MCE Ph.D. Thesis Seminar
Gates-Thomas 135
Real-Time Bayesian Analysis of Ground Motion Envelopes for Earthquake Early Warning
Gokcan Karakus,
Graduate Student,
Mechanical and Civil Engineering,
Caltech,
Current earthquake early warning systems usually make magnitude and location predictions and send out a warning to the users based on those predictions. We describe an algorithm that assesses the validity of the predictions in real-time. Our algorithm monitors the envelopes of horizontal and vertical acceleration, velocity, and displacement. We compare the observed envelopes with the ones predicted by Cua & Heaton's envelope ground motion prediction equations (Cua 2005). We define a "test function" as the logarithm of the ratio between observed and predicted envelopes at every second in real-time. Once the envelopes deviate beyond an acceptable threshold, we declare a misfit. Kurtosis and skewness of a time evolving test function are used to rapidly identify a misfit. Real-time kurtosis and skewness calculations are also inputs to both probabilistic (Logistic Regression and Bayesian Logistic Regression) and nonprobabilistic (Least Squares and Linear Discriminant Analysis) models that ultimately decide if there is an unacceptable level of misfit. This algorithm is designed to work at a wide range of amplitude scales; it works for both small and large events.
For more information, please contact Carolina Oseguera by phone at 626-395-4271 or by email at [email protected].
Event Series
Mechanical and Civil Engineering Seminar Series
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