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A robust neural network-based approach for microseismic event detection
32
Citations
8
References
2017
Year
Unknown Venue
EngineeringMachine LearningDisaster DetectionRecurrent Neural NetworkData SciencePattern RecognitionSignal DetectionEarthquake ForecastingEvent ProcessingEarthquake EngineeringRobust Event DetectionStructural Health MonitoringEvent DetectionTemporal Pattern RecognitionWaveform AnalysisComputer ScienceSignal ProcessingComputer VisionSeismologyMicroseismic Event DetectionSeismic HazardArtificial Neural Network
We present an artificial neural network based approach for robust event detection from low S/N waveforms. We use a feed-forward network with a single hidden layer that is tuned on a training dataset and later applied on the entire example dataset for event detection. The input features used include the average of absolute amplitudes, variance, energy-ratio and polarization rectilinearity. These features are calculated in a moving-window of same length for the entire waveform. The output is set as a user-specified relative probability curve, which provides a robust way of distinguishing between weak and strong events. An optimal network is selected by studying the weight-based saliency and effect of number of neurons on the predicted results. Using synthetic data examples, we demonstrate that this approach is effective in detecting weaker events and reduces the number of false positives. Presentation Date: Tuesday, September 26, 2017 Start Time: 11:00 AM Location: Exhibit Hall C/D Presentation Type: POSTER
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