Please use this identifier to cite or link to this item: http://hdl.handle.net/11667/114
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dc.contributorBrownlee, Alexander-
dc.contributor.otherEPSRC - Engineering and Physical Sciences Research Councilen_GB
dc.coverage.spatialManchester Airporten_GB
dc.creatorBrownlee, Alexander E I-
dc.creatorWeiszer, Michael-
dc.creatorChen, Jun-
dc.creatorRavizza, Stefan-
dc.creatorWoodward, John R-
dc.creatorBurke, Edmund K-
dc.date.accessioned2018-05-01T07:54:01Z-
dc.date.available2018-05-01T07:54:01Z-
dc.date.created2018-02-
dc.identifier.urihttp://hdl.handle.net/11667/114-
dc.description.abstractAllocating efficient routes to taxiing aircraft, known as the Ground Movement problem, is increasingly important as air traffic levels continue to increase. If taxiways cannot be reliably traversed quickly, aircraft can miss valuable assigned slots at the runway or can waste fuel waiting for other aircraft to clear. Efficient algorithms for this problem have been proposed, but little work has considered the uncertainties inherent in the domain. This paper proposes an adaptive Mamdani fuzzy rule based system to estimate taxi times and their uncertainties. Furthermore, the existing Quickest Path Problem with Time Windows (QPPTW) algorithm is adapted to use fuzzy taxi time estimates. Experiments with simulated taxi movements at Manchester Airport, the third-busiest in the UK, show the new approach produces routes that are more robust, reducing delays due to uncertain taxi times by 10-20% over the original QPPTW. The raw aircraft movement data cannot be shared due to licensing restrictions: this set contains the speed data, traffic and layout scenarios, and experimental results.en_GB
dc.description.tableofcontentsData for the paper "A Fuzzy Approach to Addressing Uncertainty in Airport Ground Movement Optimisation in 1 file folder called: ForDataRepo.zip. Dedicated UnZip software is recommended for accessing the dataset, for example, IZArc.en_GB
dc.publisherUniversity of Stirling. Faculty of Natural Sciencesen_GB
dc.relationBrownlee, AEI; Weiszer, M; Chen, J; Ravizza, S; Woodward, JR, Burke, EK (2018): Data for the paper "A Fuzzy Approach to Addressing Uncertainty in Airport Ground Movement Optimisation". University of Stirling. Faculty of Natural Sciences. Dataset. http://hdl.handle.net/11667/114en_GB
dc.relation.isreferencedbyBrownlee, A.E.I., Weiszer, M., Chen, J., Ravizza, S., Woodward, J.R. and Burke, E.K. (2018) A Fuzzy Approach to Addressing Uncertainty in Airport Ground Movement Optimisation, Transportation Research Part C: Emerging Technologies, 94, pp. 150-175. https://doi.org/10.1016/j.trc.2018.04.020 Available from: http://hdl.handle.net/1893/27123en_GB
dc.rightsRights covered by the standard CC-BY 4.0 licence: https://creativecommons.org/licenses/by/4.0/en_GB
dc.subjectRoutingen_GB
dc.subjectSchedulingen_GB
dc.subjectAirport Operationsen_GB
dc.subjectOptimizationen_GB
dc.subjectTaxiingen_GB
dc.subjectGround Movementen_GB
dc.subjectUncertaintyen_GB
dc.subject.classification::Information and communication technologies::Artificial Intelligence Technologies::Optimisation (AI)en_GB
dc.titleData for the paper "A Fuzzy Approach to Addressing Uncertainty in Airport Ground Movement Optimisation"en_GB
dc.typedataseten_GB
dc.contributor.emailsbr@cs.stir.ac.uken_GB
dc.identifier.rmsid1246en_GB
dc.identifier.rmsid1067en_GB
dc.identifier.rmsid2062en_GB
dc.identifier.projectidEP/H004424/2en_GB
dc.identifier.projectidEP/J017515/1en_GB
dc.identifier.projectidEP/N029496/2en_GB
dc.identifier.projectidEP/N029577/1en_GB
dc.title.projectSANDPIT: Integrating and Automating Airport Operationsen_GB
dc.title.projectDAASE: Dynamic Adaptive Automated Software Engineeringen_GB
dc.title.projectTRANSIT: Towards a Robust Airport Decision Support Systemen_GB
dc.contributor.affiliationUniversity of Stirling (Computing Science - CSM Dept)en_GB
dc.contributor.affiliationQueen Mary University of Londonen_GB
dc.contributor.affiliationIBM Global Business Servicesen_GB
dc.date.publicationyear2018en_GB
Appears in Collections:University of Stirling Research Data

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