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Influencing factors on airplane boarding times

Publication date
2018-09-12
Document type
Forschungsartikel
Author
Hutter, Leonie
Jaehn, Florian  
Neumann, Simone
Organisational unit
BWL, insb. Management Science und Operations Research  
DOI
10.1016/j.omega.2018.09.002
URI
https://openhsu.ub.hsu-hh.de/handle/10.24405/22491
Scopus ID
2-s2.0-85053852620
Publisher
Elsevier
Series or journal
Omega
ISSN
0305-0483
Periodical volume
87
First page
177
Last page
190
Peer-reviewed
✅
Part of the university bibliography
✅
Additional Information
Language
English
Keyword
Airplane boarding
Airport operations
Econometric analysis
Field study
Abstract
The topic of airplane boarding is receiving increasing attention in practice and in the scientific literature. Shorter boarding times can reduce the time an airplane spends at the gate (the airplane turn-around time), resulting in annual cost savings of several hundred thousand dollars per airplane. Although several researchers have analyzed the boarding process purely theoretically or with simulation models, little empirical research has been performed, even though empirical research is the basis for any theoretical or simulation model. In this paper, we provide the fundamentals for this research area by presenting the results of an empirical study conducted at a large European airport. The aim of this study is to determine whether and to what extent certain factors, such as the number of passengers, the capacity of the airplane, and the amount of carry-on baggage, influence boarding times. Boarding times and additional data for short- and medium-haul flights with single-aisle airplanes have been manually collected in a field study and analyzed. The analyses yield the counter-intuitive result that a significant effect on the boarding time of a flight by the average amount of carry-on baggage per passenger cannot be demonstrated. Finally, we develop a regression model to predict boarding times based on the number of passengers and the capacity of the airplane. This straightforward model explains more than 85% of the variance in the boarding time and could therefore easily be used in the daily business of an airline to estimate the expected boarding times per flight. Furthermore, we compare our regression model to various simulation and analytical models as well as other empirical data for validation and out-of-sample testing.
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Published version
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