A Multicriteria Optimization for Flight Route Networks in Large-Scale Airlines Using Intelligent Spatial Information

Air route network optimization, one of the airspace planning challenges, effectively manages airspace resources toward increasing airspace capacity and reducing air traffic congestion. In this paper, the structure of the flight network in air transport is analyzed with a multi-objective genetic algo...

Full description

Bibliographic Details
Main Author: Mostafa Borhani
Format: Article
Language:English
Published: Universidad Internacional de La Rioja (UNIR) 2020-03-01
Series:International Journal of Interactive Multimedia and Artificial Intelligence
Subjects:
Online Access:http://www.ijimai.org/journal/node/3615
_version_ 1811235669272428544
author Mostafa Borhani
author_facet Mostafa Borhani
author_sort Mostafa Borhani
collection DOAJ
description Air route network optimization, one of the airspace planning challenges, effectively manages airspace resources toward increasing airspace capacity and reducing air traffic congestion. In this paper, the structure of the flight network in air transport is analyzed with a multi-objective genetic algorithm regarding Geographic Information System (GIS) which is used to optimize this Iran airlines topology to reduce the number of airways and the aggregation of passengers in aviation industries organization and also to reduce changes in airways and the travel time for travelers. The proposed model of this study is based on the combination of two topologies – point-to-point and Hub-and-spoke – with multiple goals for causing a decrease in airways and travel length per passenger and also to reach the minimum number of air stops per passenger. The proposed Multi-objective Genetic Algorithm (MOGA) is tested and assessed in data of the Iran airlines industry in 2018, as an example to real-world applications, to design Iran airline topology. MOGA is proven to be effective in general to solve a network-wide flight trajectory planning. Using the combination of point-to-point and Hub-and-spoke topologies can improve the performance of the MOGA algorithm. Based on Iran airline traffic patterns in 2018, the proposed model successfully decreased 50.8% of air routes (184 air routes) compared to the current situations while the average travel length and the average changes in routes were increased up to 13.8% (about 100 kilometers) and up to 18%, respectively. The proposed algorithm also suggests that the current air routes of Iran can be decreased up to 24.7% (89 airways) if the travel length and the number of changes increase up to 4.5% (32 kilometers) and 5%, respectively. Two intermediate airports were supposed for these experiments. The computational results show the potential benefits of the proposed model and the advantage of the algorithm. The structure of the flight network in air transport can significantly reduce operational cost while ensuring the operation safety. According to the results, this intelligent multi-object optimization model would be able to be successfully used for a precise design and efficient optimization of existing and new airline topologies.
first_indexed 2024-04-12T11:55:57Z
format Article
id doaj.art-6e375e6ebb694c3891a8141e903cb288
institution Directory Open Access Journal
issn 1989-1660
1989-1660
language English
last_indexed 2024-04-12T11:55:57Z
publishDate 2020-03-01
publisher Universidad Internacional de La Rioja (UNIR)
record_format Article
series International Journal of Interactive Multimedia and Artificial Intelligence
spelling doaj.art-6e375e6ebb694c3891a8141e903cb2882022-12-22T03:34:01ZengUniversidad Internacional de La Rioja (UNIR)International Journal of Interactive Multimedia and Artificial Intelligence1989-16601989-16602020-03-016112313110.9781/ijimai.2019.11.001ijimai.2019.11.001A Multicriteria Optimization for Flight Route Networks in Large-Scale Airlines Using Intelligent Spatial InformationMostafa BorhaniAir route network optimization, one of the airspace planning challenges, effectively manages airspace resources toward increasing airspace capacity and reducing air traffic congestion. In this paper, the structure of the flight network in air transport is analyzed with a multi-objective genetic algorithm regarding Geographic Information System (GIS) which is used to optimize this Iran airlines topology to reduce the number of airways and the aggregation of passengers in aviation industries organization and also to reduce changes in airways and the travel time for travelers. The proposed model of this study is based on the combination of two topologies – point-to-point and Hub-and-spoke – with multiple goals for causing a decrease in airways and travel length per passenger and also to reach the minimum number of air stops per passenger. The proposed Multi-objective Genetic Algorithm (MOGA) is tested and assessed in data of the Iran airlines industry in 2018, as an example to real-world applications, to design Iran airline topology. MOGA is proven to be effective in general to solve a network-wide flight trajectory planning. Using the combination of point-to-point and Hub-and-spoke topologies can improve the performance of the MOGA algorithm. Based on Iran airline traffic patterns in 2018, the proposed model successfully decreased 50.8% of air routes (184 air routes) compared to the current situations while the average travel length and the average changes in routes were increased up to 13.8% (about 100 kilometers) and up to 18%, respectively. The proposed algorithm also suggests that the current air routes of Iran can be decreased up to 24.7% (89 airways) if the travel length and the number of changes increase up to 4.5% (32 kilometers) and 5%, respectively. Two intermediate airports were supposed for these experiments. The computational results show the potential benefits of the proposed model and the advantage of the algorithm. The structure of the flight network in air transport can significantly reduce operational cost while ensuring the operation safety. According to the results, this intelligent multi-object optimization model would be able to be successfully used for a precise design and efficient optimization of existing and new airline topologies.http://www.ijimai.org/journal/node/3615airway topologyartificial intelligencegeographic information systemmulti-objective genetic algorithm (moga)non-dominated sorting genetic algorithm ii (nsga-ii)
spellingShingle Mostafa Borhani
A Multicriteria Optimization for Flight Route Networks in Large-Scale Airlines Using Intelligent Spatial Information
International Journal of Interactive Multimedia and Artificial Intelligence
airway topology
artificial intelligence
geographic information system
multi-objective genetic algorithm (moga)
non-dominated sorting genetic algorithm ii (nsga-ii)
title A Multicriteria Optimization for Flight Route Networks in Large-Scale Airlines Using Intelligent Spatial Information
title_full A Multicriteria Optimization for Flight Route Networks in Large-Scale Airlines Using Intelligent Spatial Information
title_fullStr A Multicriteria Optimization for Flight Route Networks in Large-Scale Airlines Using Intelligent Spatial Information
title_full_unstemmed A Multicriteria Optimization for Flight Route Networks in Large-Scale Airlines Using Intelligent Spatial Information
title_short A Multicriteria Optimization for Flight Route Networks in Large-Scale Airlines Using Intelligent Spatial Information
title_sort multicriteria optimization for flight route networks in large scale airlines using intelligent spatial information
topic airway topology
artificial intelligence
geographic information system
multi-objective genetic algorithm (moga)
non-dominated sorting genetic algorithm ii (nsga-ii)
url http://www.ijimai.org/journal/node/3615
work_keys_str_mv AT mostafaborhani amulticriteriaoptimizationforflightroutenetworksinlargescaleairlinesusingintelligentspatialinformation
AT mostafaborhani multicriteriaoptimizationforflightroutenetworksinlargescaleairlinesusingintelligentspatialinformation