<?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>2026-04-23T17:56:48Z</responseDate><request verb="GetRecord" identifier="oai:uvadoc.uva.es:10324/75222" metadataPrefix="mods">https://uvadoc.uva.es/oai/request</request><GetRecord><record><header><identifier>oai:uvadoc.uva.es:10324/75222</identifier><datestamp>2025-03-04T20:01:19Z</datestamp><setSpec>com_10324_43510</setSpec><setSpec>com_10324_954</setSpec><setSpec>com_10324_894</setSpec><setSpec>col_10324_43513</setSpec></header><metadata><mods:mods xmlns:mods="http://www.loc.gov/mods/v3" xmlns:doc="http://www.lyncode.com/xoai" xmlns:xsi="http://www.w3.org/2001/XMLSchema-instance" xsi:schemaLocation="http://www.loc.gov/mods/v3 http://www.loc.gov/standards/mods/v3/mods-3-1.xsd">
<mods:name>
<mods:namePart>Schwarz, Alexander</mods:namePart>
</mods:name>
<mods:name>
<mods:namePart>Rodríguez Rahal, Jhonny</mods:namePart>
</mods:name>
<mods:name>
<mods:namePart>Sahelices Fernández, Benjamín</mods:namePart>
</mods:name>
<mods:name>
<mods:namePart>Barroso García, Verónica</mods:namePart>
</mods:name>
<mods:name>
<mods:namePart>Weis, Ronny</mods:namePart>
</mods:name>
<mods:name>
<mods:namePart>Duque Antón, Simón</mods:namePart>
</mods:name>
<mods:extension>
<mods:dateAvailable encoding="iso8601">2025-03-04T12:47:49Z</mods:dateAvailable>
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<mods:extension>
<mods:dateAccessioned encoding="iso8601">2025-03-04T12:47:49Z</mods:dateAccessioned>
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<mods:originInfo>
<mods:dateIssued encoding="iso8601">2024</mods:dateIssued>
</mods:originInfo>
<mods:identifier type="citation">Artificial Intelligence Review, 2024, vol. 58, n.1</mods:identifier>
<mods:identifier type="uri">https://uvadoc.uva.es/handle/10324/75222</mods:identifier>
<mods:identifier type="doi">10.1007/s10462-024-11021-9</mods:identifier>
<mods:identifier type="publicationissue">1</mods:identifier>
<mods:identifier type="publicationtitle">Artificial Intelligence Review</mods:identifier>
<mods:identifier type="publicationvolume">58</mods:identifier>
<mods:identifier type="essn">1573-7462</mods:identifier>
<mods:abstract>Machine-learning-based predictive maintenance models, i.e. models that predict break-&#xd;
downs of machines based on condition information, have a high potential to minimize&#xd;
maintenance costs in industrial applications by determining the best possible time to per-&#xd;
form maintenance. Modern machines have sensors that can collect all relevant data of the&#xd;
operating condition and for legacy machines which are still widely used in the industry,&#xd;
retrofit sensors are readily, easily and inexpensively available. With the help of this data&#xd;
it is possible to train such a predictive maintenance model. The main problem is that&#xd;
most data is obtained from normal operating conditions, whereas only limited data are&#xd;
from failures. This leads to highly unbalanced data sets, which makes it very difficult,&#xd;
if not impossible, to train a predictive maintenance model that can detect faults reliably&#xd;
and timely. Another issue is the lack of available real data due to privacy concerns. To&#xd;
address these problems, a suitable data generation strategy is needed. In this work, a litera-&#xd;
ture review is conducted to identify a solution approach for a suitable data augmentation&#xd;
strategy that can be applied to our specific use case of hydrogen combustion engines in&#xd;
the automotive field. This literature review shows that, among the different state-of-the-art&#xd;
proposals, the most promising for the generation of reliable synthetic data are the ones&#xd;
based on generative models. The analysis of the different metrics used in the state of the&#xd;
art allows to identify the most suitable ones to evaluate the quality of generated signals.&#xd;
Finally, an open problem in research in this area is identified and it is the need to validate&#xd;
the plausibility of the data generated. The generation of results in this area will contribute&#xd;
decisively to the development of predictive maintenance models.</mods:abstract>
<mods:language>
<mods:languageTerm>eng</mods:languageTerm>
</mods:language>
<mods:accessCondition type="useAndReproduction">info:eu-repo/semantics/openAccess</mods:accessCondition>
<mods:accessCondition type="useAndReproduction">http://creativecommons.org/licenses/by/4.0/</mods:accessCondition>
<mods:accessCondition type="useAndReproduction">© 2024 The Author(s)</mods:accessCondition>
<mods:accessCondition type="useAndReproduction">Atribución 4.0 Internacional</mods:accessCondition>
<mods:titleInfo>
<mods:title>Data augmentation in predictive maintenance applicable to hydrogen combustion engines: a review</mods:title>
</mods:titleInfo>
<mods:genre>info:eu-repo/semantics/article</mods:genre>
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