STFT-LDA: An algorithm to facilitate the visual analysis of building seismic responses
Author
Zhao, ZhengeMotta, Danilo
Berger, Matthew
Levine, Joshua A
Kuzucu, Ismail B
Fleischman, Robert B
Paiva, Afonso
Scheidegger, Carlos
Affiliation
Department of Computer Science, University of ArizonaDepartment of Civil Engineering, University of Arizona
Issue Date
2021-08-21
Metadata
Show full item recordPublisher
SAGE PublicationsCitation
Zhao, Z., Motta, D., Berger, M., Levine, J. A., Kuzucu, I. B., Fleischman, R. B., Paiva, A., & Scheidegger, C. (2021). STFT-LDA: An algorithm to facilitate the visual analysis of building seismic responses. Information Visualization, 20(4), 263–282.Journal
Information VisualizationRights
© The Author(s) 2021.Collection Information
This item from the UA Faculty Publications collection is made available by the University of Arizona with support from the University of Arizona Libraries. If you have questions, please contact us at repository@u.library.arizona.edu.Abstract
Civil engineers use numerical simulations of a building’s responses to seismic forces to understand the nature of building failures, the limitations of building codes, and how to determine the latter to prevent the former. Such simulations generate large ensembles of multivariate, multiattribute time series. Comprehensive understanding of this data requires techniques that support the multivariate nature of the time series and can compare behaviors that are both periodic and non-periodic across multiple time scales and multiple time series themselves. In this paper, we present a novel technique to extract such patterns from time series generated from simulations of seismic responses. The core of our approach is the use of topic modeling, where topics correspond to interpretable and discriminative features of the earthquakes. We transform the raw time series data into a time series of topics, and use this visual summary to compare temporal patterns in earthquakes, query earthquakes via the topics across arbitrary time scales, and enable details on demand by linking the topic visualization with the original earthquake data. We show, through a surrogate task and an expert study, that this technique allows analysts to more easily identify recurring patterns in such time series. By integrating this technique in a prototype system, we show how it enables novel forms of visual interaction.Note
Immediate accessISSN
1473-8716EISSN
1473-8724Version
Final accepted manuscriptSponsors
national science foundationae974a485f413a2113503eed53cd6c53
10.1177/14738716211038618