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AAPG Pacific Section Convention 2019

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Application of Machine Learning and Deep Learning for Complex Fault Network Characterizationon the North Slope, Alaska

Abstract

The deep subsurface geology on the North Slope, Alaska is structurally complex and pervasively fractured. Faults/fractures control fluid flow (hydrocarbon and water) through rocks. Although Previous HitseismicNext Hit data is generally used to “manually” identify faults in the subsurface, the extreme nature of these discontinuities, such as their numbers per square miles and complexities, do not allow geoscientists to fully understand the multi-phase fault development history of northern Alaska over geologic time. Physics-based Previous HitseismicNext Hit Previous HitattributesNext Hit such as 3D curvature can be used to detect faults. However, this process is computationally intensive and requires a detailed understanding of the limits of the Previous HitattributesNext Hit in specific geologic settings and the quality of the data. In this study, a large 3D Previous HitseismicNext Hit survey over an area of 270 square miles on the North Slope was used for detailed fault characterization. Curvature attribute-assisted horizon mapping revealed the presence of three major extensional fault network along NW-SE, N-S, and E-W directions, many of which affect multiple source and reservoirs such as the Shublik, Sag River, and Kuparuk formations. Next, Multi-layer Perceptron Neural Network (MLPNN) and Convolutional Neural Network (CNN) were used to classify and predict faults in the Previous HitseismicNext Hit survey automatically. The results show that both MLPNN and CNN can be used for fault classification with high accuracy (>85%) in limited time; however, CNN-based fault classification does not require any Previous HitseismicNext Hit Previous HitattributesNext Hit as input to the neural network model as opposed to the MLPNN. The original Previous HitseismicNext Hit data with labeled faults can be directly used in the CNN model for automated fault classification, thereby, bypassing the traditional way of Previous HitseismicTop attribute-assisted fault detection.