• Member Login
  • |
  • Join Now
PESA - Energy Geoscience

Promoting Professional and Technical Excellence in Energy Geoscience – Networking, On-going Professional Education, Monthly Technical Meetings

  • Home
  • About
    • About PESA
    • Objectives
    • PESA History
    • PESA Affiliates
    • Constitution and Rules
    • Strategic Plan
  • Events
    • Online
    • NSW / ACT
    • QLD
    • SA / NT
    • VIC / TAS
    • WA
    • Industry
    • Social
    • Past Events
  • Membership
    • Join Us
    • APPEA Conference Discounts
    • AEGC 2025 Travel Bursaries
    • PESA Membership Awards
  • Latest News
    • All News
    • Feature Articles
    • Industry
    • Company Updates
    • Tech Talk (public)
    • PESA Branch Activities
  • Library
    • Technical Library
    • PESA Gazette
    • Webinars
    • PESA News Magazine
    • Knowledgette Recordings
  • Scholarships
  • Employment
    • View Job Opportunities
    • Submit Job
  • Contact

Facies classification with different machine learning algorithm – An efficient artificial intelligence technique for improved classification

24/09/2021 by Thomas Brand

Facies classification with different machine learning algorithm – An efficient artificial intelligence technique for improved classification

 

Download Section

Please log in to download this file.

Alternatively, you can search for this item and individually purchase it from the PESA collection at AAPG DataPages

PESA collection at AAPG DataPages

Publication Name: Australasian Exploration Geoscience Conference 2019

Authors: Partha Pratim Mandal, Reza Rezaee

Date Published: September 2019

Number of Pages: 6

Abstract:

Accurate and precise identification of lithological facies is vital to understand geological variation in a proven reservoir. Four specific different machine learning (ML) classification algorithms are implemented to predict facies on an open dataset in the Panoma gas field in southwest Kansas, USA. The objective is improvement of facies classification accuracy with robust application of ML technique compared to previous published work on the same dataset. A total of 4,149 data samples are available for analysis with known facies from the core data where each sample point contains four or five measured properties (wire-line logs), and two derived geological properties (geological constraining variables). Facies classification is addressed with four well-known classification algorithms which are artificial neural network (ANN), support vector machine (SVM), decision trees and gaussian process classifier (GPC). High dimensionality, non-linear correlation and overlapping feature space of facies classes make the non-parametric method more suitable to handle complex datasets. Among the presented classifiers, ANN performed better relative to others on validation dataset. It is observed that our present approach of adding more input features, increasing number of training dataset and efficient implementation of algorithms have improved facies prediction accuracy significantly on a blind well.

Tags: AEGC

PESA - Energy Geoscience

PESA Energy Geoscience is a non-profit association of individuals involved in the exploration of oil and gas.

Connect with us

Subscribe to our newsletter and stay on the loop of what is happening in the field of Energy Geoscience and events near you.

pesa newsletter
* indicates required

PESA Energy Geoscience will use the information you provide on this form to be in touch with you and to provide updates and marketing. Please confirm you give us permission to contact you via your email address:

You can change your mind at any time by clicking the unsubscribe link in the footer of any email you receive from us. We will treat your information with respect. For more information about our privacy practices please visit our website. By clicking below, you agree that we may process your information in accordance with these terms.

We use Mailchimp as our marketing platform. By clicking below to subscribe, you acknowledge that your information will be transferred to Mailchimp for processing. Learn more about Mailchimp's privacy practices.

Copyright © 2025 PESA - Energy Geoscience. All Rights Reserved.

  • Advertise
  • Contact
  • Policies
  • Privacy
  • Terms & Conditions