AUTOMATE SHORT CYCLIC WELL JOB CANDIDACY USING ARTIFICIAL NEURAL NETWORKS â ENABLED LEAN SIGMA APPROACH: A CASE STUDY IN AN OIL AND GAS COMPANY
Artificial Neural Networks (ANNs) is a part of Artificial Intelligence (AI) that commonly used for pattern recognition, regression and classification. This technology allows us to learn historical data and generate patterns from the precedent data. In oil and gas company, large amounts of data ar...
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Format: | Theses |
Language: | Indonesia |
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Online Access: | https://digilib.itb.ac.id/gdl/view/50869 |
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Institution: | Institut Teknologi Bandung |
Language: | Indonesia |
Summary: | Artificial Neural Networks (ANNs) is a part of Artificial Intelligence (AI) that
commonly used for pattern recognition, regression and classification. This technology
allows us to learn historical data and generate patterns from the precedent data. In oil
and gas company, large amounts of data are produced every day. Many accurate
decisions in this type of company are made from the data. PT. Cilon Indonesia (CI) is
one of the oil and gas companies which currently operates the largest oil field in
Indonesia. The operation and financial profit of this type of company is really depends
on the price of oil which is affected by global oil supply and demand. If oil price fall
suddenly, all oil and gas companies need to run their businesses more efficiently and
effectively. There are many ways to make this kind of company run their business
effectively and efficiently by implementing several strategies such as capital cost
efficiency, operational cost efficiency and even laying off some employees.
In oil and gas company, one of the major costs in operational is cost for well workover.
This well workover does not always produce oil gain. In fact, even it is resulting the
oil gain, but not all well workover programs are economical whenever the oil price is
low. This condition makes Petroleum Engineer (PE) in the company need to select the
best well workover for certain wells. Well candidates for workover are usually selected
manually using data that can come from many resources, reports and information. Well
candidates are reviewed one by one and with several criteria then the well is proposed
to certain type of well workover.
This research explains how in this company improve their process of selecting the well
candidates for the most economic workover called Short Cyclic Steam Stimulation
(SCSS). The process improvement is done using hybrid method: lean six sigma
method and big data analytics method which utilize ANNs to predict the oil after
workover executed. The result demonstrates how this hybrid method can improve the
process with sustainable solution. Its successfully improve the time consume of PE
selects SCSS well candidates from 2 hours to 10 minutes to generate 20 wells per day.
It also improve the success rate of SCSS workover from 61% to 73%.
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