Prospect Maturation: Seismic Interpretation For Hydrocarbon
Published 6/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 7.06 GB | Duration: 12h 54m
Published 6/2025
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 7.06 GB | Duration: 12h 54m
Seismic Interpretation for Hydrocarbon prospect maturation, Risk analysis, Attribute, AVO, DHI for Oil & Gas Exploration
What you'll learn
Understand seismic interpretation and apply it for prospect identification and maturation in hydrocarbon exploration.
Evaluate exploration risks, success probability, and basic exploration economics for informed decision-making.
Learn and be able to implement the Geophysical attributes, including AVO, DHI, Spectral, Geometric, and many more.
Grasp machine learning basics and explore its applications in seismic data analysis and geoscience workflows.
Requirements
Familiarity with seismic data formats and exploration concepts is beneficial.
A basic understanding of geology or geophysics is helpful but not required.
No prerequisite course is necessary to proceed with this course. You will have the opportunity to learn the concepts from basic to advanced levels, enhancing your skills effectively.
A laptop or PC with internet access for viewing course content and downloading materials.
No prior experience with machine learning or coding is needed.
Description
This course offers a comprehensive journey through the science of seismic interpretation, focusing on hydrocarbon prospect maturation using advanced geophysical techniques and the power of machine learning. Designed for geoscience students, researchers, early-career professionals, and exploration geophysicists or geoscientists, this course equips learners with both foundational knowledge and cutting-edge tools used in the oil and gas industry today.You will start by understanding the seismic interpretation workflow—from identifying structural and stratigraphic traps to evaluating their prospectivity. The course then dives into key geophysical attributes such as Amplitude Variation with Offset (AVO), Direct Hydrocarbon Indicators (DHIs), spectral decomposition, geometric attributes, and many more related methods. These tools are essential for characterizing reservoirs, identifying bypassed pay zones, and reducing exploration risk.A unique aspect of this course is its practical and introduction to machine learning applications in geoscience. You’ll explore how ML can be used for seismic facies classification, pattern recognition, and predictive modeling to enhance prospect evaluation.Whether you are aiming to support exploration decisions, reduce risk, or simply broaden your technical skills, this course provides the skills and insights needed to advance your career in the energy sector. No coding experience is required—just curiosity and a background in geology or geophysics.
Overview
Section 1: Prospects, Its Maturation, and Plays
Lecture 1 Prospects, Its Maturation, and Plays
Lecture 2 What are the Prospect Stages?
Lecture 3 Which Prospect to Drill? Prospect Analysis
Lecture 4 Looking at the Bigger Picture: The Focus of Oil & Gas Industry
Lecture 5 An Exploration Success : Case Study
Lecture 6 Exercise # 1 : Define prospect elements
Lecture 7 Exercise # 2 : Estimating trap volumes
Lecture 8 Exercise # 3 : Hydrocarbon Type
Lecture 9 Exercise # 4 : Assessment Deterministic & Probabilistic
Lecture 10 Exercise # 5 : Risk (POS or COS) | How Confident Are We?
Lecture 11 Final Results : a) Analysis on Alpha & Beta Prospect
Lecture 12 Introduction to Prospects and portfolios
Section 2: Understanding Seismic as a Geological Interpretation
Lecture 13 Seismic Response : Snell’s Law
Lecture 14 Seismic Response: Acoustic impedance & Reflection coefficient
Lecture 15 Seismic Polarity and Phase
Lecture 16 Seismic interpretation in Prospect Maturation and its objectives
Lecture 17 Seismic Interpretation Workflow
Lecture 18 Development Planning for Field/Block
Lecture 19 Production Planning for Field/Block
Lecture 20 Life of field: Exploration > Appraisal > Development > Production
Section 3: Machine Learning Overview and Applications
Lecture 21 Machine Learning : An overview
Lecture 22 Why Machine Learning?
Lecture 23 How Machine Learning?
Lecture 24 Machine learning in Seismic Exploration Workflow and Examples
Lecture 25 Types of Machine Learning
Lecture 26 1- Supervised Machine Learning?
Lecture 27 2- Unsupervised Machine Learning?
Lecture 28 Unsupervised Machine Learning In Geophysics
Lecture 29 3- Semi-Supervised Machine Learning?
Lecture 30 4- Reinforcement Machine Learning?
