Publication: Modeling Weekly Covid Data in Europe and Sri Lanka: Time Series Approach
DOI
Type:
Article
Date
2022-09-15
Authors
Journal Title
Journal ISSN
Volume Title
Publisher
Faculty of Humanities and Sciences, SLIIT
Abstract
Novel Corona Virus, commonly known as
COVID-19 has become a global threat affecting
more than 200 countries up to date. Still a
vaccine that can assure of hundred percent
prevention has not been discovered. All the
countries are currently following WHO
guidelines such as lockdowns and social
distancing. This study was conducted to
develop ARIMA models for COVID-19 data in
Europe and Sri Lanka and validate the models.
For both these regions, number of COVID-19
cases were collected considering for a period of
one year in which the first real wave happened.
ACF and PACF plots were used to identify the
stationarity, and out of the results possible
ARIMA models were developed for the two
regions separately. For Europe, the best fitted
model was ARIMA (0, 2, 1) and for Sri Lanka, the
best fitted model was ARIMA (1,1,0). The
models were evaluated using AIC criteria. The
errors of the models were found to be white
noise. The forecasted values that were
obtained from the model showed an increase of
cases in Europe and a constant flow in Sri Lanka.
Description
Keywords
ARIMA Models, Covid-19, Forecasting
Citation
Jayakody, J. A. P. A1. (2022). Modeling Weekly Covid Data in Europe and Sri Lanka: Time Series Approach. Proceedings of SLIIT International Conference on Advancements in Sciences and Humanities, (11) October, Colombo, 201 - 206.
