Litcius/Paper detail

Event Location with Sparse Data: When Probabilistic Global Search is Important

Stephen Arrowsmith, Junghyun Park, Il‐Young Che, Brian W. Stump, Gil Averbuch

2020Seismological Research Letters25 citationsDOI

Abstract

Abstract Locating events with sparse observations is a challenge for which conventional seismic location techniques are not well suited. In particular, Geiger’s method and its variants do not properly capture the full uncertainty in model parameter estimates, which is characterized by the probability density function (PDF). For sparse observations, we show that this PDF can deviate significantly from the ellipsoidal form assumed in conventional methods. Furthermore, we show how combining arrival time and direction-of-arrival constraints—as can be measured by three-component polarization or array methods—can significantly improve the precision, and in some cases reduce bias, in location solutions. This article explores these issues using various types of synthetic and real data (including single-component seismic, three-component seismic, and infrasound).

Topics & Concepts

Probabilistic logicComponent (thermodynamics)Computer sciencePolarization (electrochemistry)AlgorithmProbability density functionEllipsoidEvent (particle physics)Arrival timeData miningPattern recognition (psychology)GeologyMathematicsStatisticsArtificial intelligenceGeodesyPhysicsEngineeringQuantum mechanicsThermodynamicsPhysical chemistryTransport engineeringChemistrySeismic Waves and AnalysisSeismic Imaging and Inversion Techniquesearthquake and tectonic studies