Lecture 31 Case Studies: ML: Seismic Interpretation with (SOM)
Lecture 32 AI, ML, DL, Gen AI
Lecture 33 Essential Tools for Prospect Maturation and Reservoir Modeling
Section 4: Petroleum System
Lecture 34 Introduction to Petroleum System
Lecture 35 1- Source Rock : Where is Oil and Where is Gas
Lecture 36 2- Reservoir Rock and its types
Lecture 37 3- Seal Or Cap Rock
Lecture 38 4- Traps Important HC Provinces
Lecture 39 5- Hydrocarbon Migration
Lecture 40 Worldwide Important HC Provinces:
Section 5: Seismic Stratigraphy and Machine Learning Applications
Lecture 41 Introduction to Seismic Stratigraphy
Lecture 42 Types of Stratigraphy Reflection
Lecture 43 Sedimentary Reflections : 1- Unconformities
Lecture 44 Sedimentary Reflections : 2- Seismic facies units
Lecture 45 Sedimentary Reflections : 3- Sequence Stratigraphy
Lecture 46 Sedimentary Reflections: 4- System Tracts
Lecture 47 Sedimentary Reflections : 5- Technical Errors
Lecture 48 Sedimentary Reflections: 6- Seismic Stratigraphy Workflow
Lecture 49 Machine Learning : Mapping Stratigraphic Traps
Lecture 50 Machine Learning : Mineralogical Composition in Unconventional Formations
Section 6: Seismic Attributes
Lecture 51 Introduction to Seismic Attribute
Lecture 52 Why and What are the Uses of Seismic Attribute
Lecture 53 Classifications of Seismic Attribute
Lecture 54 Applications and Choosing right Attribute
Lecture 55 Complex Trace Attributes: Envelope, Instantaneous Phase & Frequency
Lecture 56 Geometric Attributes: Dip & Azimuth, Coherency, Curvature, Sweetness
Lecture 57 Case Study : High-Resolution Discontinuity Attributes
Section 7: Spectral Analysis & AVO
Lecture 58 Introduction to Spectral Decomposition
Lecture 59 Workflow and Applications of Spectral Decomposition
Lecture 60 Case Study-1: Spectral Decomposition With Multi-Attributes
Lecture 61 Case Study-2: Spectral Decomposition With Multi-Attributes
Lecture 62 Key Takeaway for Spectral Decomposition
Lecture 63 Amplitude Versus Offset (AVO), & Its Importance
Lecture 64 AVO Classes
Lecture 65 AVO As a Sand Indicator
Lecture 66 AVO as a Fluid Indicator
Lecture 67 Case Study: Clastic and Non-Clastic Reservoir
Lecture 68 Direct Hydrocarbon Indicator (DHI)
Lecture 69 Motivation for improving interpretation: Key Messages
Section 8: Hands-On Seismic Interpretation and Prospect Maturation on Software
Lecture 70 Introduction to Interpretation Software and Requirements
Lecture 71 Let’s Strat Together: Data Loading & Visualization
Lecture 72 Sub-Volume, Time and/or Horizon Extraction
Lecture 73 Well to Seismic Tie/Correlation
Lecture 74 Available Seismic Attributes In the Software
Lecture 75 Geological Model using a Cost Function Minimization Algorithm
Lecture 76 Recheck and Enhance your Interpretation Skills
Lecture 77 Geo-Model From Model-Grid
Lecture 78 Horizon Stack
Lecture 79 Automatic Fault Extraction (AFE)
Lecture 80 Geo-Body & Gross Rock Volume (GRV)
Lecture 81 Calculator For Volumes, Geo-Models, Horizons, Logs, and 2D Lines
Lecture 82 Prospect # 1 : Shallow Gas and Volume Assessments
Lecture 83 Prospect # 2 : Coaly Sandstones above the Zechstein salt: Volume Assessments
Section 9: Exploration Economic - NPV, NCF, EMV, STOIIP, HCIIP
Lecture 84 Exploration Economics
Lecture 85 Net Present Value (NPV) & Net Cash Flow (NCF)
Lecture 86 Expected Monetary Value (EMV)
Lecture 87 Cost Calculation: Seismic, Exploration, Development, and Efficiency
Lecture 88 Stock tank oil-initially-in-place (STOIIP)
Lecture 89 Hydrocarbons Initially In Place (HCIIP)
Lecture 90 Exercise # 1: HCIIP
Lecture 91 Remarks on Exploration Economics
Geoscience students (undergraduate to postgraduate) seeking to build a strong foundation in seismic interpretation and geophysical attributes.,Early-career geophysicists and geologists working in oil and gas exploration who want to enhance their technical skills in prospect evaluation and risk assessment.,Exploration professionals aiming to integrate machine learning into their seismic interpretation workflows.,Academics and researchers interested in the practical applications of AVO, DHI, and spectral attributes in subsurface analysis.,Engineers and data scientists entering the geoscience field who want a structured introduction to geophysical data interpretation and prospecting.