Wanpeng CAO , Danyang MEI , Yongmei GUO , Hamzeh Ghorbani
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引用次数: 0
Abstract
Directional drilling, a sophisticated well-drilling technique, enables precise wellbore navigation toward inaccessible reservoirs via vertical wells while optimizing hydrocarbon recovery and minimizing environmental impact. This method encounters significant challenges in managing torque and drag, particularly during sliding mode, where the drill string remains stationary while the bit rotates, causing unpredictable torque fluctuations. Traditional torque measurement methods, relying on downhole sensors, are often costly and complex. This research examines advanced machine learning (ML) models that leverage commonly available drilling data to predict drill-bit torque during the sliding mode, thus removing the reliance on expensive sensors. The study presents an innovative approach using Deep Auto-Regressive Network (DARN) and Deep Neural Network (DNN) models, specifically designed to predict torque based on directional drilling parameters like Weight on Bit (WOB), Revolutions Per Minute (RPM), and Standpipe Pressure. Using a dataset of 2,746 data rows from four directionally drilled wells in a Middle Eastern oil field, encompassing scenarios such as casing milling, opening the sidetrack drilling window, and navigating various trajectory sections with different build rates and hold intervals to predict drill-bit torque (TQ), these models were trained and evaluated against Support Vector Machine (SVM) and Decision Tree (DT) benchmarks. Results indicate that DARN achieved superior accuracy with an RMSE of 49.6 and an R2 of 0.9986, outperforming other models due to its ability to capture complex temporal dependencies. This predictive model facilitates real-time, cost-effective torque management, significantly enhancing operational efficiency in sliding mode directional drilling.
期刊介绍:
Contributions are invited on novel achievements in all fields of measurement and instrumentation science and technology. Authors are encouraged to submit novel material, whose ultimate goal is an advancement in the state of the art of: measurement and metrology fundamentals, sensors, measurement instruments, measurement and estimation techniques, measurement data processing and fusion algorithms, evaluation procedures and methodologies for plants and industrial processes, performance analysis of systems, processes and algorithms, mathematical models for measurement-oriented purposes, distributed measurement systems in a connected world.