A Bayesian Augmented-Learning framework for spectral uncertainty quantification of incomplete records of stochastic processes

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dc.identifier.uri http://dx.doi.org/10.15488/17288
dc.identifier.uri https://www.repo.uni-hannover.de/handle/123456789/17416
dc.contributor.author Chen, Yu
dc.contributor.author Patelli, Edoardo
dc.contributor.author Edwards, Benjamin
dc.contributor.author Beer, Michael
dc.date.accessioned 2024-04-30T10:33:34Z
dc.date.available 2024-04-30T10:33:34Z
dc.date.issued 2023
dc.identifier.citation Chen, Y.; Patelli, E.; Edwards, B.; Beer, M.: A Bayesian Augmented-Learning framework for spectral uncertainty quantification of incomplete records of stochastic processes. In: Mechanical Systems and Signal Processing 200 (2023), 110573. DOI: https://doi.org/10.1016/j.ymssp.2023.110573
dc.description.abstract A novel Bayesian Augmented-Learning framework, quantifying the uncertainty of spectral representations of stochastic processes in the presence of missing data, is developed. The approach combines additional information (prior domain knowledge) of the physical processes with real, yet incomplete, observations. Bayesian deep learning models are trained to learn the underlying stochastic process, probabilistically capturing temporal dynamics, from the physics-based pre-simulated data. An ensemble of time domain reconstructions are provided through recurrent computations using the learned Bayesian models. Models are characterized by the posterior distribution of model parameters, whereby uncertainties over learned models, reconstructions and spectral representations are all quantified. In particular, three recurrent neural network architectures, (namely long short-term memory, or LSTM, LSTM-Autoencoder, LSTM-Autoencoder with teacher forcing mechanism), which are implemented in a Bayesian framework through stochastic variational inference, are investigated and compared under many missing data scenarios. An example from stochastic dynamics pertaining to the characterization of earthquake-induced stochastic excitations even when the source load data records are incomplete is used to illustrate the framework. Results highlight the superiority of the proposed approach, which adopts additional information, and the versatility of outputting many forms of results in a probabilistic manner. eng
dc.language.iso eng
dc.publisher Amsterdam [u.a.] : Elsevier
dc.relation.ispartofseries Mechanical Systems and Signal Processing 200 (2023)
dc.rights CC BY 4.0 Unported
dc.rights.uri https://creativecommons.org/licenses/by/4.0
dc.subject AutoEncoder eng
dc.subject Bayesian deep learning eng
dc.subject Evolutionary power spectrum eng
dc.subject Missing data eng
dc.subject Stochastic variational inference eng
dc.subject.ddc 004 | Informatik
dc.title A Bayesian Augmented-Learning framework for spectral uncertainty quantification of incomplete records of stochastic processes eng
dc.type Article
dc.type Text
dc.relation.essn 1096-1216
dc.relation.issn 0888-3270
dc.relation.doi https://doi.org/10.1016/j.ymssp.2023.110573
dc.bibliographicCitation.volume 200
dc.bibliographicCitation.firstPage 110573
dc.description.version publishedVersion eng
tib.accessRights frei zug�nglich
dc.bibliographicCitation.articleNumber 110573


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