A hybrid deep learning framework for unsupervised anomaly detection in multivariate spatio-temporal data

dc.authorscopusid 57215860375
dc.authorscopusid 8873732700
dc.authorscopusid 7801329641
dc.contributor.author Aydın, Mehmet Nafiz
dc.contributor.author Aydin,M.N.
dc.contributor.author Ög˘renci,A.S.
dc.contributor.other Management Information Systems
dc.date.accessioned 2024-10-15T19:42:06Z
dc.date.available 2024-10-15T19:42:06Z
dc.date.issued 2020
dc.department Kadir Has University en_US
dc.department-temp Karadayi Y., Computer Engineering, Kadir Has University, Istanbul, 34083, Turkey; Aydin M.N., Management Information Systems, Kadir Has University, Istanbul, 34083, Turkey; Ög˘renci A.S., Electrical-Electronics Engineering, Kadir Has University, Istanbul, 34083, Turkey en_US
dc.description.abstract Multivariate time-series data with a contextual spatial attribute have extensive use for finding anomalous patterns in a wide variety of application domains such as earth science, hurricane tracking, fraud, and disease outbreak detection. In most settings, spatial context is often expressed in terms of ZIP code or region coordinates such as latitude and longitude. However, traditional anomaly detection techniques cannot handle more than one contextual attribute in a unified way. In this paper, a new hybrid approach based on deep learning is proposed to solve the anomaly detection problem in multivariate spatio-temporal dataset. It works under the assumption that no prior knowledge about the dataset and anomalies are available. The architecture of the proposed hybrid framework is based on an autoencoder scheme, and it is more efficient in extracting features from the spatio-temporal multivariate datasets compared to the traditional spatio-temporal anomaly detection techniques. We conducted extensive experiments using buoy data of 2005 from National Data Buoy Center and Hurricane Katrina as ground truth. Experiments demonstrate that the proposed model achieves more than 10% improvement in accuracy over the methods used in the comparison where our model jointly processes the spatial and temporal dimensions of the contextual data to extract features for anomaly detection. © 2020 by the authors. en_US
dc.identifier.citationcount 24
dc.identifier.doi 10.3390/app10155191
dc.identifier.issn 2076-3417
dc.identifier.issue 15 en_US
dc.identifier.scopus 2-s2.0-85088858134
dc.identifier.scopusquality Q3
dc.identifier.uri https://doi.org/10.3390/app10155191
dc.identifier.uri https://hdl.handle.net/20.500.12469/6518
dc.identifier.volume 10 en_US
dc.identifier.wosquality Q2
dc.language.iso en en_US
dc.publisher MDPI AG en_US
dc.relation.ispartof Applied Sciences (Switzerland) en_US
dc.relation.publicationcategory Makale - Uluslararası Hakemli Dergi - Kurum Öğretim Elemanı en_US
dc.rights info:eu-repo/semantics/openAccess en_US
dc.scopus.citedbyCount 31
dc.subject CNN en_US
dc.subject Deep learning en_US
dc.subject Hurricane Katrina en_US
dc.subject Hurricane tracking en_US
dc.subject LSTM en_US
dc.subject Multivariate data en_US
dc.subject Spatio-temporal anomaly detection en_US
dc.subject Unsupervised learning en_US
dc.title A hybrid deep learning framework for unsupervised anomaly detection in multivariate spatio-temporal data en_US
dc.type Article en_US
dspace.entity.type Publication
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