Journal of Sustainable Energy Development
Vol. 1 No. 1 (2023)

Analisa Model Machine Learning dalam Memprediksi Laju Produksi Sumur Migas 15/9-F-14H

Devy Ayu Rhamadhani (Unknown)
Saputra, Eriska Eklezia Dwi (Unknown)



Article Info

Publish Date
30 May 2023

Abstract

AI algorithm learns various data streams from various sources sensors and engines to extract the analytics resulting in sound advice smart based on business needs. This deep insight makes it possible for oil and gas companies to have better visibility of the whole process and operations, thereby enabling them to make strategic decisions better. This of course leads to increased operating efficiency, cost reduction, and even reduce the risk of failure. Application of artificial intelligence using machine learning to production of oil and gas wells needs to be done to get predictive results perfect. With the support of existing field data so obtained simulation results that provide an overview of the prediction of production wells can optimizing the implementation of production performance for wells that have same production history. The simulation is carried out using the development of machine learning models, Support Vector Regression (SVR), Elastic Net, dan Linear Regression. The data which contains informations about the well production will be divided into two parts, 70% for training and 30% for testing. Of the three models will be seen which one is the best in predicting the production rate of the well 15/9-F-14H based on the RMSE and R2 score. SVR is the best model for predicting oil by producing RMSE 5.48 and R2 0.88 when testing. Elastic-Net is the best model for predicting gas by producing RMSE 966.82 and R2 0.85 when testing. There is no model that fits to predict the water production.

Copyrights © 2023






Journal Info

Abbrev

JSED

Publisher

Subject

Energy Engineering

Description

The Journal of Sustainable Energy Development is the official scientific journal of Petroleum Engineering, Faculty of Engineering, University of Jember for the dissemination of information on research activities, technology engineering development and laboratory testing in sustainable energy ...