Application of Multi-Layer Perceptron (MLP) Neural Networks in Identification and Picking P-wave arrival Haijiang Zhang Department of Geology and Geophysics.

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Application of Multi-Layer Perceptron (MLP) Neural Networks in Identification and Picking P-wave arrival Haijiang Zhang Department of Geology and Geophysics ECE 539 Project Presentation

Introduction  P-wave arrival: characterized by a rapid change in the amplitude and/or the arrival of high-frequency energy.  Quickly detecting and accurately picking the first-arrival of a P wave is of great importance in locating earthquakes and characterizing velocity structure.  The prior study of ANN on seismic phase picking - Input (1) The absolute seismic data (Dai et al. 1997) (2) Different attributes such as planarity, polarization, etc. (Wang et al., 1997) - Output (1) Noise: 0 1 (2) P-wave arrival: Picking rule (1) A characteristic function is constructed from the ANN outputs. (2) P-wave arrival is chosen as some characteristic point.

MLP: Identification of the P-wave arrival  Configuration -30 inputs: 20 th sample corresponding to P-wave arrival -2 outputs: corresponding to the noise and P-wave arrival -1 hidden layer: 5 nodes -Learning rate: 0.1, Momentum: 0.8  Results -Training set: including 18 P-wave arrival and noise segments -Classification rate: 94.5% -Testing set: including 58 P-wave arrival and noise segments -Classification rate: 82%

MLP: Picking P-wave arrival  The characteristic function  The onset is chosen as a point whose value is greater than a threshold.  But it is difficult to choose such a point!!! The first, the maximum, the middle??  Long term, mid-term and short term to improve the picking accuracy (Zhao et al., 1999)  My strategy Use Akaike Information Criteria (AIC) picker to pick the onset

Practical Application and conclusions  Application -The algorithm is tested on some seismograms from SAFOD. -90% P-wave arrivals are detected and picked.  Conclusions -It cannot discard spikes or glitches. -It is not very sensitive to S/N ratio -Comparing with former methods, this algorithm can pick the P-wave arrival more accurately (within 15ms)