×
Events
Knowledgebase
Data Analytics in Reservoir Engineering
Back To Courses
Course Description
1 Lessons
Course overview
Module 1: Introduction to Data Analytics in Reservoir Engineering
3 Lessons
Understanding the importance of data analytics in reservoir engineering
Overview of big data machine learning and artificial intelligence techniques
Applications of data analytics in reservoir engineering
Module 2: Data Interpretation using Analytics
4 Lessons
Data preprocessing techniques for reservoir engineering data
Exploratory data analysis for identifying patterns and trends
Feature engineering and selection methods for reservoir data
Statistical analysis and visualization of reservoir data
Module 3: Production Forecasting using Machine Learning
4 Lessons
Introduction to production forecasting in reservoir engineering
Supervised and unsupervised machine learning algorithms for production forecasting
Data-driven approaches for production decline analysis
Techniques for model validation and accuracy assessment
Module 4: Decision-making with Data Analytics
4 Lessons
Optimization techniques in reservoir engineering using data analytics
Risk assessment using probabilistic models and simulation
Portfolio analysis for decision-making in reservoir management
Real-time data analytics for reservoir monitoring and control
Module 5: Tools and Software for Data Analytics in Reservoir Engineering
3 Lessons
Overview of popular data analytics tools and software for reservoir engineering
Hands-on experience with relevant software and programming languages
Integration of data analytics tools into reservoir engineering workflows
Module 6: Case Studies and Practical Applications
3 Lessons
Real-world case studies illustrating the application of data analytics in reservoir engineering
Interactive exercises and simulations for practical learning
Discussions and project work for applying data analytics techniques in reservoir engineering problems
Add to cart
Category:
Subcategory: