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Near-source magnitude scaling of spectral accelerations: analysis and update of Kotha et al. (2020) model

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Abstract

Ground-motion models (GMMs) are often used to predict the random distribution of Spectral accelerations (\(\mathrm{SAs}\)) at a site due to a nearby earthquake. In probabilistic seismic hazard and risk assessment, large earthquakes occurring close to a site are considered as critical scenarios. GMMs are expected to predict realistic \(\mathrm{SAs}\) with low within-model uncertainty (\({\upsigma }_{\upmu }\)) for such rare scenarios. However, the datasets used to regress GMMs are usually deficient of data from critical scenarios. The (Kotha et al., A Regionally Adaptable Ground-Motion Model for Shallow Crustal Earthquakes in Europe Bulletin of Earthquake Engineering 18:4091–4125, 2020) GMM developed from the Engineering strong motion (ESM) dataset was found to predict decreasing short-period \(\mathrm{SAs}\) with increasing \({M}_{W}\ge {\mathrm{M}}_{\mathrm{h}}=6.2\), and with large \({\upsigma }_{\upmu }\) at near-source distances \(\le 30\mathrm{km}\). In this study, we updated the parametrisation of the GMM based on analyses of ESM and the Near source strong motion (NESS) datasets. With \({\mathrm{M}}_{\mathrm{h}}=5.7\), we could rectify the \({M}_{W}\) scaling issue, while also reducing \({\upsigma }_{\upmu }\) at \({M}_{W}\ge {\mathrm{M}}_{\mathrm{h}}\). We then evaluated the GMM against NESS data, and found that the \(\mathrm{SAs}\) from a few large, thrust-faulting events in California, New Zealand, Japan, and Mexico are significantly higher than GMM median predictions. However, recordings from these events were mostly made on soft-soil geology, and contain anisotropic pulse-like effects. A more thorough non-ergodic treatment of NESS was not possible because most sites sampled unique events in very diverse tectonic environments. We provide an updated set of GMM coefficients,\({\upsigma }_{\upmu }\), and heteroscedastic variance models; while also cautioning against its application for \({M}_{W}\le 4\) in low-moderate seismicity regions without evaluating the homogeneity of \({M}_{W}\) estimates between pan-European ESM and regional datasets.

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Data availability

The pan-European Engineering Strong Motion flatfile is available at https://esm.mi.ingv.it//flatfile-2018/ with persistent identifier PID: 11,099/ESM_flatfile_2018. The NESS flatfiles are available at http://ness.mi.ingv.it/. The analyses in this study have been performed in R software (Team 2013). In addition to those cited in the main-text, we used the libraries dplyr (Wickham et al. 2019b), ggplot2 (Wickham et al. 2019a), ggmap (Kahle et al. 2019), viridis (Garnier 2019).

Code availability

All the scripts can be made available upon request.

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Acknowledgements

We thank both anonymous reviewers for their constructive feedback improving the manuscript. The model revision has benefitted immensely from feedback provided by the collaborators in Horizon 2020 “Seismology and Earthquake Engineering Research Infrastructure Alliance for Europe (SERA)” project with Grant Agreement No. 730900. A special thanks to Prof. Roberto Paolucci and his team for a thorough test of the model against BB-SPEEDset numerical simulations.

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Publication costs of the manuscript are supported by the Géophysique des Risques sismiques Et gravitaires (GRE) team at ISTerre, Grenoble 38000, France.

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Correspondence to Sreeram Reddy Kotha.

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Kotha, S.R., Weatherill, G., Bindi, D. et al. Near-source magnitude scaling of spectral accelerations: analysis and update of Kotha et al. (2020) model. Bull Earthquake Eng 20, 1343–1370 (2022). https://doi.org/10.1007/s10518-021-01308-5

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