High water events in Venice are a recurrent phenomenon, as the city is located only slightly above mean sea level and is directly in"uenced by water-level variations within the lagoon. Repeated "ooding has signi!cant economic and social impacts, limits pedestrian and naval tra#c and contributes to the degradation of buildings and cultural heritage. Current forecasting systems primarily estimate water levels and peak values, and these are typically estimated at a limited number of locations. Data-driven approaches, in particular Machine Learning (ML) methods, analyze historical data without relying on prede!ned, human-designed model structures. We present a preliminary analysis based on several clustering approaches, including k-means, DBSCAN, and deep learning–based methods, applied to a multi-decadal atmospheric dataset and to the longest available reconstructed hourly sea-level records for the northern Adriatic Sea, specifically developed for this study.

A preliminary analysis of high water events in Venice based on multi-decadal observations and clustering

Cardillo Franco Alberto
;
De Biasio Francesco;Debole Franca;Straccia Umberto;Vignudelli Stefano
2026

Abstract

High water events in Venice are a recurrent phenomenon, as the city is located only slightly above mean sea level and is directly in"uenced by water-level variations within the lagoon. Repeated "ooding has signi!cant economic and social impacts, limits pedestrian and naval tra#c and contributes to the degradation of buildings and cultural heritage. Current forecasting systems primarily estimate water levels and peak values, and these are typically estimated at a limited number of locations. Data-driven approaches, in particular Machine Learning (ML) methods, analyze historical data without relying on prede!ned, human-designed model structures. We present a preliminary analysis based on several clustering approaches, including k-means, DBSCAN, and deep learning–based methods, applied to a multi-decadal atmospheric dataset and to the longest available reconstructed hourly sea-level records for the northern Adriatic Sea, specifically developed for this study.
Campo DC Valore Lingua
dc.authority.orgunit Istituto di linguistica computazionale "Antonio Zampolli" - ILC en
dc.authority.orgunit Istituto di Scienza e Tecnologie dell'Informazione "Alessandro Faedo" - ISTI en
dc.authority.orgunit Istituto di Scienze Polari - ISP en
dc.authority.orgunit Istituto di Biofisica - IBF - Sede Secondaria Pisa en
dc.authority.people Cardillo Franco Alberto en
dc.authority.people Andrigo Angela en
dc.authority.people De Biasio Francesco en
dc.authority.people Debole Franca en
dc.authority.people Favaro Marco en
dc.authority.people Papa Alvise en
dc.authority.people Straccia Umberto en
dc.authority.people Vignudelli Stefano en
dc.authority.project Collaborazione scientifica ILC - CPSM - ISTI en
dc.collection.id.s 010b2614-196f-4b19-86fc-88182f427232 *
dc.collection.name 04.03 Poster in Atti di convegno *
dc.contributor.appartenenza Istituto di Biofisica - IBF - Sede Secondaria Pisa *
dc.contributor.appartenenza Istituto di Scienza e Tecnologie dell'Informazione "Alessandro Faedo" - ISTI *
dc.contributor.appartenenza Istituto di Scienze Polari - ISP *
dc.contributor.appartenenza Istituto di linguistica computazionale "Antonio Zampolli" - ILC *
dc.contributor.appartenenza.mi 846 *
dc.contributor.appartenenza.mi 918 *
dc.contributor.appartenenza.mi 973 *
dc.contributor.appartenenza.mi 1099 *
dc.contributor.area Non assegn *
dc.contributor.area Non assegn *
dc.contributor.area Non assegn *
dc.contributor.area Non assegn *
dc.contributor.area Non assegn *
dc.date.accessioned 2026/03/04 10:42:35 -
dc.date.available 2026/03/04 10:42:35 -
dc.date.firstsubmission 2026/03/04 10:34:10 *
dc.date.issued 2026 -
dc.date.submission 2026/03/04 12:37:27 *
dc.description.abstracteng High water events in Venice are a recurrent phenomenon, as the city is located only slightly above mean sea level and is directly in"uenced by water-level variations within the lagoon. Repeated "ooding has signi!cant economic and social impacts, limits pedestrian and naval tra#c and contributes to the degradation of buildings and cultural heritage. Current forecasting systems primarily estimate water levels and peak values, and these are typically estimated at a limited number of locations. Data-driven approaches, in particular Machine Learning (ML) methods, analyze historical data without relying on prede!ned, human-designed model structures. We present a preliminary analysis based on several clustering approaches, including k-means, DBSCAN, and deep learning–based methods, applied to a multi-decadal atmospheric dataset and to the longest available reconstructed hourly sea-level records for the northern Adriatic Sea, specifically developed for this study. -
dc.description.allpeople Cardillo, Franco Alberto; Andrigo, Angela; De Biasio, Francesco; Debole, Franca; Favaro, Marco; Papa, Alvise; Straccia, Umberto; Vignudelli, Stefano -
dc.description.allpeopleoriginal Cardillo Franco Alberto; Andrigo Angela; De Biasio Francesco; Debole Franca; Favaro Marco; Papa Alvise; Straccia Umberto; Vignudelli Stefano en
dc.description.fulltext open en
dc.description.international si en
dc.description.numberofauthors 8 -
dc.identifier.source manual *
dc.identifier.uri https://hdl.handle.net/20.500.14243/570943 -
dc.language.iso eng en
dc.relation.allauthors European Geosciences Union (EGU) en
dc.relation.conferencedate 3–8 May 2026 en
dc.relation.conferencename EGU General Assembly 2026 en
dc.relation.conferenceplace Vienna, Austria en
dc.relation.ispartofbook Proceedings of the EGU General Assembly 2026 en
dc.relation.issue 17357 en
dc.relation.medium ELETTRONICO en
dc.relation.numberofpages 1 en
dc.relation.projectAcronym - en
dc.relation.projectAwardNumber CNR Prot. 402948/2024; CNR Prot. 422687/2024 en
dc.relation.projectAwardTitle Collaborazione scientifica ILC - CPSM - ISTI en
dc.relation.projectFunderName - en
dc.relation.projectFundingStream - en
dc.subject.keywordseng Machine learning; Clustering -
dc.subject.singlekeyword Machine learning *
dc.subject.singlekeyword Clustering *
dc.title A preliminary analysis of high water events in Venice based on multi-decadal observations and clustering en
dc.type.driver info:eu-repo/semantics/conferenceObject -
dc.type.full 04 Contributo in convegno::04.03 Poster in Atti di convegno it
dc.type.miur 275 -
iris.mediafilter.data 2026/03/05 03:25:56 *
iris.orcid.lastModifiedDate 2026/03/04 15:31:38 *
iris.orcid.lastModifiedMillisecond 1772634698923 *
iris.sitodocente.maxattempts 1 -
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