Abstract:
Paddy cultivation is a vital component of Sri Lanka’s agriculture sector, directly influencing
food security and the rural economy. This study aims to model and forecast paddy production
for the Maha and Yala seasons using annual time series data for the period 1952–2024,
obtained from the Department of Census and Statistics. Autoregressive Integrated Moving
Average (ARIMA) models were developed separately for each season after achieving
stationarity through logarithmic transformation and first differencing. Model selection was
based on the Akaike Information Criterion (AIC), Schwarz Criterion (SC), and log-
likelihood measures. The optimal models identified were ARIMA (2,1,0) for Maha and
ARIMA (1,1,1) for Yala seasons. Diagnostic tests confirmed the absence of autocorrelation
and heteroscedasticity in the residuals, confirming the models’ reliability. The models
demonstrated high forecasting accuracy, with Mean Absolute Percentage Error (MAPE)
values of 9.98% and 9.73% for Maha and Yala seasons, respectively. Forecasts for the period
2025–2029 indicate a steady upward trend in paddy production in both seasons, with
consistently higher yields observed during the Maha season. These findings provide valuable
insights for policymakers and agricultural planners, particularly in strengthening food
security and optimizing resource allocation strategies.