<?xml version="1.0" encoding="UTF-8"?><?xml-stylesheet type="text/xsl" href="static/style.xsl"?><OAI-PMH xmlns="http://www.openarchives.org/OAI/2.0/" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xsi:schemaLocation="http://www.openarchives.org/OAI/2.0/ http://www.openarchives.org/OAI/2.0/OAI-PMH.xsd"><responseDate>2026-06-21T22:18:34Z</responseDate><request verb="GetRecord" identifier="oai:riubu.ubu.es:10259/6997" metadataPrefix="marc">https://riubu.ubu.es/oai/request</request><GetRecord><record><header><identifier>oai:riubu.ubu.es:10259/6997</identifier><datestamp>2024-05-20T09:43:09Z</datestamp><setSpec>com_10259.4_104</setSpec><setSpec>com_10259_2604</setSpec><setSpec>col_10259_6848</setSpec></header><metadata><record xmlns="http://www.loc.gov/MARC21/slim" xmlns:doc="http://www.lyncode.com/xoai" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xmlns:dcterms="http://purl.org/dc/terms/" xsi:schemaLocation="http://www.loc.gov/MARC21/slim http://www.loc.gov/standards/marcxml/schema/MARC21slim.xsd">
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<datafield tag="720" ind1=" " ind2=" ">
<subfield code="a">Tenorio, Víctor M.</subfield>
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<subfield code="a">García Marqués, Antonio</subfield>
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<subfield code="a">Cadarso, Luis</subfield>
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<subfield code="c">2021-07</subfield>
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<subfield code="a">As data quality and quantity increase, the prediction of future events using machine learning&#xd;
(ML) techniques across engineering disciplines grows by the day. Air transportation cannot&#xd;
be an exception. Delay prediction is paramount in the aerospace industry, since air traffic&#xd;
delays are responsible for millions of dollars in losses to airlines and passengers, along with&#xd;
negative impacts on the environment. In this contribution, we leverage recent signal&#xd;
processing and ML advances to put forth a processing-and-learning pipeline for the&#xd;
prediction of air traffic delays. The proposed approach is executed in several steps. Firstly,&#xd;
we apply signal processing and data science techniques to filter and denoise the original&#xd;
information. Secondly, we run a descriptive analysis of the data and design new features&#xd;
tailored to the prediction problem. Thirdly, we implement a scheme to select the most&#xd;
informative of those features, contributing to a better generalization performance, and&#xd;
offering useful insights. Two algorithms are used to that end: one based on random forests&#xd;
and one employing a sparse logistic regression approach. Finally, once the features are&#xd;
selected, we implement, analyse, and compare several ML architectures (from classical&#xd;
classifiers to deep learning) to predict the delay. While the focus of the comparison is&#xd;
prediction accuracy, metrics such as sample and computational complexity are also&#xd;
discussed. Numerical experiments are drawn from the US domestic market for the year 2018,&#xd;
when more than 7 million flights between 358 airports were flown. The designed&#xd;
processing/learning pipeline reveals interesting insights and achieves better prediction&#xd;
results than the state of the art. The results confirm that air traffic delay prediction is a&#xd;
challenging problem, mainly because the delay is extremely airport-dependent and the data&#xd;
is highly unbalanced (i.e., only a small percentage of flights are noticeable delayed), and&#xd;
identify worth-pursuing future lines of work.</subfield>
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<subfield code="a">978-84-18465-12-3</subfield>
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<subfield code="a">http://hdl.handle.net/10259/6997</subfield>
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<subfield code="a">10.36443/10259/6997</subfield>
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<subfield code="a">Industria aérea</subfield>
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<subfield code="a">Airline industry</subfield>
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<subfield code="a">Signal processing and machine learning for air traffic delay prediction</subfield>
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