2023
DOI: 10.1002/eqe.4062
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An unsupervised machine learning approach for ground‐motion spectra clustering and selection

Robert Bailey Bond,
Pu Ren,
Jerome F. Hajjar
et al.

Abstract: Clustering analysis of sequence data continues to address many applications in engineering design, aided with the rapid growth of machine learning in applied science. This paper presents an unsupervised machine learning algorithm to extract defining characteristics of earthquake ground‐motion spectra, also called latent features, to aid in ground‐motion selection (GMS). In this context, a latent feature is a low‐dimensional machine‐discovered spectral characteristic learned through nonlinear relationships of a… Show more

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