Jurnal Migasian
Vol 4 No 1 (2020): Jurnal Migasian

Pore Pressure Prediction Using Artificial Neural Network Based On Logging Data

RAKA SUDIRA WARDANA (UNIVERSITAS PERTAMINA)
Meredita Susanty (Universitas Pertamina)
Hapsoro B.W (Universitas Pertamina)



Article Info

Publish Date
30 Jun 2020

Abstract

Pore pressure is a critical parameter in designing drilling operations. Inaccurate pore pressure data can cause problems, even incidents in drilling operations. Pore pressure data can be obtained from direct measurement methods or estimated using indirect measurement methods such as empirical models. In the oil and gas industry, most of the time, direct measurement is only taken in certain depth due to relatively high costs. Hence, empirical models are commonly used to fill in the gap. However, most of the empirical models highly depend on specific basins or types of formation. Furthermore, to predict pore pressure using empirical models accurately requires a good understanding in determining Normal Compaction Trendline. This proposed approach aims to find a more straightforward yet accurate method to predict pore pressure. Using Artificial Neural Network Model as an alternative method for pore pressure prediction based on logging data such as gamma-ray, density, and sonic log, the result shows a promising accuracy.

Copyrights © 2020






Journal Info

Abbrev

jurnal-migasian

Publisher

Subject

Chemical Engineering, Chemistry & Bioengineering Chemistry Energy Engineering Environmental Science

Description

Jurnal Migasian adalah jurnal yang diterbitkan oleh LPPM Institut Teknologi Petroleum Balongan dan telah ber e-ISSN 2615-6695. Selain itu sesuai dengan SK Direktur Jenderal Penguatan Riset dan Pengembangan Kementrian Riset no. 225/E/KPT/2022 tanggal 7 Desember 2022, Jurnal Migasian terakreditasi ...