Skip to Main Content
Skip Nav Destination
GEOREF RECORD

Explosion discrimination using seismic gradiometry and spectral filtering of data

Cristian Challu, Christian Poppeliers, Predrag Punosevac and Artur Dubrawski
Explosion discrimination using seismic gradiometry and spectral filtering of data
Bulletin of the Seismological Society of America (June 2021) 111 (3): 1365-1377

Abstract

We present a new method to discriminate between earthquakes and buried explosions using observed seismic data. The method is different from previous seismic discrimination algorithms in two main ways. First, we use seismic spatial gradients, as well as the wave attributes estimated from them (referred to as gradiometric attributes), rather than the conventional three-component seismograms recorded on a distributed array. The primary advantage of this is that a gradiometer is only a fraction of a wavelength in aperture compared with a conventional seismic array or network. Second, we use the gradiometric attributes as input data into a machine learning algorithm. The resulting discrimination algorithm uses the norms of truncated principal components obtained from the gradiometric data to distinguish the two classes of seismic events. Using high-fidelity synthetic data, we show that the data and gradiometric attributes recorded by a single seismic gradiometer performs as well as a conventional distributed array at the event type discrimination task.


ISSN: 0037-1106
EISSN: 1943-3573
Coden: BSSAAP
Serial Title: Bulletin of the Seismological Society of America
Serial Volume: 111
Serial Issue: 3
Title: Explosion discrimination using seismic gradiometry and spectral filtering of data
Affiliation: Carnegie Mellon University, School of Computer Science, Auton Lab, Pittsburgh, PA, United States
Pages: 1365-1377
Published: 202106
Text Language: English
Publisher: Seismological Society of America, Berkeley, CA, United States
References: 37
Accession Number: 2021-065944
Categories: Seismology
Document Type: Serial
Bibliographic Level: Analytic
Illustration Description: illus. incl. 1 table
Secondary Affiliation: Sandia National Laboratories, USA, United States
Country of Publication: United States
Secondary Affiliation: GeoRef, Copyright 2021, American Geosciences Institute. Abstract, Copyright, Seismological Society of America. Reference includes data from GeoScienceWorld, Alexandria, VA, United States
Update Code: 202121
Close Modal

or Create an Account

Close Modal
Close Modal