Machine learning-assisted log quality control (QC) and reconstruction
Challenge
- Improving log data quality to ensure comprehensive analysis and confident decision making.
- Automating manual log conditioning to enable petrophysicists to focus on more valuable tasks.
- Implementing AI and ML solutions for automated wellbore quality control, reconstruction, and enhanced efficiency in managing uncertainty.
- Overlooked log data: 70% of log data is dismissed due to poor quality, hindering comprehensive analysis.
- Confidence and time drain: manual log conditioning can consume 50¨C70% of petrophysicists' time, leading to lower confidence in models and decisions.
Solution
Our ML-assisted log quality control (QC) and reconstruction solution is a fully automated and assisted conditioning workflow that makes more data available for all geoscience workflows, reducing uncertainty and rejuvenating legacy data.
¡°The full cycle of ML training, logs edition and results review has been reduced from 15 days to two days, bringing true efficiency gain for the team.¡±
Middle Eastern NOC
Results
Automated log conditioning.
Enhanced data quality with ML.
Integrated AI for uncertainty.
5¨C10 x acceleration in log conditioning.
70%¡ü leverage.
2¨C3x resource efficiency.