Airline planning benchmark problems–Part I:

Airline planning benchmark problems–Part I:

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Article ID: iaor20127842
Volume: 40
Issue: 3
Start Page Number: 775
End Page Number: 792
Publication Date: Mar 2013
Journal: Computers and Operations Research
Authors: , , , ,
Keywords: vehicle routing & scheduling, combinatorial optimization, programming: multiple criteria, networks: scheduling
Abstract:

This paper is the first of two papers entitled ‘Airline Planning Benchmark Problems’, aimed at developing benchmark data that can be used to stimulate innovation in airline planning, in particular, in flight schedule design and fleet assignment. While optimisation has made an enormous contribution to airline planning in general, the area suffers from a lack of standardised data and benchmark problems. Current research typically tackles problems unique to a given carrier, with associated specification and data unavailable to the broader research community. This limits direct comparison of alternative approaches, and creates barriers of entry for the research community. Furthermore, flight schedule design has, to date, been under‐represented in the optimisation literature, due in part to the difficulty of obtaining data that adequately reflects passenger choice, and hence schedule revenue. This is Part I of two papers taking first steps to address these issues. It does so by providing a framework and methodology for generating realistic airline demand data, controlled by scalable parameters. First, a characterisation of flight network topologies and network capacity distributions is deduced, based on the analysis of airline data. Then a multi‐objective optimisation model is proposed to solve the inverse problem of inferring OD‐pair demands from passenger loads on arcs. These two elements are combined to yield a methodology for generating realistic flight network topologies and OD‐pair demand data, according to specified parameters. This methodology is used to produce 33 benchmark instances exhibiting a range of characteristics. Part II extends this work by partitioning the demand in each market (OD pair) into market segments, each with its own utility function and set of preferences for alternative airline products. The resulting demand data will better reflect recent empirical research on passenger preference, and is expected to facilitate passenger choice modelling in flight schedule optimisation.

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