Synthetic Training Data Generation for Fault Detection Based on Deep Learning

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초록

Fault detection in seismic data is well suited to the application of machine learning algorithms. Accordingly, various machine learning techniques are being developed. In recent studies, machine learning models, which utilize synthetic data, are the particular focus when training with deep learning. The use of synthetic training data has many advantages; Securing massive data for training becomes easy and generating exact fault labels is possible with the help of synthetic training data. To interpret real data with the model trained by synthetic data, the synthetic data used for training should be geologically realistic. In this study, we introduce a method to generate realistic synthetic seismic data. Initially, reflectivity models are generated to include realistic fault structures, and then, a one-way wave equation is applied to efficiently generate seismic stack sections. Next, a migration algorithm is used to remove diffraction artifacts and random noise is added to mimic actual field data. A convolutional neural network model based on the U-Net structure is used to verify the generated synthetic data set. From the results of the experiment, we confirm that realistic synthetic data effectively creates a deep learning model that can be applied to field data.

키워드

deep learningtraining datafault interpretationconvolutional neural networksynthetic seismic dataCONVOLUTIONAL NEURAL-NETWORKSMODELS
제목
Synthetic Training Data Generation for Fault Detection Based on Deep Learning
저자
Choi, WoochangPyun, Sukjoon
DOI
10.7582/GGE.2021.24.3.089
발행일
2021
유형
Article
저널명
지구물리와 물리탐사
24
3
페이지
89 ~ 97