Separation of multi-mode surface waves by supervised machine learning methods |
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Authors: | Jing Li Yuqing Chen Gerard T Schuster |
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Institution: | 1. College of Geo-Exploration Science and Technology, Jilin University, Changchun, 130026 Jilin, China;2. Division of Physical Science and Engineering, King Abdullah University of Science and Technology (KAUST), Thuwal, 23955 Saudi Arabia |
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Abstract: | Logistic regression, neural networks and support vector machines are tested for their effectiveness in isolating surface waves in seismic shot records. To distinguish surface waves from other arrivals, we train the algorithms on three distinguishing features of surface-wave dispersion curves in the domain: spectrum coherency of the trace's magnitude spectrum, local dip and the frequency range for a fixed wavenumber k in the spectrum. Numerical tests on synthetic data show that the kernel-based support vector machines algorithm gives the highest accuracy in predicting the surface-wave window in the domain compared to neural networks and logistic regression. This window is also used to automatically pick the fundamental dispersion curve. The other two methods correctly pick the low-frequency part of the dispersion curve but fail at higher frequencies where there is interference with higher-order modes. |
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Keywords: | Signal processing Full waveform Inversion |
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