Graph neural networks for multivariate time series regression with application to seismic data

DC ElementWertSprache
dc.contributor.authorBloemheuvel, Stefan
dc.contributor.authorvan den Hoogen, Jurgen
dc.contributor.authorJozinovic, Dario
dc.contributor.authorMichelini, Alberto
dc.contributor.authorAtzmueller, Martin
dc.date.accessioned2023-02-17T11:36:49Z-
dc.date.available2023-02-17T11:36:49Z-
dc.date.issued2022
dc.identifier.issn2364-415X
dc.identifier.urihttp://osnascholar.ub.uni-osnabrueck.de/handle/unios/65617-
dc.description.abstractMachine learning, with its advances in deep learning has shown great potential in analyzing time series. In many scenarios, however, additional information that can potentially improve the predictions is available. This is crucial for data that arise from e. g., sensor networks that contain information about sensor locations. Then, such spatial information can be exploited by modeling it via graph structures, along with the sequential (time series) information. Recent advances in adapting deep learning to graphs have shown potential in various tasks. However, these methods have not been adapted for time series tasks to a great extent. Most attempts have essentially consolidated around time series forecasting with small sequence lengths. Generally, these architectures are not well suited for regression or classification tasks where the value to be predicted is not strictly depending on the most recent values, but rather on the whole length of the time series. We propose TISER-GCN, a novel graph neural network architecture for processing, in particular, these long time series in a multivariate regression task. Our proposed model is tested on two seismic datasets containing earthquake waveforms, where the goal is to predict maximum intensity measurements of ground shaking at each seismic station. Our findings demonstrate promising results of our approach-with an average MSE reduction of 16.3%-compared to the best performing baselines. In addition, our approach matches the baseline scores by needing only half the input size. The results are discussed in depth with an additional ablation study.
dc.description.sponsorshipInterreg North-West Europe program (Interreg NWE), project Di-Plast -Digital Circular Economy for the Plastics Industry [NWE729]; project INGV Pianeta Dinamico 2021 Tema 8 SOME - Italian Ministry of University and Research ``Fondo finalizzato al rilancio degli investimenti delle amministrazioni centrali dello Stato e allo sviluppo del Paese [CUP D53J1900017001, legge 145/2018]; This work has been funded by the Interreg North-West Europe program (Interreg NWE), project Di-Plast -Digital Circular Economy for the Plastics Industry (NWE729). This work was also partially supported by the project INGV Pianeta Dinamico 2021 Tema 8 SOME (CUP D53J1900017001) funded by ItalianMinistry of University and Research ``Fondo finalizzato al rilancio degli investimenti delle amministrazioni centrali dello Stato e allo sviluppo del Paese, legge 145/2018.
dc.language.isoen
dc.publisherSPRINGERNATURE
dc.relation.ispartofINTERNATIONAL JOURNAL OF DATA SCIENCE AND ANALYTICS
dc.subjectComputer Science
dc.subjectComputer Science, Artificial Intelligence
dc.subjectComputer Science, Information Systems
dc.subjectConvolutional neural networks
dc.subjectEarthquake ground motion
dc.subjectEARTHQUAKE GROUND SHAKING
dc.subjectGraph neural networks
dc.subjectPREDICTION
dc.subjectRegression
dc.subjectSeismic network
dc.subjectSensors
dc.subjectTime series
dc.titleGraph neural networks for multivariate time series regression with application to seismic data
dc.typejournal article
dc.identifier.doi10.1007/s41060-022-00349-6
dc.identifier.isiISI:000847649700001
dc.identifier.eissn2364-4168
dc.publisher.placeCAMPUS, 4 CRINAN ST, LONDON, N1 9XW, ENGLAND
dcterms.isPartOf.abbreviationInt. J, Data Sci. Anal.
dcterms.oaStatushybrid, Green Submitted
local.import.remainsaffiliations : Tilburg University; Istituto Nazionale Geofisica e Vulcanologia (INGV); Italfarmaco; Roma Tre University; University Osnabruck; German Research Center for Artificial Intelligence (DFKI); Swiss Federal Institutes of Technology Domain; ETH Zurich
local.import.remainsearlyaccessdate : AUG 2022
local.import.remainsweb-of-science-index : Emerging Sources Citation Index (ESCI)
crisitem.author.deptFB 06 - Mathematik/Informatik/Physik-
crisitem.author.deptidfb6-
crisitem.author.parentorgUniversität Osnabrück-
crisitem.author.netidAtMa176-
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