Anomaly Detection and Imputation for Tartu Traffic Sensors

dc.contributor.advisorJakovits, Pelle, juhendaja
dc.contributor.authorPraks, Joonas
dc.contributor.otherTartu Ülikool. Loodus- ja täppisteaduste valdkondet
dc.contributor.otherTartu Ülikool. Arvutiteaduse instituutet
dc.date.accessioned2024-09-25T12:21:37Z
dc.date.available2024-09-25T12:21:37Z
dc.date.issued2024
dc.description.abstractThe city of Tartu has 16 highway traffic sensors with many gaps of missing data. We analyzed the state of the sensors’ data and evaluated different anomaly detection and imputation solutions to better its quality. The best anomaly detection approach was deemed to be daily clustering with local outlier factor (LOF) used as the clustering algorithm. For imputation we utilized linear interpolation with a combination of seasonal decomposition and seasonal splitting. The chosen solutions were integrated into a service that processes CSV files of traffic data and uploads the results to Cumulocity, an IoT data aggregation platform. We processed and uploaded the historical data of 2019-04-29 to 2023-06-01 of every highway sensor. Finally, we also tested our solution on light traffic data.
dc.description.abstract Tartu linnal on 16 maantee liiklussensorit, mille andmetes esineb mitmeid auke. Me andsime ülevaate andmete olukorrast ning hindasime mitmeid anomaaliatuvastus- ning andmeparandus-lahendusi. Anomaaliaid leidsime kõige paremini päevase klasterdamise abil kasutades LOF algoritmi. Imputeerimislahenduseks valisime lineaarse interpoleerimise kombineerides ajaandmetes leitud hooajalisi mustreid. Me integreerisime valitud meetodid teenusesse, mis töötleb CSV andmeid ning laeb tulemid üles Cumulocitysse, IoT andmete agregeerimisplatvormile. Me töötlesime ning laadisime teenuse abil üles sensorite ajaloolised andmed vahemikus 2019-04-29 kuni 2023-06-01. Lõpetuseks katsetasime oma lahendust ka kergliiklusandmetel.
dc.identifier.urihttps://hdl.handle.net/10062/104882
dc.language.isoest
dc.publisherTartu Ülikoolet
dc.rightsAttribution-NonCommercial-NoDerivs 3.0 Estoniaen
dc.rights.urihttp://creativecommons.org/licenses/by-nc-nd/3.0/ee/
dc.subjectsensor
dc.subjectTartu Smart City
dc.subjecttraffic
dc.subjectanomaly
dc.subjectoutlier
dc.subjectimputation
dc.subjectCumulocity
dc.subjectliiklus
dc.subjectanomaalia
dc.subjectimputeerimine
dc.subject.othermagistritöödet
dc.subject.otherinformaatikaet
dc.subject.otherinfotehnoloogiaet
dc.subject.otherinformaticsen
dc.subject.otherinfotechnologyen
dc.titleAnomaly Detection and Imputation for Tartu Traffic Sensors
dc.typeThesisen

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