RANDOM FOREST REGRESSION APPLICATION FOR ELECTRICAL SUBMERSIBLE PUMP SELECTION AND RUN LIFE PREDICTION

This research discusses how the best selection of ESP determined by recommend the pump type, and also predict the new pump run life by creating a program that has been analyzed using a Machine Learning method basis. Considering that in the actual life, well problem affecting the ESP run life. Herein...

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Main Author: Azhar Ramadhani, Rivaldi
Format: Final Project
Language:Indonesia
Subjects:
Online Access:https://digilib.itb.ac.id/gdl/view/48987
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Institution: Institut Teknologi Bandung
Language: Indonesia
id id-itb.:48987
spelling id-itb.:489872020-08-21T07:21:34ZRANDOM FOREST REGRESSION APPLICATION FOR ELECTRICAL SUBMERSIBLE PUMP SELECTION AND RUN LIFE PREDICTION Azhar Ramadhani, Rivaldi Pertambangan dan operasi berkaitan Indonesia Final Project ESP; ESP Design; Machine Learning; Well Problem; Pump Run Life INSTITUT TEKNOLOGI BANDUNG https://digilib.itb.ac.id/gdl/view/48987 This research discusses how the best selection of ESP determined by recommend the pump type, and also predict the new pump run life by creating a program that has been analyzed using a Machine Learning method basis. Considering that in the actual life, well problem affecting the ESP run life. Hereinafter, this program will help the user to select the most fit ESP type to the well with a previous problem, so it can improve the pump run life in those wells better than before. Considering the mature field big data volume at high frequency produced every second, searching relevant information from those data is quite complex and time-consuming. It is complicating the decision-making process. Machine learning methods surely will be very helpful in making this program. By combining the data column elimination for data cleaning and balancing, considering the complex and big amount of raw and unused data, with a Random Forest Regressor method as the main tool for new run life prediction, this integration will help the program in selecting the most fit ESP and predict its new run life. This combination certainly will also make the decision making in ESP type selection much easier, and provide new results developments that have never existed. From the results of this analysis, the best pump type that can be used and designed for a well based on the historical well problem and pump run life can be determined. So, it will be known if there is any significant result difference of ESP selection type created by considering the well problem and pump run life with the conventional ESP Design method. Besides, the program will exactly ease the engineering workload, especially speed up the data processing time, decision making, and the ESP selection accuracy. Integration between Machine Learning technology and conventional ESP Design surely can be a game-changer for the mature field development in the future. This combination will help out the engineer in case they faced several difficulties that need time and complex algorithm to find the solution. This program will be one of the mature field development big production data answers because this will reduce downtime, optimize production, and reduce cost. The further development of this program will also allow all parties to forecast the prediction of asset production performance in the future. text
institution Institut Teknologi Bandung
building Institut Teknologi Bandung Library
continent Asia
country Indonesia
Indonesia
content_provider Institut Teknologi Bandung
collection Digital ITB
language Indonesia
topic Pertambangan dan operasi berkaitan
spellingShingle Pertambangan dan operasi berkaitan
Azhar Ramadhani, Rivaldi
RANDOM FOREST REGRESSION APPLICATION FOR ELECTRICAL SUBMERSIBLE PUMP SELECTION AND RUN LIFE PREDICTION
description This research discusses how the best selection of ESP determined by recommend the pump type, and also predict the new pump run life by creating a program that has been analyzed using a Machine Learning method basis. Considering that in the actual life, well problem affecting the ESP run life. Hereinafter, this program will help the user to select the most fit ESP type to the well with a previous problem, so it can improve the pump run life in those wells better than before. Considering the mature field big data volume at high frequency produced every second, searching relevant information from those data is quite complex and time-consuming. It is complicating the decision-making process. Machine learning methods surely will be very helpful in making this program. By combining the data column elimination for data cleaning and balancing, considering the complex and big amount of raw and unused data, with a Random Forest Regressor method as the main tool for new run life prediction, this integration will help the program in selecting the most fit ESP and predict its new run life. This combination certainly will also make the decision making in ESP type selection much easier, and provide new results developments that have never existed. From the results of this analysis, the best pump type that can be used and designed for a well based on the historical well problem and pump run life can be determined. So, it will be known if there is any significant result difference of ESP selection type created by considering the well problem and pump run life with the conventional ESP Design method. Besides, the program will exactly ease the engineering workload, especially speed up the data processing time, decision making, and the ESP selection accuracy. Integration between Machine Learning technology and conventional ESP Design surely can be a game-changer for the mature field development in the future. This combination will help out the engineer in case they faced several difficulties that need time and complex algorithm to find the solution. This program will be one of the mature field development big production data answers because this will reduce downtime, optimize production, and reduce cost. The further development of this program will also allow all parties to forecast the prediction of asset production performance in the future.
format Final Project
author Azhar Ramadhani, Rivaldi
author_facet Azhar Ramadhani, Rivaldi
author_sort Azhar Ramadhani, Rivaldi
title RANDOM FOREST REGRESSION APPLICATION FOR ELECTRICAL SUBMERSIBLE PUMP SELECTION AND RUN LIFE PREDICTION
title_short RANDOM FOREST REGRESSION APPLICATION FOR ELECTRICAL SUBMERSIBLE PUMP SELECTION AND RUN LIFE PREDICTION
title_full RANDOM FOREST REGRESSION APPLICATION FOR ELECTRICAL SUBMERSIBLE PUMP SELECTION AND RUN LIFE PREDICTION
title_fullStr RANDOM FOREST REGRESSION APPLICATION FOR ELECTRICAL SUBMERSIBLE PUMP SELECTION AND RUN LIFE PREDICTION
title_full_unstemmed RANDOM FOREST REGRESSION APPLICATION FOR ELECTRICAL SUBMERSIBLE PUMP SELECTION AND RUN LIFE PREDICTION
title_sort random forest regression application for electrical submersible pump selection and run life prediction
url https://digilib.itb.ac.id/gdl/view/48987
_version_ 1822000249102663680