Project structure and objectives

PETRONAS myPROdata and EarthNET integration
- Well Data Access: Wells can be selected directly in the PETRONAS myPROdata dashboard and visualized in EarthNET, with logs displayed on the fly (Figure 1).
- Seismic Data Access: Users can select seismic surveys from available datasets or through EarthNET’s smart viewer, enabling quick visualization of seismic sections.
- Pre-trained ML Models: EarthNET provides results such as fault prediction using machine learning models, offering geoscientists immediate insights into structural interpretations.
- This streamlined workflow reduces the time between data selection and interpretation, ensuring that large datasets can be efficiently analyzed.

Figure 2: Histogram comparing initial (left) vs. post-cleaning (right) data availability.
Machine learning for subsurface analysis
- Data Harmonization: Standardizing units, curve names, and metadata.
- Quality Control (QC): Identifying errors, cleaning logs, flagging inconsistent values, and removing duplicates.
- Gap Identification: Recognizing missing log intervals in key measurements such as sonic (DTC, DTS), density, neutron porosity, and reservoir properties (porosity, water saturation, and clay volume).
Log infilling using machine learning
- Training ML models on available logs using combinations of input features.
- Blind testing to select the best-performing models.
- Applying a prioritization framework (Figure 3).
- QCed measured logs were given the highest priority.
- Predictions from models using fewer features were of lower priority.
- Predictions from models with more features and better performance were of a higher priority.
- Generating infilled logs with traceability and uncertainty quantification.

Reservoir characterization
- Porosity
- Water Saturation (Sw)
- Clay Volume (Vcl)



Visualization and analysis in EarthNET
EarthNET provided powerful tools to visualize both measured and ML-predicted datasets:
- Well Viewer (myPROdata module):
- Bar plots showing cleaned vs. infilled logs.
- Side-by-side comparison of wells.
- Cross Plots:
- Elastic property plots (e.g., AI vs. Vp/Vs).
- Colored by uncertainty (standard deviation) or pay class, enabling quick identification of trends.
- Map Plots (Figure 8):
- Spatial distribution of wells with filters applied (e.g., porosity >0.4, Sw <0.2, low uncertainty).
- Ability to zoom into intervals of interest (e.g., 1,000–2,000 meters).
- Pay Class Analysis (Figures 7 and 8):
These cut-offs were determined in close collaboration with PETRONAS MPM. Class 1 represents high-quality reservoirs (porosity > 0.4, Sw < 0.2), while subsequent classes represent progressively lower reservoir quality.
This combination of predictive modelling and advanced visualization provides exploration teams with actionable insights at both well and basin scales.

Traceability and uncertainty management
One of the most critical outcomes of this project is the focus on traceability and uncertainty quantification. Each predicted interval can be traced back to:
- The machine learning model used.
- The features contributing to the prediction.
- The associated uncertainty (standard deviation).

This ensures that predictions are not “black boxes” but instead come with context, enabling geoscientists to judge their reliability. Such transparency is vital for building trust in AI-driven workflows in exploration and production.

Turning data into discovery
By integrating PETRONAS myPROdata with EarthNET and applying AI-driven subsurface analysis, this project has shown how machine learning can transform traditional workflows. From harmonizing thousands of wells to predicting missing logs and quantifying reservoir properties, the approach significantly accelerates exploration while maintaining rigor and transparency. Ultimately, the initiative demonstrates that AI is not just a tool for automation, but a partner in discovery — helping turn well data into the next hydrocarbon opportunity in East Coast Peninsular Malaysia.
Interested in accessing our AI-powered East Coast Peninsular Malaysia results?
Contact us: contact@earthanalytics.no




