HTME

COURSE OVERVIEW

DE0802 : Core Analysis for Reservoir Characterization
Core Analysis for Reservoir Characterization
OVERVIEW
COURSE TITLE:DE0802 : Core Analysis for Reservoir Characterization
COURSE DATE:Mar 04 - Mar 07 2024
DURATION:4 Days
INSTRUCTOR:Mr. Stan Constantino
VENUE:Al Khobar, KSA
COURSE FEE:$ 6750
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OTHER SCHEDULED DATES
Date : Jun 03 - Jun 06 (4 Days) Location : Doha, Qatar Classroom Fee (US$) : $ 6500 Course Info
Date : Sep 02 - Sep 05 (4 Days) Location : Dubai, UAE Classroom Fee (US$) : $ 6500 Course Info
Date : Sep 15 - Sep 19 (5 Days) Location : Doha, Qatar Classroom Fee (US$) : $ 8500 Course Info
Date : Oct 28 - Oct 31 (4 Days) Location : Dubai, UAE Classroom Fee (US$) : $ 6750 Course Info
Date : Dec 09 - Dec 12 (4 Days) Location : Abu Dhabi, UAE Classroom Fee (US$) : $ 6750 Course Info

Course Description

This practical and highly-interactive course includes real-life case studies and exercises where participants will be engaged in a series of interactive small groups and class workshops. More than three-quarters of current additions to the worlds reserves come from better management of existing reserves. Core-based measurements offer the most tangible and direct means of determining critical reservoir parameters. Core analysis can play a vital role in field equity or unitization and is often considered to be the ground truth to which other measurements are compared (e.g., wireline logging). Evidence of hydrocarbon presence, reservoir storage capacity, and flow capacity along with the distribution of porosity, permeability, and geological descriptive information can be directly obtained from core material. Core analysis is the fundamental foundation of reservoir characterization. Using a multidisciplinary approach, managerial, drilling, geological, and engineering requirements should all be considered. Design and application of core analysis is dependent on the coring method, the coring fluid systems, core handling at the wellsite, and core preservation techniques. Core analysis provides the building blocks for understanding fluid flow, ultimate recovery, and displacement efficiencies. Over 30 percent of the classroom time will be dedicated to data analysis, workshops, and case studies.This course is designed to provide and up-to-date overview on core analysis for reservoir characterization. It covers the core analysis value and the coring process; the sample preparation and basic data acquisition (routine core analysis); the rock properties used in reservoir modelling and reservoir simulation models; the prescreening of material both whole core and samples for SCAL testing; the interpretation and validation of SCAL report; and reviewing a quality control process. By the end of the course, participants will be able to design a SCAL program with regard to the given objectives; apply all the standard SCAL techniques that covers the electrical properties, capillary pressure, NMR, relative permeability and wettability; and illustrate data quality control and interpretation including the integration of petrophysical results.

TRAINING METHODOLOGY

This interactive training course includes the following training methodologies:

Lectures
Workshops & Work Presentations
Case Studies & Practical Exercises
Videos, Software & Simulators

In an unlikely event, the course instructor may modify the above training methodology for technical reasons.

VIRTUAL TRAINING (IF APPLICABLE)

If this course is delivered online as a Virtual Training, the following limitations will be applicable:

Certificates:Only soft copy certificates will be issued
Training Materials:Only soft copy materials will be issued
Training Methodology:80% theory, 20% practical
Training Program:4 hours per day, from 09:30 to 13:30

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