The comparison of Chinese and Australian aviation networks under the most important node attacks

Research Article
Open access

The comparison of Chinese and Australian aviation networks under the most important node attacks

Aiwen Zhang 1*
  • 1 University of New South Wales, NSW, Australia    
  • *corresponding author aiwen.zhang1@student.unsw.edu.au
ACE Vol.5
ISSN (Print): 2755-273X
ISSN (Online): 2755-2721
ISBN (Print): 978-1-915371-57-7
ISBN (Online): 978-1-915371-58-4

Abstract

Air traffic plays an important role in the economy and daily life both in developing and developed countries, The shutdown of the crucial airport will lead to large financial losses. In this study, the data have been collected from Openflight.org with information of flights and routes. Then the characteristics of the Chinese aviation network and Australian aviation network have been computed. The results indicate that the Chinese aviation network and Australian aviation network are both scale-free networks of power-law degree distribution with long-tail attributes. Then, the centrality analysis of the top 10 airports in the Chinese aviation network and Australian aviation network have been assessed, such as betweenness centrality analysis and closeness centrality analysis. Lastly, the study looks into how the characteristics of the Chinese and American aviation networks have changed as a result of node attacks and offers helpful advice for both the Chinese and Australian aviation networks after the most important node attacks.

Keywords:

Chinese Aviation Network, Australian Aviation Network, Network Characteristics, Centrality Analysis, Important Node Attacks.

Zhang,A. (2023). The comparison of Chinese and Australian aviation networks under the most important node attacks. Applied and Computational Engineering,5,678-688.
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References

[1]. IATA Economics. 2022. The importance of air transport to the People’s republic of China.https://www.iata.org/en/iata-repository/publications/economic-reports/china--value-of-aviation/#:~:text=The%20air%20transport%20industry%2C%20including,totaling%20to%20US%20%24104%20billion.

[2]. IATA Economics. 2022. The importance of air transport to Australia. https://www.iata.org/en/iata-repository/publications/economic-reports/australia--value-of-aviation/#:~:text=The%20air%20transport%20industry%2C%20including,totaling%20to%20US%20%2469%20billion.

[3]. Air services. 2022. Impact of weather on operations. https://www.airservicesaustralia.com/about-us/our-services/how-air-traffic-control-works/impact-of-weather/open flights.org. 2022. Airport,airline and route data.https://openflights.org/data.html.

[4]. Hongyong Wang and Ruiying Wen. Analysis of air traffic network of china. In 2012 24th Chinese Control and Decision Conference (CCDC), pages 2400–2403, 2012. http://www.matjazperc.com/publications/ChaosSolitonsFractals_112_97.pdf

[5]. A. L. Barabasi, R. Albert, "Emergence of scaling in random networks", vol.286, Science, 1999, pp.509-512.

[6]. R. Albert and A.-L. Barab´asi, Rev. Mode. Phys. 74 (2002) 47.bookdown,2022.density. https://bookdown.org/omarlizardo/_main/2-9-density.html

[7]. J. He, Z. Liu, Y. Wu and S. Li, "Analysis of Aviation Networks Structure Based on Complex Networks Theory," 2012 Second International Conference on Instrumentation, Measurement, Computer, Communication and Control, 2012, pp. 179-182, doi: 10.1109/IMCCC.2012.49.

[8]. Bingxue Qian & Ning Zhang, 2022. "Topology and Robustness of Weighted Air Transport Networks in Multi-Airport Region," Sustainability, MDPI, vol. 14(11), pages 1-15, June. https://ideas.repec.org/a/gam/jsusta/v14y2022i11p6832-d830847.html.


Cite this article

Zhang,A. (2023). The comparison of Chinese and Australian aviation networks under the most important node attacks. Applied and Computational Engineering,5,678-688.

Data availability

The datasets used and/or analyzed during the current study will be available from the authors upon reasonable request.

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About volume

Volume title: Proceedings of the 3rd International Conference on Signal Processing and Machine Learning

ISBN:978-1-915371-57-7(Print) / 978-1-915371-58-4(Online)
Editor:Omer Burak Istanbullu
Conference website: http://www.confspml.org
Conference date: 25 February 2023
Series: Applied and Computational Engineering
Volume number: Vol.5
ISSN:2755-2721(Print) / 2755-273X(Online)

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References

[1]. IATA Economics. 2022. The importance of air transport to the People’s republic of China.https://www.iata.org/en/iata-repository/publications/economic-reports/china--value-of-aviation/#:~:text=The%20air%20transport%20industry%2C%20including,totaling%20to%20US%20%24104%20billion.

[2]. IATA Economics. 2022. The importance of air transport to Australia. https://www.iata.org/en/iata-repository/publications/economic-reports/australia--value-of-aviation/#:~:text=The%20air%20transport%20industry%2C%20including,totaling%20to%20US%20%2469%20billion.

[3]. Air services. 2022. Impact of weather on operations. https://www.airservicesaustralia.com/about-us/our-services/how-air-traffic-control-works/impact-of-weather/open flights.org. 2022. Airport,airline and route data.https://openflights.org/data.html.

[4]. Hongyong Wang and Ruiying Wen. Analysis of air traffic network of china. In 2012 24th Chinese Control and Decision Conference (CCDC), pages 2400–2403, 2012. http://www.matjazperc.com/publications/ChaosSolitonsFractals_112_97.pdf

[5]. A. L. Barabasi, R. Albert, "Emergence of scaling in random networks", vol.286, Science, 1999, pp.509-512.

[6]. R. Albert and A.-L. Barab´asi, Rev. Mode. Phys. 74 (2002) 47.bookdown,2022.density. https://bookdown.org/omarlizardo/_main/2-9-density.html

[7]. J. He, Z. Liu, Y. Wu and S. Li, "Analysis of Aviation Networks Structure Based on Complex Networks Theory," 2012 Second International Conference on Instrumentation, Measurement, Computer, Communication and Control, 2012, pp. 179-182, doi: 10.1109/IMCCC.2012.49.

[8]. Bingxue Qian & Ning Zhang, 2022. "Topology and Robustness of Weighted Air Transport Networks in Multi-Airport Region," Sustainability, MDPI, vol. 14(11), pages 1-15, June. https://ideas.repec.org/a/gam/jsusta/v14y2022i11p6832-d830847.html.