Accurate estimation of air transport demand is vital for airlines, related aviation companies, and government agencies. For example, both short-term and long-term business plans of airlines require accurate forecasting of future air traffic flows. This study aims to forecast the volume of air passengers in Kuwait International Airport (KIA), which is in the state of Kuwait. Using monthly air traffic volume data between January 2012 and December 2018, this study focuses on the modelling and forecasting the number of air passengers in KIA. A wide range of time series forecasting models are considered in this research, including autoregressive-integrated-moving average model (ARIMA), exponential smoothing with errors term (ETS), Holt-Winters e...
In this time, technology must really be used as well as possible, especially during a pandemic like...
Airline traffic forecasting is important to airlines and regulatory authorities. This paper examines...
The Autoregressive Integrated Moving Average (ARIMA) model is often used to forecast time series dat...
Accurate estimation of air transport demand is vital for airlines, related aviation companies, and g...
The development of air transportation services is growing up. Based on the report of Central Bureau ...
In this paper we conduct an out-of-sample forecasting exercise for monthly Swedish air traveler volu...
For many years, researchers have been using statistical tools to estimate parameters of macroeconomi...
In this article, we reviewed forecasting methods based on smoothing, exponential smoothing and movin...
Airline traffic forecasting in the medium term is important to airlines and regulatory authorities t...
Airline traffic forecasting in the medium term is important to airlines and regulatory authorities t...
Tourism in too many areas has been increasing for decades because of development in communications, ...
The purpose of the research study is to determine the most suitable technique to generate the foreca...
In spite of the importance of air travel demand forecasting for several actors of the air transport ...
With the immense popularity and convenience poised by air travel, passengers all over the world have...
This work fitted three time series models namely, AR (1) model, MA (1) model and ARMA (1,0,1) model ...
In this time, technology must really be used as well as possible, especially during a pandemic like...
Airline traffic forecasting is important to airlines and regulatory authorities. This paper examines...
The Autoregressive Integrated Moving Average (ARIMA) model is often used to forecast time series dat...
Accurate estimation of air transport demand is vital for airlines, related aviation companies, and g...
The development of air transportation services is growing up. Based on the report of Central Bureau ...
In this paper we conduct an out-of-sample forecasting exercise for monthly Swedish air traveler volu...
For many years, researchers have been using statistical tools to estimate parameters of macroeconomi...
In this article, we reviewed forecasting methods based on smoothing, exponential smoothing and movin...
Airline traffic forecasting in the medium term is important to airlines and regulatory authorities t...
Airline traffic forecasting in the medium term is important to airlines and regulatory authorities t...
Tourism in too many areas has been increasing for decades because of development in communications, ...
The purpose of the research study is to determine the most suitable technique to generate the foreca...
In spite of the importance of air travel demand forecasting for several actors of the air transport ...
With the immense popularity and convenience poised by air travel, passengers all over the world have...
This work fitted three time series models namely, AR (1) model, MA (1) model and ARMA (1,0,1) model ...
In this time, technology must really be used as well as possible, especially during a pandemic like...
Airline traffic forecasting is important to airlines and regulatory authorities. This paper examines...
The Autoregressive Integrated Moving Average (ARIMA) model is often used to forecast time series dat...