Application of Machine Learning to accidents detection at directional drilling
This addresses accident prevention in oil and gas drilling, offering potential cost and time savings, but appears incremental as it applies existing methods to a specific domain.
The paper tackles the problem of detecting anomalies during directional drilling by comparing real-time telemetry with past accident data using a machine learning model, achieving detection of half of anomalies with about 0.53 false alarms per day on average.
We present a data-driven algorithm and mathematical model for anomaly alarming at directional drilling. The algorithm is based on machine learning. It compares the real-time drilling telemetry with one corresponding to past accidents and analyses the level of similarity. The model performs a time-series comparison using aggregated statistics and Gradient Boosting classification. It is trained on historical data containing the drilling telemetry of $80$ wells drilled within $19$ oilfields. The model can detect an anomaly and identify its type by comparing the real-time measurements while drilling with the ones from the database of past accidents. Validation tests show that our algorithm identifies half of the anomalies with about $0.53$ false alarms per day on average. The model performance ensures sufficient time and cost savings as it enables partial prevention of the failures and accidents at the well construction.