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A forecasting tool for predicting Australia's domestic airline passenger demand using a genetic algorithm

journal contribution
posted on 2024-11-01, 23:03 authored by Panarat Srisaeng, Glenn Baxter, Steven Richardson, Graham Wild
This study has proposed and empirically tested for the first time genetic algorithm optimization models for modelling Australia's domestic airline passenger demand, as measured by enplaned passengers (GAPAXDE model) and revenue passenger kilometres performed (GARPKSDE model). Data was divided into training and testing datasets; 74 training datasets were used to estimate the weighting factors of the genetic algorithm models and 13 out-of-sample datasets were used for testing the robustness of the genetic algorithm models. The genetic algorithm parameters used in this study comprised population size (n): 200; the generation number: 1,000; and mutation rate: 0.01. The modelling results have shown that both the quadratic GAPAXDE and GARPKSDE models are more accurate, reliable, and have greater predictive capability as compared to the linear models. The mean absolute percentage error in the out of sample testing dataset for the GAPAXDE and GARPKSDE quadratic models are 2.55 and 2.23%, respectively.

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    ISSN - Is published in 19849648
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Journal

Journal of Aerospace Technology and Management

Volume

7

Issue

4

Start page

476

End page

489

Total pages

14

Publisher

Instituto de Aeronautica e Espaco (I A E)

Place published

Brazil

Language

English

Copyright

© 2015 This work is licensed under a Creative Commons Attribution 4.0 International License.

Former Identifier

2006059206

Esploro creation date

2020-06-22

Fedora creation date

2016-03-04

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