Efficient wave type fingerprinting and filtering by six-component polarization analysis
David Sollberger, Nicholas Bradley, Pascal Edme, Johan O. A., Robertsson

TL;DR
This paper introduces an automated, machine learning-based method for classifying seismic wave types using six-component polarization analysis, enabling rapid and accurate phase identification in large datasets for various seismic applications.
Contribution
The authors develop a novel approach combining eigenanalysis and support vector machines for automatic wave type classification from six-component seismic data, improving efficiency and accuracy over traditional methods.
Findings
Effective classification of seismic wave types in real and synthetic data.
Enhanced ability to extract wave parameters without complex optimization.
Demonstrated applications in phase picking, noise suppression, and dispersion curve extraction.
Abstract
We present a technique to automatically classify the wave type of seismic phases that are recorded on a single six-component recording station (measuring both three components of translational and rotational ground motion) at the earth's surface. We make use of the fact that each wave type leaves a unique 'fingerprint' in the six-component motion of the sensor. This fingerprint can be extracted by performing an eigenanalysis of the data covariance matrix, similar to conventional three-component polarization analysis. To assign a wave type to the fingerprint extracted from the data, we compare it to analytically derived six-component polarization models that are valid for pure-state plane wave arrivals. For efficient classification, we make use of the supervised machine learning method of support vector machines that is trained using data-independent, analytically-derived six-component…
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Taxonomy
TopicsGeophysics and Sensor Technology · Seismic Waves and Analysis · Seismology and Earthquake Studies
