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Research on Flight Adjustment Optimization Based on Flight Delay Forecast

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DOI: 10.23977/ieim.2022.050702 | Downloads: 30 | Views: 739

Author(s)

Luo Feng'e 1, Kan Xiangyu 1, Qi Fang 1, Wang Bo 1

Affiliation(s)

1 Civil Aviation Flight University of China, Air Traffic Management College, Guanghan, China

Corresponding Author

Luo Feng'e

ABSTRACT

Flight delays are not only a single point effect, but also affect related flights and airports through the air transportation network, causing large-scale flight delays. This article is aimed at Advance control of flight delays, that is, the control of the spread delay of the flight plan, through the delay prediction of the flight, provide advance reference for the subsequent flight plan optimization, on the basis of the flight delay prediction, adjust and optimize the spread delay flight, use The aircraft path spread and delay optimization model based on the column generation algorithm adjusts the delayed flights.

KEYWORDS

Flight delay forecast, Logistic model, Time series analysis model, Flight adjustment and optimization

CITE THIS PAPER

Luo Feng'e, Kan Xiangyu, Qi Fang, Wang Bo, Research on Flight Adjustment Optimization Based on Flight Delay Forecast. Industrial Engineering and Innovation Management (2022) Vol. 5: 8-15. DOI: http://dx.doi.org/10.23977/ieim.2022.050702.

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