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A Data-Driven Approach for Baggage Handling Operations at Airports

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A Data-Driven Approach for Baggage Handling Operations at Airports. / Ruf, Christian; Schiffels, Sebastian; Kolisch, Rainer et al.
In: Transportation Science, Vol. 56, No. 5, 30.09.2022, p. 1179-1195.

Research output: Contribution to Journal/MagazineJournal articlepeer-review

Harvard

Ruf, C, Schiffels, S, Kolisch, R & Frey, MM 2022, 'A Data-Driven Approach for Baggage Handling Operations at Airports', Transportation Science, vol. 56, no. 5, pp. 1179-1195. https://doi.org/10.1287/trsc.2022.1127

APA

Ruf, C., Schiffels, S., Kolisch, R., & Frey, M. M. (2022). A Data-Driven Approach for Baggage Handling Operations at Airports. Transportation Science, 56(5), 1179-1195. https://doi.org/10.1287/trsc.2022.1127

Vancouver

Ruf C, Schiffels S, Kolisch R, Frey MM. A Data-Driven Approach for Baggage Handling Operations at Airports. Transportation Science. 2022 Sept 30;56(5):1179-1195. Epub 2022 Mar 2. doi: 10.1287/trsc.2022.1127

Author

Ruf, Christian ; Schiffels, Sebastian ; Kolisch, Rainer et al. / A Data-Driven Approach for Baggage Handling Operations at Airports. In: Transportation Science. 2022 ; Vol. 56, No. 5. pp. 1179-1195.

Bibtex

@article{d60c14d0411b4098a2f49ada78140e08,
title = "A Data-Driven Approach for Baggage Handling Operations at Airports",
abstract = "Before each flight departs, baggage has to be loaded into containers, which are then forwarded to the airplane. Planning the loading process consists of setting the start times for the loading process and depletion of the baggage storage as well as assigning handling facilities and workers. Flight delays and uncertain arrival times of passengers at the check-in counters require plans that are adjusted dynamically every few minutes and, hence, an efficient planning procedure. We propose a model formulation and a solution procedure that utilize historical flight data to generate reliable plans in a rolling planning fashion, allowing problem parameters to be updated in each reoptimization. To increase the tractability of the problem, we employ a column generation–based heuristic in which new schedules and work profiles are generated in subproblems, which are solved as dynamic programs. In a computational study, we demonstrate the robust performance of the proposed procedure based on real-world data from a major European airport. The results show that (i) the procedure outperforms both a constructive heuristic that mimics human decision making and a meta heuristic (tabu search) and (ii) being able to dynamically (re)allocate baggage handlers leads to improved solutions with considerably fewer left bags.",
keywords = "data-driven optimization, rolling horizon, airport operations, baggage handling, integer programming, column generation",
author = "Christian Ruf and Sebastian Schiffels and Rainer Kolisch and Frey, {Markus Matth{\"a}us}",
year = "2022",
month = sep,
day = "30",
doi = "10.1287/trsc.2022.1127",
language = "English",
volume = "56",
pages = "1179--1195",
journal = "Transportation Science",
issn = "0041-1655",
publisher = "INFORMS",
number = "5",

}

RIS

TY - JOUR

T1 - A Data-Driven Approach for Baggage Handling Operations at Airports

AU - Ruf, Christian

AU - Schiffels, Sebastian

AU - Kolisch, Rainer

AU - Frey, Markus Matthäus

PY - 2022/9/30

Y1 - 2022/9/30

N2 - Before each flight departs, baggage has to be loaded into containers, which are then forwarded to the airplane. Planning the loading process consists of setting the start times for the loading process and depletion of the baggage storage as well as assigning handling facilities and workers. Flight delays and uncertain arrival times of passengers at the check-in counters require plans that are adjusted dynamically every few minutes and, hence, an efficient planning procedure. We propose a model formulation and a solution procedure that utilize historical flight data to generate reliable plans in a rolling planning fashion, allowing problem parameters to be updated in each reoptimization. To increase the tractability of the problem, we employ a column generation–based heuristic in which new schedules and work profiles are generated in subproblems, which are solved as dynamic programs. In a computational study, we demonstrate the robust performance of the proposed procedure based on real-world data from a major European airport. The results show that (i) the procedure outperforms both a constructive heuristic that mimics human decision making and a meta heuristic (tabu search) and (ii) being able to dynamically (re)allocate baggage handlers leads to improved solutions with considerably fewer left bags.

AB - Before each flight departs, baggage has to be loaded into containers, which are then forwarded to the airplane. Planning the loading process consists of setting the start times for the loading process and depletion of the baggage storage as well as assigning handling facilities and workers. Flight delays and uncertain arrival times of passengers at the check-in counters require plans that are adjusted dynamically every few minutes and, hence, an efficient planning procedure. We propose a model formulation and a solution procedure that utilize historical flight data to generate reliable plans in a rolling planning fashion, allowing problem parameters to be updated in each reoptimization. To increase the tractability of the problem, we employ a column generation–based heuristic in which new schedules and work profiles are generated in subproblems, which are solved as dynamic programs. In a computational study, we demonstrate the robust performance of the proposed procedure based on real-world data from a major European airport. The results show that (i) the procedure outperforms both a constructive heuristic that mimics human decision making and a meta heuristic (tabu search) and (ii) being able to dynamically (re)allocate baggage handlers leads to improved solutions with considerably fewer left bags.

KW - data-driven optimization

KW - rolling horizon

KW - airport operations

KW - baggage handling

KW - integer programming

KW - column generation

U2 - 10.1287/trsc.2022.1127

DO - 10.1287/trsc.2022.1127

M3 - Journal article

VL - 56

SP - 1179

EP - 1195

JO - Transportation Science

JF - Transportation Science

SN - 0041-1655

IS - 5

ER -