Forecasting Confirmed Covid-19 Cases in Malawi Using Artificial Neural Networks

Abstract

In this research article, the ANN approach was applied to analyze daily new corona virus infections in Malawi. The employed data covers the period 1 January 2020 to 31 December 2020 and the out-of-sample period ranges over the period 1 January 2021 to 31 May 2021. The residuals and forecast evaluation criteria (Error, MSE and MAE) of the applied ANN (12, 12, 1) model indicate that the model is stable in forecasting daily COVID-19 cases in Malawi. The results of the study indicate that daily COVID-19 cases are likely to be in the range 0-270 cases over the out of sample period. Therefore the health authorities are encouraged to continue enforcing the adherence to WHO guidelines and protocols in order to prevent and control COVID-19 including vaccination of the majority of citizens to achieve herd immunity. 

Country : Zimbabwe

1 Dr. Smartson. P. NYONI2 Thabani NYONI3 Tatenda. A. CHIHOHO

  1. ZICHIRe Project, University of Zimbabwe, Harare, Zimbabwe
  2. SAGIT Innovation Centre, Harare, Zimbabwe
  3. Independent Researcher, Harare, Zimbabwe

IRJIET, Volume 5, Issue 3, March 2021 pp. 385-394

doi.org/10.47001/IRJIET/2021.503067

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