Fault Detection for Seismic Data Interpretation Based on Machine Learning: Research Trends and Technological Introduction

  • Choi, Woochang
  • Lee, Ganghoon
  • Cho, Sangin
  • Choi, Byunghoon
  • Pyun, Sukjoon
Citations

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초록

Recently, many studies have been actively conducted on the application of machine learning in all branches of science and engineering. Studies applying machine learning are also rapidly increasing in all sectors of seismic exploration, including interpretation, processing, and acquisition. Among them, fault detection is a critical technology in seismic interpretation and also the most suitable area for applying machine learning. In this study, we introduced various machine learning techniques, described techniques suitable for fault detection, and discussed the reasons for their suitability. We collected papers published in renowned international journals and abstracts presented at international conferences, summarized the current status of the research by year and field, and intensively analyzed studies on fault detection using machine learning. Based on the type of input data and machine learning model, fault detection techniques were divided into seismic attribute-, image-, and raw data-based technologies; their pros and cons were also discussed.

키워드

machine learningseismic explorationfault interpretationseismic attributeconvolutional neural networkNEURAL-NETWORKALGORITHMMODELINTERPOLATIONGAME
제목
Fault Detection for Seismic Data Interpretation Based on Machine Learning: Research Trends and Technological Introduction
저자
Choi, WoochangLee, GanghoonCho, SanginChoi, ByunghoonPyun, Sukjoon
DOI
10.7582/GGE.2020.23.2.097
발행일
2020
유형
Article
저널명
지구물리와 물리탐사
23
2
페이지
97 ~ 114