Prosiding Seminar Nasional Rekayasa dan Teknologi (TAU SNAR- TEK)
Vol. 1 No. 1 (2019): Prosiding TAU SNAR-TEK Seminar Nasional Rekayasa dan Teknologi 2019

Penerapan Sistem Analitik Untuk Data Bawah Permukaan Sebagai Penentu Kualitas Reservoir

Irvina Kamalitha Zunaidi (Departemen Teknik Kimia, Fakultas Teknik, Universitas Indonesia Kampus Baru, Depok, Depok-Jawa Barat 16424)
Praswasti PDK Wulan (Departemen Teknik Kimia, Fakultas Teknik, Universitas Indonesia Kampus Baru, Depok, Depok-Jawa Barat 16424)
Fajril Ambia (Studi Eksplorasi dan Evaluasi Cadangan, SKK Migas Gedung Wisma Mulia, Lantai 35, Jl. Jend. Gatot Subroto, No.42, Jakarta 12710)



Article Info

Publish Date
21 Jan 2020

Abstract

Oil and gas reserves in Indonesia have an important role in the lives of their people. Therefore, data on oil and gas reserves in Indonesia are very necessary. In addition, the quality of the reserves itself determines the development of the oil and gas industry going forward. Since the government has aggressively encourage the use of natural gas and at present the government does not yet have data on Indonesia's gas reserves efficiently, this study presents a concept so that the government can easily see the quality of gas reserves. In this study, data management was carried out by grouping raw data according to each category. The data calculated using the Bayesian statistical method. This statistical assessment is a prediction model or percentage of data quality trust and definition of limits in grouping data quality. The percentage number of the prediction model appears based on suggestions according to the user's perspective. Data quality prediction models determine the quality of the reservoir. The role of reservoir quality is very large in determining future business. The results of research conducted by researchers labeling the classification of well status of On Production produces a high average accuracy with 81% precision, 98% recall, and 89% f-measured.

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Journal Info

Abbrev

snartek

Publisher

Subject

Automotive Engineering Chemical Engineering, Chemistry & Bioengineering Civil Engineering, Building, Construction & Architecture Computer Science & IT Electrical & Electronics Engineering

Description

Informatika dan Elektro : Kecerdasan Buatan, Machine Learning & Deep Learning, IoT Innovation (IoT For Smart Farming, IoT For Health Care, IoT For Smart Access, etc.) Blockchain, Mobile Application, Cloud Computing, Data Mining & Web Mining, Bio-Informatics, IT Strategies, Emerging Cyber Threats in ...