Geophysical Insights – AAPG Webinar
Machine Learning Lithofacies Prediction and Deep Learning Fault Detection Transform Reservoir Characterization – faster and more economically vs. traditional methods
Key ideas
Rapid advances in AI/ML technologies are transforming seismic analysis. Geoscientists can accomplish the following quickly and effectively using these new commercially available techniques:
- Predict lithofacies faster than inversion by relating ML results to well logs and petrophysics
- Detect thin beds down to a single seismic sample through unsupervised ML classification
- Generate fault volumes in 2D or 3D within a few hours using synthetic fault models
Webinar agenda
- Introductions – 5 min.
- Survey of AI/ML applications on the Paradise® AI workbench – Hal Green – 10 min.
- Lithofacies Prediction – Alvaro Chaveste, Sr. Geophysical Consultant – 20 min.
- Automatic Fault Detection- Fabian Rada, Sr. Geoscience Consultant – 20 min.
Abstract
Machine Learning Lithofacies Prediction
A new ML-based methodology for Lithofacies Prediction will be presented and demonstrated in the Paradise software. The workflow takes a fraction of the time compared to seismic inversion. The methodology first classifies the region using Self Organized Maps (SOM), an unsupervised form of ML, which produces a Stratigraphic Analysis of the region. The results of Stratigraphic Analysis are then integrated with lithofacies from petrophysical logs, bringing two independent sources of information to bear on the prediction process. This alternative approach to Lithofacies Prediction has these advantages over seismic inversion, saving time and money:
- Process is not deterministic – does not require data to match physical models
- No requirement to determine the wavelet and low-frequency trend in the data
- Employs ML seismic clustering that identifies natural patterns in the data relating to lithology
- Works on thin and thick beds, as ML clustering is done at the seismic sample interval
- Neurons generated by ML have some of the characteristics of inverted data
- Intervals are mapped, not just stratigraphic interfaces
Case study #1: West Desert, Egypt, Clastic sediments with a complex geological history involving multiple phases of tectonic activity and sedimentation
Deep Learning Automatic Fault Detection
Built on 3D CNN technology, the Deep Learning (DL) Fault Detection application is equipped with robust synthetic fault models, supporting a wide range of seismic data and geologic settings without the need for user-provided fault examples for training. AI-based Fault Detection in Paradise combines supervised Deep Learning (DL) and unsupervised Machine Learning (ML) to produce fault geobodies that can be easily converted to fault planes in an interpretation system. Fault Detection in Paradise offers these advantages:
- Frees geoscientists from having to pick faults manually – eliminates bias
- Eliminates uncertainty in selecting lines manually for training
- Creates fault neurons and geobodies, ready to import
- Produces consistent fault probability results rapidly
Seismic interpreters use AI Fault Detection in Paradise to quickly compare aggressive and conservative results, providing more time to refine a fault interpretation. Running on Nvidia Graphics Processing Unit (GPU) technology, AI Fault Detection generates fault volumes based on accurate, detailed synthetic models applicable to any geologic setting. Infilling a fault model is eliminated, and bias is removed from the manual process. This breakthrough technology produces something entirely new: Fault Neurons and Fault Geobodies, which classify fault systems.
Case study: Deepwater Offshore India, a stratigraphically complex tertiary clastics setting
