dc.description.abstract |
Rainfall is one of the most important climatic factors that directly influence agriculture.
The Nuwara-Eliya district is famous for vegetable cultivation, and the success of this
cultivation mainly depends on the rainfall pattern. Nowadays, rainfall prediction has
become a challenging task because both the amount and pattern of rainfall are changing
significantly at global and regional levels due to global warming and climate change.
Therefore, vegetable farmers face many difficulties in their plantation activities. The
objective of this study is to establish a suitable time series model to forecast monthly
rainfall in the Nuwara-Eliya district using data from January 2010 to October 2023.
ADF and KPSS tests were performed to examine the stationarity of the data series. Log
transformation was applied to reduce the variability, and further analysis was carried
out using the log transformed series. The Box-Jenkins approach was used to model 154
observations, while the remaining 12 observations were retained for model validation.
Seasonality was identified through seasonal plots, and the Kruskal Wallis test and
HEGY test were employed to test the stationarity of the seasonal component. The best
model was selected based on the accuracy measures such as AIC, SC, R2, and log
likelihood values. Based on the analysis, SARIMA (0,0,2) (1,0,1)12 model was selected
as the best model for forecasting monthly rainfall in Nuwara-Eliya. The MAPE value
of the estimated model is 7.73%, which is less than 10%, indicating that the estimated
model is more accurate and appropriate. |
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