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Modeling and Prediction of the Covid-19 Cases With Deep Assessment Methodology and Fractional Calculus.
Karacuha, Ertugrul; Onal, Nisa Ozge; Ergun, Esra; Tabatadze, Vasil; Alkas, Hasan; Karacuha, Kamil; Tontus, Haci Omer; Nu, Nguyen Vinh Ngoc.
  • Karacuha E; Informatics Institute, Istanbul Technical University 34467 Istanbul Turkey.
  • Onal NO; Informatics Institute, Istanbul Technical University 34467 Istanbul Turkey.
  • Ergun E; Informatics Institute, Istanbul Technical University 34467 Istanbul Turkey.
  • Tabatadze V; Informatics Institute, Istanbul Technical University 34467 Istanbul Turkey.
  • Alkas H; Faculty of Society and EconomicsRhine-Waal University of Applied Science 47533 Kleve Germany.
  • Karacuha K; Informatics Institute, Istanbul Technical University 34467 Istanbul Turkey.
  • Tontus HO; Faculty of Science and LettersIstanbul Technical University 34000 Istanbul Turkey.
  • Nu NVN; Faculty of Society and EconomicsRhine-Waal University of Applied Science 47533 Kleve Germany.
IEEE Access ; 8: 164012-164034, 2020.
Article in English | MEDLINE | ID: covidwho-1528287
ABSTRACT
This study focuses on modeling, prediction, and analysis of confirmed, recovered, and death cases of COVID-19 by using Fractional Calculus in comparison with other models for eight countries including China, France, Italy, Spain, Turkey, the UK, and the US. First, the dataset is modeled using our previously proposed approach Deep Assessment Methodology, next, one step prediction of the future is made using two

methods:

Deep Assessment Methodology and Long Short-Term Memory. Later, a Gaussian prediction model is proposed to predict the short-term (30 Days) future of the pandemic, and prediction performance is evaluated. The proposed Gaussian model is compared to a time-dependent susceptible-infected-recovered (SIR) model. Lastly, an analysis of understanding the effect of history is made on memory vectors using wavelet-based denoising and correlation coefficients. Results prove that Deep Assessment Methodology successfully models the dataset with 0.6671%, 0.6957%, and 0.5756% average errors for confirmed, recovered, and death cases, respectively. We found that using the proposed Gaussian approach underestimates the trend of the pandemic and the fastest increase is observed in the US while the slowest is observed in China and Spain. Analysis of the past showed that, for all countries except Turkey, the current time instant is mainly dependent on the past two weeks where countries like Germany, Italy, and the UK have a shorter average incubation period when compared to the US and France.
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Full text: Available Collection: International databases Database: MEDLINE Type of study: Experimental Studies / Prognostic study Language: English Journal: IEEE Access Year: 2020 Document Type: Article

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Full text: Available Collection: International databases Database: MEDLINE Type of study: Experimental Studies / Prognostic study Language: English Journal: IEEE Access Year: 2020 Document Type: Article