The 2021 SSJ Fall Meeting

Presentation information

Room B

Special session » S23. Deepening seismic data analysis and modeling based on Bayesian statistics

AM-2

Thu. Oct 14, 2021 11:00 AM - 12:15 PM ROOM B (ROOM B)

chairperson:Hiromichi Nagao(Earthquake Research Institute, The University of Tokyo), Aitaro Kato(Earthquake Research Institute, the University of Tokyo)

11:40 AM - 12:00 PM

[S23-09] [Invited] A Bayesian framework for Earthquake Early Warning

〇Stephen Wu1 (1.The Institute of Statistical Mathematics)

Earthquake early warning (EEW) systems are designed to rapidly analyze real-time seismic data and report occurrence of earthquakes before strong shaking is felt at a site. EEW has been implemented in many seismically active regions around the world, yet there are still many challenges to be solve in order to achieve faster and more accurate strong shaking warning. Two of the key challenges of EEW include: (1) prediction of fault rupture using only the first few seconds of seismic wave data is highly uncertain, and (2) existing ground motion prediction equations that are computationally fast enough for EEW are highly uncertain. A natural solution to handle these uncertainties is to apply a fully Bayesian framework to EEW, but the typically high computational demand in Bayesian inference has been a bottleneck. In this presentation, I will introduce multiple attempts to design efficient EEW algorithms based on a Bayesian framework, including the seismic source inversion problem, ground motion prediction problem, and decision-making of emergency response under different source of uncertainties.