Multi-Step Intelligent P-phase Picking Model for Risk Assessment in Deep Underground Mines
Yongshu Zhang,
Lianchong Li,
Wenqiang Mu
et al.
Abstract:Accurate P-phase first arrival time is a premise for improving accuracy of seismic source localizations and achieving hazard warning. Traditional algorithms failed to meet the requirements of high precision and accuracy for microseismic (MS) monitoring in deep geological engineering. In this study, a multi-step model: convolutional neural network combined with K-means and AIC (CNN-KA) for picking arrival of P-phases is proposed. Firstly, convolutional neural network (CNN) technique is used to recognize wavefor… Show more
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