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Automatic Classification of Microseismic Records in Underground Mining: A Deep Learning Approach

Pingan Peng, Zhengxiang He, Liguan Wang, Yuanjian Jiang

2020IEEE Access36 citationsDOIOpen Access PDF

Abstract

The identification of suspicious microseismic events is the first crucial step in processing microseismic data. In this paper, we present an automatic classification method based on a deep learning approach for classifying microseismic records in underground mines. A total of 35 commonly used features in the time and frequency domains were extracted from waveforms. To examine the discriminative ability of these features, a genetic algorithm (GA)-optimized correlation-based feature selection (CFS) method was applied. As a result, 11 features were selected to represent microseismic records. By dividing each microseismic record into 50 frames, an 11 × 50 feature matrix was utilized as the input. A convolutional neural network (CNN) with 35 layers was trained on 20,000 samples recorded at the Huangtupo Copper and Zinc Mine. There are 5 types of events: microseismic events, blasting, ore extraction, mechanical noise, and electromagnetic interference. The event type was correctly determined by the trained CNN classifier 98.2% of the time, outperforming traditional machine learning methods.

Topics & Concepts

MicroseismComputer scienceArtificial intelligenceConvolutional neural networkDiscriminative modelPattern recognition (psychology)Feature extractionDeep learningClassifier (UML)Feature selectionArtificial neural networkMachine learningGeologySeismologySeismology and Earthquake StudiesEarthquake Detection and AnalysisSeismic Imaging and Inversion Techniques
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