Title of article :
Ensemble methods for process monitoring in oil and gas industry operations
Author/Authors :
Sui، نويسنده , , Dan and Nybّ، نويسنده , , Roar and Gola، نويسنده , , Giulio and Roverso، نويسنده , , Davide and Hoffmann، نويسنده , , Mario، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
Complex operations carried out in the oil and gas industry such as drilling require constant and accurate real-time monitoring of the process. To this aim, a real-time model of the drilling operation is required. Such a model is used to estimate the state of the well when and where direct and reliable measurements are not available and it helps the driller gain an overview of the drilling process. Given the harsh operating environment, sensor reliability and sensor calibration are known problem areas, and bad data quality is a common problem, affecting the accuracy of the model. As a result, the driller may be misled about the downhole situation or receive conflicting claims about operating conditions.
to reduce uncertainty and increase confidence is to aggregate the opinion of different experts. When the expert is a computer program, such aggregation is often referred to as an ensemble approach. The principle underlies techniques that have become popular in the oil industry in recent years, such as probabilistic forecasting and ensemble Kalman filters. In this paper, we discuss this trend and develop an ensemble system for predicting the bottom-hole pressure during a managed pressure drilling operation. The improved accuracy and robustness of the ensemble approach in situations with bad data quality is demonstrated.
Keywords :
Kalman filter , Ensemble , process monitoring , neural network , Drilling , Managed pressure drilling
Journal title :
Journal of Natural Gas Science and Engineering
Journal title :
Journal of Natural Gas Science and Engineering