Subtle Fault Prediction Technique Based on the Integration of Deep Learning and Seismic Spectral Decomposition

Li Qiang, Chen Xin, X. Dengyi, Z. Min, Q. Qunli, Yang Jianfang, Liao Xiaoliang, P. Bo, A. Fuli, W. Bo, Gao Xiaoli, Yang Chen
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Abstract

Faults often control the movement and aggregation of oil and gas. With the development of oil fields, the role of subtle faults is becoming more and more important. The accuracy of fault interpretation directly affects the direction of exploration and development. However, due to the limitation of the seismic resolution, it is hard to identify these faults according to routine methods such as coherence, variance, curvature, etc. To overcome such kind of challenge and better match the demand for fine fault identification, a method integrated deep learning and spectral decomposition was proposed.
基于深度学习与地震谱分解相结合的细微断层预测技术
断层常常控制着油气的运动和聚集。随着油田的开发,隐蔽断层的作用越来越重要。断层解释的准确性直接影响到勘探开发的方向。然而,由于地震分辨率的限制,常规的相干、方差、曲率等方法很难识别这些断层。为了克服这一挑战,更好地满足精细故障识别的需求,提出了一种深度学习与谱分解相结合的方法。
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