Extracting dispersion curves from ambient noise correlations using deep
learning
- URL: http://arxiv.org/abs/2002.02040v1
- Date: Wed, 5 Feb 2020 23:41:12 GMT
- Title: Extracting dispersion curves from ambient noise correlations using deep
learning
- Authors: Xiaotian Zhang, Zhe Jia, Zachary E. Ross, and Robert W. Clayton
- Abstract summary: We present a machine-learning approach to classifying the phases of surface wave dispersion curves.
Standard FTAN analysis of surfaces observed on an array of receivers is converted to an image.
We use a convolutional neural network (U-net) architecture with a supervised learning objective and incorporate transfer learning.
- Score: 1.0237120900821557
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: We present a machine-learning approach to classifying the phases of surface
wave dispersion curves. Standard FTAN analysis of surfaces observed on an array
of receivers is converted to an image, of which, each pixel is classified as
fundamental mode, first overtone, or noise. We use a convolutional neural
network (U-net) architecture with a supervised learning objective and
incorporate transfer learning. The training is initially performed with
synthetic data to learn coarse structure, followed by fine-tuning of the
network using approximately 10% of the real data based on human classification.
The results show that the machine classification is nearly identical to the
human picked phases. Expanding the method to process multiple images at once
did not improve the performance. The developed technique will faciliate
automated processing of large dispersion curve datasets.
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