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The trade-off between taxi time and fuel consumption in airport ground movement

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conference contribution
posted on 2024-02-09, 18:57 authored by Edmund K. Burke, Jason A. D. Atkin, Stefan Ravizza, Jun Chen, Paul Stewart
<p>Environmental impact is a very important agenda item in many sectors nowadays, which the air transportation sector is also trying to reduceas much as possible. One area which has remained relatively unexplored in this context is the ground movement problem for aircraft on the airport’s surface.Aircraft have to be routed from a gate to a runway and vice versa and it isstill unknown whether fuel burn and environmental impact reductions will best result from purely minimising the taxi times or whether it is also important to avoid multiple acceleration phases. This paper presents a newly developed multi-objective approach for analysing the trade-off between taxi time and fuel consumption during taxiing. The approach consists of a combination of a graph-based routing algorithm and a population adaptive immune algorithm to discover different speed profiles of aircraft. Analysis with data from a European hub airport has highlighted the impressive performance of the new approach. Furthermore, it is shown that the trade-off between taxi time and fuel consumption is very sensitive to the fuel-related objective function which is used.</p>

History

School affiliated with

  • School of Engineering (Research Outputs)

Publisher

Organized by Department of Transport Engineering and Logistics of the Pontificia Universidad Católica de Chile

Date Submitted

2012-08-19

Date Accepted

2012-07-01

Date of First Publication

2012-07-01

Date of Final Publication

2012-07-01

Event Name

Conference on Advanced Systems for Public Transport (CASPT12)

Event Dates

23-27 July 2012

Date Document First Uploaded

2013-03-13

ePrints ID

6062

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