Robust Optimization: Lessons Learned from Aircraft Routing

L. Marla, V. Vaze and C. Barnhart, “Robust Optimization: Lessons Learned from Aircraft Routing,” Computers and Operations Research, Vol 98, October 2018, pp. 165-184. Doi.org/10.1016/j.cor.2018.04.011

67 Pages Posted: 22 Jun 2017 Last revised: 6 Mar 2020

See all articles by Lavanya Marla

Lavanya Marla

University of Illinois at Urbana-Champaign

Vikrant Vaze

Thayer School of Engineering, Dartmouth College

Cynthia Barnhart

Massachusetts Institute of Technology (MIT) - Operations Research Center

Date Written: January 21, 2018

Abstract

Building robust airline scheduling models involves constructing schedules and routes with reduced levels of flight delays as well as fewer passenger and crew disruptions. In this paper, we study different classes of models to achieve robust airline scheduling solutions, with a focus on the aircraft routing problem. In particular, we compare one domain-specific approach and two general paradigms of robust models, namely, (i) an extreme-value based or robust optimization-based approach, and (ii) a chance-constrained or stochastic optimization-based approach. Our modeling and solution approach demonstrates the creation of data-driven uncertainty sets for aircraft routing using domain-specific knowledge and develops a completely data-driven simulation-based validation and testing approach. We first demonstrate that additional modeling, capturing domain knowledge, is required to adapt these general robust modeling paradigms to the aircraft routing problem, in order to meaningfully add robustness features specific to aircraft routing. However, we show that these models in their naive forms, still face issues of tractability and solution quality for the large-scale networks which are representative of real-world airline scheduling problems. Therefore, we develop and present advanced models that address these shortcomings. Our advanced models can be applied to aircraft routing in multiple ways, through varied descriptions of the uncertainty sets; and moreover, are generally applicable to linear and binary integer programming problems. Through our detailed computational results, we compare the performance of solutions arising from these different robust modeling paradigms and discuss the underlying reasons for their performance differences from a data-driven perspective.

Keywords: robust airline scheduling, aircraft routing, robust optimization, chance-constrained programming

Suggested Citation

Marla, Lavanya and Vaze, Vikrant and Barnhart, Cynthia, Robust Optimization: Lessons Learned from Aircraft Routing (January 21, 2018). L. Marla, V. Vaze and C. Barnhart, “Robust Optimization: Lessons Learned from Aircraft Routing,” Computers and Operations Research, Vol 98, October 2018, pp. 165-184. Doi.org/10.1016/j.cor.2018.04.011 , Available at SSRN: https://ssrn.com/abstract=2991397 or http://dx.doi.org/10.2139/ssrn.2991397

Lavanya Marla (Contact Author)

University of Illinois at Urbana-Champaign ( email )

601 E John St
Champaign, IL Champaign 61820
United States

Vikrant Vaze

Thayer School of Engineering, Dartmouth College ( email )

14 Engineering Drive
Hanover, NH New Hampshire 03755
United States
6036469147 (Phone)

HOME PAGE: http://engineering.dartmouth.edu/people/faculty/vikrant-vaze/

Cynthia Barnhart

Massachusetts Institute of Technology (MIT) - Operations Research Center ( email )

77 Massachusetts Avenue
Bldg. E 40-149
Cambridge, MA 02139
United States

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