作者
Andreas Kanavos, Fotios Kounelis, Lazaros Iliadis, Christos Makris
发表日期
2021/12
期刊
Neural Computing and Applications
卷号
33
期号
23
页码范围
16329-16343
出版商
Springer London
简介
The analysis along with the modeling of passenger demand dynamic, which deem to have vital implications on the management and the operation within the entire aviation industry, are regarded to be an extreme challenge. However, air passenger demand introduces reliably complex non-linearity and non-stationarity. In this paper, we have tried to forecast aviation demand with the use of time series and deep learning techniques. We have developed air travel demand estimation and forecasting models, using classical Autoregressive Integrated Moving Average methods (ARIMA), Seasonal approaches (SARIMA) and Deep Learning Neural Networks (DLNN). Moreover, this research has performed a qualitative comparison of the aforementioned techniques aiming to serve as a guideline toward the choice of the optimal modeling approach. The experimental results have shown that the proposed approaches can …
引用总数
学术搜索中的文章
A Kanavos, F Kounelis, L Iliadis, C Makris - Neural Computing and Applications, 2021