Improving Seismic Interpretation Efficiency and Accuracy Using Supervised Machine Learning to Optimize
Fault
Interpretation Workflows
Abstract
Interpreting faults in seismic data is an important step when constructing structural models of the subsurface. Many seismic attributes have been developed that are sensitive to fault
-induced discontinuities and can be used to build
fault
models relatively quickly. However, parameterizing automated
fault
interpretation algorithms such that they detect faults with the same accuracy as an expert human interpreter remains a challenge because there are usually many interdependent parameters in these workflows requiring tuning, and the optimal parameter set is strongly dataset dependent. Consequently, time spent optimizing
fault
attribute and extraction parameters can offset the efficiencies gained by using an automated interpretation method over manual
fault
-picking approaches.
This paper discusses a hybrid fault
interpretation technique that uses a small set of manually interpreted faults to condition the parameter tuning of an automated
fault
interpretation workflow. The approach combines a machine-learning based hyper-parameter optimization technique, a best-of-class
fault
attribute (Hale, 2013), and domain-expert input in the form of labelled
fault
images. Under the proposed scheme, an interpreter needs only to manually pick faults on a few lines of a 3D seismic dataset. These interpreted sections are then used to define an objective function that, in turn, allows automatic optimization of the
fault
interpretation workflow parameter. The parameter space is intelligently searched to identify the parameter set whose
fault
prediction best matches the input expert-labelled data. Once the optimization process has converged, the optimal workflow parameters are used to compute a high-quality
fault
interpretation for the entire seismic volume. Using the hybrid
fault
interpretation workflow, the time taken to obtain reliable results from automatic
fault
interpretation algorithms can be reduced, thus helping improve the overall efficiency of seismic interpretation workflows and freeing geoscientists to perform more advanced analyses to inform better reservoir decisions.
References:
Hale, Dave (2013). “Methods to compute fault
images, extract
fault
surfaces, and estimate
fault
throws from 3D seismic images.” GEOPHYSICS, 78(2), O33–O43. DOI: 10.1190/GEO2012-0331.1.
AAPG Datapages/Search and Discovery Article #90323 ©2018 AAPG Annual Convention and Exhibition, Salt Lake City, Utah, May 20-23, 2018