2022
DOI: 10.21203/rs.3.rs-1918996/v1
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Improvements to seismicity forecasting based on a Bayesian spatiotemporal ETAS model: Application to 2017-2019 Kermanshah seismic sequence in Western Iran

Abstract: The epidemic-type aftershock sequence (ETAS) model provides an effective tool for predicting the spatio-temporal evolution of aftershock clustering in short-term. Based on this model, a fully probabilistic procedure was previously proposed by the first two authors for providing spatio-temporal predictions of aftershock occurrence in a prescribed forecasting time interval. This procedure exploited the versatility of the Bayesian inference to adaptively update the forecasts based on the incoming information prov… Show more

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