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      Modeling spatially correlated spectral accelerations at multiple periods using principal component analysis and geostatistics

      1 , 1 , 1
      Earthquake Engineering & Structural Dynamics
      Wiley

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          Summary

          Regional seismic risk assessments and quantification of portfolio losses often require simulation of spatially distributed ground motions at multiple intensity measures. For a given earthquake, distributed ground motions are characterized by spatial correlation and correlation between different intensity measures, known as cross‐correlation. This study proposes a new spatial cross‐correlation model for within‐event spectral acceleration residuals that uses a combination of principal component analysis (PCA) and geostatistics. Records from 45 earthquakes are used to investigate earthquake‐to‐earthquake trends in application of PCA to spectral acceleration residuals. Based on the findings, PCA is used to determine coefficients that linearly transform cross‐correlated residuals to independent principal components. Nested semivariogram models are then fit to empirical semivariograms to quantify the spatial correlation of principal components. The resultant PCA spatial cross‐correlation model is shown to be accurate and computationally efficient. A step‐by‐step procedure and an example are presented to illustrate the use of the predictive model for rapid simulation of spatially cross‐correlated spectral accelerations at multiple periods.

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          Multivariate Geostatistics

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            NGA-West2 Equations for Predicting PGA, PGV, and 5% Damped PSA for Shallow Crustal Earthquakes

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                Author and article information

                Contributors
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                Journal
                Earthquake Engineering & Structural Dynamics
                Earthq Engng Struct Dyn
                Wiley
                0098-8847
                1096-9845
                April 25 2018
                January 14 2018
                April 25 2018
                : 47
                : 5
                : 1107-1123
                Affiliations
                [1 ] Department of Civil and Environmental Engineering Stanford University Stanford CA 94305‐4020 U.S.A.
                Article
                10.1002/eqe.3007
                faee31e7-4392-47b5-b77e-46dd3cc28b39
                © 2018

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