Please use this identifier to cite or link to this item: http://hdl.handle.net/2122/14457
Authors: Jozinović, Dario* 
Lomax, Anthony* 
Štajduhar, Ivan* 
Michelini, Alberto* 
Title: Rapid Prediction of Earthquake Ground Shaking Intensity Using Raw Waveform Data and a Convolutional Neural Network
Journal: Geophysical Journal International 
Series/Report no.: /222 (2020)
Publisher: Oxford University Press
Issue Date: 17-Feb-2020
DOI: 10.1093/gji/ggaa233
Keywords: Physics - Geophysics; Physics - Geophysics
Subject Classification04.06. Seismology 
Abstract: This study describes a deep convolutional neural network (CNN) based technique for the prediction of intensity measurements (IMs) of ground shaking. The input data to the CNN model consists of multistation 3C broadband and accelerometric waveforms recorded during the 2016 Central Italy earthquake sequence for M $\ge$ 3.0. We find that the CNN is capable of predicting accurately the IMs at stations far from the epicenter and that have not yet recorded the maximum ground shaking when using a 10 s window starting at the earthquake origin time. The CNN IM predictions do not require previous knowledge of the earthquake source (location and magnitude). Comparison between the CNN model predictions and the predictions obtained with Bindi et al. (2011) GMPE (which require location and magnitude) has shown that the CNN model features similar error variance but smaller bias. Although the technique is not strictly designed for earthquake early warning, we found that it can provide useful estimates of ground motions within 15-20 sec after earthquake origin time depending on various setup elements (e.g., times for data transmission, computation, latencies). The technique has been tested on raw data without any initial data pre-selection in order to closely replicate real-time data streaming. When noise examples were included with the earthquake data, the CNN was found to be stable predicting accurately the ground shaking intensity corresponding to the noise amplitude.
Description: This article has been accepted for publication in Geophysical Journal International ©:The Author(s) 2020. Published by Oxford University Press on behalf of the Royal Astronomical Society. All rights reserved.Uploaded in accordance with the publisher's self-archiving policy. All rights reserved
Appears in Collections:Article published / in press

Files in This Item:
File Description SizeFormat
572CE5B6-81B5-43CC-B3BA-9CF7357A62EA.pdfarticolo4.12 MBAdobe PDFView/Open
Show full item record

Page view(s)

99
checked on Apr 17, 2024

Download(s)

5
checked on Apr 17, 2024

Google ScholarTM

Check

Altmetric