Cofund 2 - Additional joint call: Towards prediction of operational lifetime of perovskite photovoltaics: Acceleration factors in stability study through machine learning - PrOperPhotoMiLe

dc.contributor.authorGagliardi, Alessio
dc.contributor.authorKouroudis, Ioannis
dc.date.accessioned2025-08-21T16:55:57Z
dc.date.available2025-08-21T16:55:57Z
dc.date.issued2025-08-21
dc.description.abstractHalide perovskite solar cells (PSCs) have revolutionized the photovoltaic arena providing power conversion efficiencies currently above 25 %, low cost and ease of fabrication. Their low-weight, semi-transparency and flexibility make them ideal energy sources for applications in self-powered devices required for the future internet of things (IoT). Their combination in tandem architectures with Silicon solar cells will permit building terawatt-scale energy production required for low-carbon economy, shaping the energy future of our society. However, the limited lifetime of PSC is a drawback for the deployment and commercialization of this technology. Accelerated stability testing is needed to identify promising materials and device architectures, as well as to predict the expected PSC lifetime. Despite world-wide efforts in stability related investigations, large variability is noted between different devices, experimental procedures and parameters reported, making the required analysis extremely challenging. We have recently published a consensus on how to test PSCs for stability, and how to accurately report data, setting the base for international concerted efforts. However, correlating large amounts of data is still a challenge. Towards that end, herein we propose to join forces with the emerging field of big data analysis using automated machine learning. This interdisciplinary research is aimed at developing an automated scheme for analysing PSC stability data, generated using standardized accelerated testing. Such analysis will determine the accelerated test most relevant to normal operating conditions, as well as the acceleration factor (which relates the measured stability parameters with PSC operational lifetimes) and expected PSC lifetimes. The results will be used to train multiple Machine learning models to both shed light to the mechanisms as well as speed up the fabrication and characterization process. The knowledge gained will be implemented to strengthen the productivity and competitiveness of European PV industry, as well as within the PSC research and manufacturing sector.ger
dc.description.versionpublishedVersion
dc.identifier.urihttps://oa.tib.eu/renate/handle/123456789/21515
dc.identifier.urihttps://doi.org/10.34657/20532
dc.language.isoeng
dc.publisherHannover : Technische Informationsbibliothek
dc.relation.affiliationTechnische Universität München
dc.rights.licenseCreative Commons Attribution-NonDerivs 3.0 Germany
dc.rights.urihttps://creativecommons.org/licenses/by-nd/3.0/de/
dc.subject.ddc600
dc.titleCofund 2 - Additional joint call: Towards prediction of operational lifetime of perovskite photovoltaics: Acceleration factors in stability study through machine learning - PrOperPhotoMiLeeng
dc.title.alternativeVerbundvorhaben: PrOperPhotoMile - Auf dem Weg zur Vorhersage der Betriebslebensdauer von Perowskit-Photovoltaik; Teilvorhaben: Ermittlung von Beschleunigungsfaktoren in Perowskit-Photovoltaik durch maschinelles Lernenger
dc.title.subtitleFinal report
dc.typeReport
dc.typeText
dcterms.event.date01.10.2020-31.12.2024
dcterms.extent12 Seiten
dtf.funding.funderBMWE
dtf.funding.program03EE1070A
dtf.funding.verbundnummer01217814
tib.accessRightsopenAccess

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