MACHINE-LEARNING ALGORITHM ASSIST DATA-DRIVEN EARLY DETECTION PROBLEMS ON CONTINUOUS GAS LIFT WELLS
The world's need for oil is increasing along with the world's population. On the other hand, oil production is decreasing over time, while exploration and development of new oil wells usually take at least 10 years. To increase oil production, several methods can be used based on the oil...
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Format: | Final Project |
Language: | Indonesia |
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Online Access: | https://digilib.itb.ac.id/gdl/view/73298 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | The world's need for oil is increasing along with the world's population. On the other hand, oil
production is decreasing over time, while exploration and development of new oil wells usually take at least 10
years. To increase oil production, several methods can be used based on the oil well's production phase. In the
primary recovery phase, oil can be produced by natural flow and artificial lift. When oil cannot be produced by
natural flow, then oil needs to be lifted to the surface by using artificial lift. Artificial lift is divided into two
methods, namely the pumping method and the gas lift method. In the era of digitalization, the development of
Machine Learning (ML) for the pumping method is a common thing such as ML on Sucker Rod Pump, Electric
Submersible Pump, etc. However, the development of ML for the gas lift method is still rarely applied.
Conventional monitoring and identification of problems in continuous gas lift wells takes a long time. This is
because the engineers need to identify problems that might occur in the well after obtaining data from
monitoring activities. Based on these conditions, it is necessary to develop machine learning to monitor the
continuous operation of gas lift wells and predict well problems.
In this study, ML is developed that can monitor gas lift systems based on digitalized two pen recorder
chart in the form of casing pressure, tubing pressure, the pressure difference between casing pressure and
tubing pressure, the pressure changes of casing pressure, and the pressure changes of tubing pressure and troubles The training data used for the ML algorithm is 70% of the total data and 30% of the total data is test
data. The training data used consists of the digitalized two pen recorder chart data and the identified problem
data. Moreover, various ML algorithms such as Gradient Boosted Tree (GBT), Decision Tree (DT), Random
Forest (RF), and Support Vector Machine (SVM) are used to predict possible problems that occur in the current
continuous gas lift well. After obtaining the ML algorithms with accuracy more than 90%, the ML algorithms
were tested with 52 actual data to ensure the effectiveness of the designed ML. The performance evaluation of
the ML algorithms was done by evaluating the value of accuracy, recall, precision, and F1-measure. According
to the results of the performance evaluation, RF can be obtained as the ML algorithm with the smallest error to
predict well problems in continuous gas lift wells with an accuracy of 97.984%.
With the implementation of ML on continuous gas lift wells monitoring, the time needed to determine
the possibility of problems that occur in continuous gas lift wells is reduced from days to hours. Therefore, this
study is the answer to increase the effectiveness of oil production in continuous gas lift wells. |
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