Litcius/Paper detail

PolarCAP – A deep learning approach for first motion polarity classification of earthquake waveforms

Megha Chakraborty, Claudia Quinteros-Cartaya, Wei Li, Johannes Faber, Georg Rümpker, Horst Stoecker, Nishtha Srivastava

2022Artificial Intelligence in Geosciences12 citationsDOIOpen Access PDF

Abstract

The polarity of first P-wave arrivals plays a significant role in the effective determination of focal mechanisms specially for smaller earthquakes. Manual estimation of polarities is not only time-consuming but also prone to human errors. This warrants a need for an automated algorithm for first motion polarity determination. We present a deep learning model - PolarCAP that uses an autoencoder architecture to identify first-motion polarities of earth-quake waveforms. PolarCAP is trained in a supervised fashion using more than 130,000 labelled traces from the Italian seismic dataset (INSTANCE) and is cross-validated on 22,000 traces to choose the most optimal set of hyperparameters. We obtain an accuracy of 0.98 on a completely unseen test dataset of almost 33,000 traces. Furthermore, we check the model generalizability by testing it on the datasets provided by previous works and show that our model achieves a higher recall on both positive and negative polarities.

Topics & Concepts

Generalizability theoryComputer scienceHyperparameterArtificial intelligenceAutoencoderDeep learningMotion (physics)Test setQuake (natural phenomenon)Polarity (international relations)Precision and recallPattern recognition (psychology)Set (abstract data type)WaveformMachine learningSeismologyGeologyMathematicsStatisticsRadarBiologyTelecommunicationsCellGeneticsProgramming languageSeismology and Earthquake StudiesEarthquake Detection and Analysisearthquake and tectonic studies