MLReal: Bridging the gap between training on synthetic data and real data applications in machine learning
Tariq Alkhalifah, Hanchen Wang, Oleg Ovcharenko

TL;DR
This paper introduces a domain adaptation method that applies linear operations to synthetic training data to better match real data distributions, improving neural network performance in seismic applications.
Contribution
A novel domain adaptation technique using crosscorrelation and convolution operations to align synthetic and real data distributions for neural network training.
Findings
Enhanced neural network performance on real seismic data
Effective in microseismic event localization and low-frequency prediction
Applicable to various waveform-based geophysical tasks
Abstract
Among the biggest challenges we face in utilizing neural networks trained on waveform data (i.e., seismic, electromagnetic, or ultrasound) is its application to real data. The requirement for accurate labels forces us to develop solutions using synthetic data, where labels are readily available. However, synthetic data often do not capture the reality of the field/real experiment, and we end up with poor performance of the trained neural network (NN) at the inference stage. We describe a novel approach to enhance supervised training on synthetic data with real data features (domain adaptation). Specifically, for tasks in which the absolute values of the vertical axis (time or depth) of the input data are not crucial, like classification, or can be corrected afterward, like velocity model building using a well-log, we suggest a series of linear operations on the input so the training and…
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Taxonomy
TopicsSeismic Imaging and Inversion Techniques · Seismology and Earthquake Studies · Seismic Waves and Analysis
MethodsConvolution
