Susceptible exposed infectious recovered-machine learning for COVID-19 prediction in Saudi Arabia
Autor: | Mutasem K. Alsmadi, Ghaith M. Jaradat, Sami A. Abahussain, Mohammed Fahed Tayfour, Usama A. Badawi, Hayat Alfagham, Muneerah Ebrahem Alshabanah, Daniah Abdulrahman Alrajhi, Hanouf Naif ALkhaldi, Njoud Ahmad Altuwaijri, Hany Answer ShoShan, Hayah Mohamed Abouelnaga, Ahmed Baz Mohamed Metwally |
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Rok vydání: | 2023 |
Předmět: | |
Zdroj: | International Journal of Electrical and Computer Engineering (IJECE). 13:4761 |
ISSN: | 2722-2578 2088-8708 |
Popis: | Susceptible exposed infectious recovered (SEIR) is among the epidemiological models used in forecasting the spread of disease in large populations. SEIR is a fitting model for coronavirus disease (COVID-19) spread prediction. Somehow, in its original form, SEIR could not measure the impact of lockdowns. So, in the SEIR equations system utilized in this study, a variable was included to evaluate the impact of varying levels of social distance on the transmission of COVID-19. Additionally, we applied artificial intelligence utilizing the deep neural network machine learning (ML) technique. On the initial spread data for Saudi Arabia that were available up to June 25th, 2021, this improved SEIR model was used. The study shows possible infection to around 3.1 million persons without lockdown in Saudi Arabia at the peak of spread, which lasts for about 3 months beginning from the lockdown date (March 21st). On the other hand, the Kingdom's current partial lockdown policy was estimated to cut the estimated number of infections to 0.5 million over nine months. The data shows that stricter lockdowns may successfully flatten the COVID-19 graph curve in Saudi Arabia. We successfully predicted the COVID-19 epidemic's peaks and sizes using our modified deep neural network (DNN) and SEIR model. |
Databáze: | OpenAIRE |
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