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Exploring the dimensionality of ground-motion data by applying autoencoder techniques

  • In this article, we address the question of how observed ground-motion data can most effectively be modeled for engineering seismological purposes. Toward this goal, we use a data-driven method, based on a deep-learning autoencoder with a variable number of nodes in the bottleneck layer, to determine how many parameters are needed to reconstruct synthetic and observed ground-motion data in terms of their median values and scatter. The reconstruction error as a function of the number of nodes in the bottleneck is used as an indicator of the underlying dimensionality of ground-motion data, that is, the minimum number of predictor variables needed in a ground-motion model. Two synthetic and one observed datasets are studied to prove the performance of the proposed method. We find that mapping ground-motion data to a 2D manifold primarily captures magnitude and distance information and is suited for an approximate data reconstruction. The data reconstruction improves with an increasing number of bottleneck nodes of up to three and four,In this article, we address the question of how observed ground-motion data can most effectively be modeled for engineering seismological purposes. Toward this goal, we use a data-driven method, based on a deep-learning autoencoder with a variable number of nodes in the bottleneck layer, to determine how many parameters are needed to reconstruct synthetic and observed ground-motion data in terms of their median values and scatter. The reconstruction error as a function of the number of nodes in the bottleneck is used as an indicator of the underlying dimensionality of ground-motion data, that is, the minimum number of predictor variables needed in a ground-motion model. Two synthetic and one observed datasets are studied to prove the performance of the proposed method. We find that mapping ground-motion data to a 2D manifold primarily captures magnitude and distance information and is suited for an approximate data reconstruction. The data reconstruction improves with an increasing number of bottleneck nodes of up to three and four, but it saturates if more nodes are added to the bottleneck.zeige mehrzeige weniger

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Metadaten
Verfasserangaben:Reza Dokht Dolatabadi EsfahaniORCiDGND, Kristin VogelORCiDGND, Fabrice CottonORCiDGND, Matthias OhrnbergerORCiDGND, Frank ScherbaumORCiDGND, Marius KriegerowskiGND
DOI:https://doi.org/10.1785/0120200285
ISSN:0037-1106
ISSN:1943-3573
Titel des übergeordneten Werks (Englisch):Bulletin of the Seismological Society of America : BSSA
Verlag:Seismological Society of America
Verlagsort:El Cerito, Calif.
Publikationstyp:Wissenschaftlicher Artikel
Sprache:Englisch
Datum der Erstveröffentlichung:16.03.2021
Erscheinungsjahr:2021
Datum der Freischaltung:17.01.2024
Band:111
Ausgabe:3
Seitenanzahl:14
Erste Seite:1563
Letzte Seite:1576
Fördernde Institution:Deutsche Forschungsgemeinschaft (DFG) research training group Natural Hazards and Risks in a Changing World (NatRiskChange)German Research Foundation (DFG)
Organisationseinheiten:Mathematisch-Naturwissenschaftliche Fakultät / Institut für Geowissenschaften
DDC-Klassifikation:5 Naturwissenschaften und Mathematik / 55 Geowissenschaften, Geologie / 550 Geowissenschaften
Peer Review:Referiert
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