19. In the present study, we propose a fractional-order SEIQRDP model to analyze the COVID-19 pandemic. In the recent decade, it has proven that many aspects in many domains can be described very successfully using fractional-order differential equations. Accordingly, the Fractional-order paradigm offers a flexible, appropriate, and reliable framework for pandemic growth characterization. In fact, due to its non-locality properties, a fractional-order operator takes into consideration the variables’ memory effect, and hence, it takes into account the sub-diffusion process of confirmed and recovered cases.
The validation of the studied fractional-order model using real COVID-19 data for different regions in China, Italy, and France show the potential of the proposed paradigm in predicting and understanding the pandemic dynamic.
Fractional-order epidemiological models might play an important role in understanding and predicting the spread of the COVID-19, also providing relevant guidelines for controlling the pandemic.
Here we present the code for the validation of the Nouvelle-Aquitaine-France region pandemic spreading. Some functions in this code have been adopted from [1].
[1]: E. Cheynet, “Generalized seir epidemic model (fitting and computa-tion)(https://www.github.com/echeynet/seir), github,”Retrieved April,vol. 6, p. 2020, 2020