Abstract
Unsupervised machine learning using an unsupervised vector quantization neural network (UVQ-NN) integrated with meta-geometrical attributes as a novel computation process as opposed to traditional methodologies is currently used effectively in the 3D seismic structural interpretation for high-resolution detection of fault patterns, fracture network zones, and small-scale faults (SSFs). This technology has a crucial role in locating prospective well sites and building a 3D structural model while saving time and cost. The innovation of the current workflow involves combining geostatistical and structural filtering, optimal geometrical seismic attributes, UVQ-NN for automatic major faults, fracture network zones, and SSFs volumes extraction due to the unavailability of well logs and cores. To sharpen the fault edges and discontinuities, a steered volume was first extracted. Structural filters were then applied to the 3D volume, first with a dip-steered median filter (DSMF), followed by a dip-steered diffusion filter (DSDF), and finally, both DSMF and DSDF were combined to generate the fault enhancement filter (FEF). After that, optimal geometrical attributes were computed and extracted, such as similarity, FEF on similarity, maximum curvature, polar dip, fracture density, and thinned fault likelihood (TFL) attributes. Finally, selected attributes were inserted as the input layer to the UVQ-NN to generate segmentation and matching volumes. On the other hand, the TFL was used with the voxel connectivity filter (VCF) for 3D automatic fault patches extraction. The results from the UVQ-NN and VCF identified the locations, orientations, and extensions of the main faults, SSFs, and fracture networks. The implemented approach is innovative and can be employed in the future for the identification, extraction, and classification of geological faults and fracture networks in any region of the world. © 2023, The Author(s).
Original language | British English |
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Journal | Geomech. Geophys. Geo-Energy Geo-Resources |
Volume | 9 |
Issue number | 1 |
DOIs | |
State | Published - 2023 |
Keywords
- Automatic fault extraction
- Geometrical attributes
- Thinned fault likelihood
- Unsupervised neural network
- Voxel connectivity filter
- New Zealand
- Pacific Ocean
- Taranaki Basin
- 3D modeling
- Feature extraction
- Fracture
- Geometry
- Median filters
- Seismology
- Structural optimization
- Well logging
- Fault networks
- Fracture network
- Geometrical attribute
- Neural-networks
- Small scale
- Unsupervised neural networks
- Vector quantisation
- artificial neural network
- automation
- fault
- fracture network
- geometry
- machine learning
- seismic data
- unsupervised classification
- Extraction