Operation
❯
Predictive Maintenance
❯Analysing and predicting acid treatment effectiveness on bottom hole zone
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Analysing and predicting acid treatment effectiveness on bottom hole zone
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Analysing and predicting acid treatment effectiveness on bottom hole zone
For:
ManufacturerGoal:
OtherProblem addressed
Predict the effectiveness of acid treatments of the bottom hole zone
Scope of use case
Mining of oil and gas; digital assistant for analysing and predicting the
effectiveness of acid treatments of the bottom hole zone.
Description
Currently, a long and subjective selection of candidate wells
for acid treatments is being carried out.
An application with mathematical models for automating
statistical analyses and predicting the technological and
economic efficiency of acid treatments of the bottom hole
zone of the well in the form of additional oil and well
production.
The ranking of wells according to the degree of effectiveness
of acid treatment of the bottom hole zone.
Determining the significance of various factors on the
regression model for the field.
The goal is a convergence of the obtained forecast of the
mathematical model with historical data of at least 80 %.
Machine Learning
AI: Understand