Title of article :
Forecasting Short-term Container Vessel Traffic Volume Using Hybrid ARIMA-NN Model
Author/Authors :
Sadeghi Gargari, Negar Tarbiat Modares University , Akbari, Hassan Tarbiat Modares University , Panahi, Roozbeh Tarbiat Modares University
Abstract :
A combination of linear and non-linear models results in a more accurate
prediction in comparison with using linear or non-linear models individually to
forecast time series data. This paper utilizes the linear autoregressive integrated
moving average (ARIMA) model and non-linear artificial neural network
(ANN) model to develop a new hybrid ARIMA-ANN model for prediction of
container vessel traffic volume. The suggested hybrid method consists of an
optimized feed-forward, back-propagation model with a hybrid training
algorithm. The database of monthly traffic of Rajaee Port for thirteen years from
2005-2018 is taken into account. The performance of the developed model in
forecasting short-term traffic volume is evaluated using various performance
criteria such as correlation coefficient (R), mean absolute deviation (MAD),
mean squared error (MSE) and mean absolute percentage error (MAPE). The
developed model provides useful insights into container traffic behavior.
Comparing the results with the real data-sets demonstrates the superior
performance of the hybrid models than using models individually in forecasting
traffic data.
Keywords :
Forecasting Container Traffic , Neural Network , ARIMA model , Hybrid ARIMA-NN Model
Journal title :
International Journal of Coastal and Offshore Engineering