Earthquake forecasting from paleoseismic records

Author:

Wang TingORCID,Griffin Jonathan D.ORCID,Brenna MarcoORCID,Fletcher David,Zeng Jiaxu,Stirling Mark,Dillingham Peter W.ORCID,Kang JieORCID

Abstract

AbstractForecasting large earthquakes along active faults is of critical importance for seismic hazard assessment. Statistical models of recurrence intervals based on compilations of paleoseismic data provide a forecasting tool. Here we compare five models and use Bayesian model-averaging to produce time-dependent, probabilistic forecasts of large earthquakes along 93 fault segments worldwide. This approach allows better use of the measurement errors associated with paleoseismic records and accounts for the uncertainty around model choice. Our results indicate that although the majority of fault segments (65/93) in the catalogue favour a single best model, 28 benefit from a model-averaging approach. We provide earthquake rupture probabilities for the next 50 years and forecast the occurrence times of the next rupture for all the fault segments. Our findings suggest that there is no universal model for large earthquake recurrence, and an ensemble forecasting approach is desirable when dealing with paleoseismic records with few data points and large measurement errors.

Funder

Ministry of Business, Innovation and Employment (MBIE), NZ; UOOX2206

Publisher

Springer Science and Business Media LLC

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