Publication | Open Access
An unsupervised learning algorithm: application to the discrimination of seismic events and quarry blasts in the vicinity of Istanbul
66
Citations
20
References
2011
Year
EngineeringMachine LearningSeismic WaveNeural NetworkDisaster DetectionUnsupervised Machine LearningImage AnalysisData ScienceData MiningPattern RecognitionQuarry BlastsUnsupervised LearningSelf-organizing MapEarthquake ForecastingInstance-based LearningEarthquake EngineeringGeographyKnowledge DiscoveryStructural Health MonitoringSeismic EventsComputer ScienceData ClassificationSeismologyCivil EngineeringSelf Organizing MapUnsupervised Learning AlgorithmClassifier SystemSeismic Hazard
Abstract. The results of the application of an unsupervised learning (neural network) approach comprising a Self Organizing Map (SOM), to distinguish micro-earthquakes from quarry blasts in the vicinity of Istanbul, Turkey, are presented and discussed. The SOM is constructed as a neural classifier and complementary reliability estimator to distinguish seismic events, and was employed for varying map sizes. Input parameters consisting of frequency and time domain data (complexity, spectral ratio, S/P wave amplitude peak ratio and origin time of events) extracted from the vertical components of digital seismograms were estimated as discriminants for 179 (1.8 < Md < 3.0) local events. The results show that complexity and amplitude peak ratio parameters of the observed velocity seismogram may suffice for a reliable discrimination, while origin time and spectral ratio were found to be fuzzy and misleading classifiers for this problem. The SOM discussed here achieved a discrimination reliability that could be employed routinely in observatory practice; however, about 6% of all events were classified as ambiguous cases. This approach was developed independently for this particular classification, but it could be applied to different earthquake regions.
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