Pages
Posts
Article
- Advanced Trends in Machine Learning for Seismic Fault Delineation
- The Oil Industry’s Cyber–Transformation Is Closer Than You Think
- Machine Learning Revolutionizing Seismic Interpretation
- Seismic Computing – Advances Opening New Possibilities
- Approach Aids Multiattribute Analysis
- Delighting in Geophysics
- Seismic Pattern Recognition in Shale Resource Plays
- Innovative Solutions Pave Way Forward
- From Insights to Foresights
- Advancing Seismic Research with Modular Frameworks
- Seismic Attribute Analysis Can Benefit From Unsupervised Neural Network
- Unsupervised Neural Networks – Disruptive Technology for Seismic Interpretation
Blog
- How the Oil and Gas Business has Influenced Computational Advancements
- Key Findings from Challenges
- Vertical Seismic Profiling Part VII – The Historic 1979 VSP Conference at Phillips
- Vertical Seismic Profiling Part VI – Parting with Evsey and Going My Own Way in the VSP World
- Vertical Seismic Profiling Part V – Gal’perin Humor and Joy of Life
- Vertical Seismic Profiling Part IV – Transferring Gal’perin Principles into the U.S.
- Vertical Seismic Profiling Part III – Russian/English Translators
- Vertical Seismic Profiling Part II- How the 1979 Linkage Between Hardage and Gal’perin Occurred
- Vertical Seismic Profiling – history, science and geopolitics by Dr. Bob Hardage
- Is There a Crisis in Geophysical and Petrophysical Analysis?
- Applications of Convolutional Neural Networks (CNN) to Seismic Interpretation
- Future of Seismic Interpretation with Machine Learning and Deep Learning
- Unsupervised vs. Supervised classifiers – Comparing classification results
- Comparison of Seismic Inversion and SOM Seismic Multi-Attribute Analysis
- The Value of Instantaneous Attributes
- Machine Learning – The Next Generation Seismic Interpretation
- Machine Learning and Truck Driving
Case Studies
- Case Study: An Integrated Machine Learning-Based Fault Classification Workflow
- Case Study with Petrobras: Applying Unsupervised Multi-Attribute Machine Learning for 3D Stratigraphic Facies Classification in a Carbonate Field, Offshore Brazil
- Applying Machine Learning Technologies in the Niobrara Formation, DJ Basin, to Quickly Produce an Integrated Structural and Stratigraphic Seismic Classification Volume Calibrated to Wells
- Machine Learning Applied to 3D Seismic Data from the Denver-Julesburg Basin Improves Stratigraphic Resolution in the Niobrara
- Thin Beds and Anomaly Resolution in the Niobrara
- Using Self Organizing Maps to Expose Direct Hydrocarbon Indicators
- Eagle Ford Case Study
- Using Self-Organizing Maps to Define Seismic Facies
- Visualization and Characterization of Paleozoic (Ordovician-Devonian) Tight Carbonate Reservoirs, Oklahoma, Part 1
- Visualization and Characterization of Paleozoic (Ordovician-Devonian) Tight Carbonate Reservoirs, Oklahoma, Part 2
- First Steps in the Sub-Seismic Resolution of the Eagle Ford, Part I
- Detailed Sub-Seismic Resolution in the Eagle Ford Shale and Identification of Under-Explored Geobodies, Part 2
- Resolution of Faults in the Eagle Ford, Part 3
- Stratigraphic and Structural Resolution Using Instantaneous Attributes on Spectral Decomp Sub-Bands, Buda and Austin Chalk Formations, Part 4
- Attribute Analysis in Unconventional Resource Plays Using Unsupervised Neural Networks
- Using Self-Organizing Maps to Explore the Yegua in the Texas Gulf Coast
Conferences & Exhibitions
- A Tale Of Two Reservoirs: How Machine Learning Can Help Define “Sweet Spots” In Conventional & Unconventional Reservoirs
- Self Organizing Maps Applied to Seismic Attributes as a Tool to Improve Stratigraphic Resolution
- SEG 2019 – San Antonio
- SBGf 2019 – Rio de Janeiro
- 2019 Oil & Gas Machine Learning Symposium
- URTeC 2019 – Denver
- EAGE 2019 – London
- AAPG ACE 2019 – San Antonio
- SEG 2018 – Anaheim
- SBGf 2017
- 2018 Oil & Gas Machine Learning Symposium
- EAGE 2018 | Booth #1670
Events
- Advantages of Machine Learning over Seismic Inversion for Reservoir Characterization Webinar (Spanish)
- Advantages of Machine Learning over Seismic Inversion for Reservoir Characterization Webinar (English)
- Dr. Jie Qi Hosts Poster Session at IMAGE 2023
- Dr. Carolan Laudon Addresses Carbon Management and Machine Learning at IMAGE 2023
- Geophysical Insights Sponsors the Digitalization Pavilion at IMAGE 2023
- Sarah Stanley and Judy Schulenberg Discuss Machine Learning and Land Development at IMAGE 2023
- Lunch & Learn: ML Automates Traditional Seismic Interpretation Workflows
- Ohio Geological Society Webinar-An Introduction to Popular Machine Learning Tools for Seismic Interpreters
- First Annual Conference of China Petroleum Geophysical Prospecting
- Annual Meeting of Oil and Gas Geophysics
- Impact of Machine Learning on Geoscience Interpretation: Five Significant Trends
- 3rd Joint SBGF|SEG Workshop on Machine Learning
- Denver Geophysical Society Machine Learning/AI Workshop
- Artificial Intelligence for Subsurface Characterization | SEG Workshop
- The Future of Artificial Intelligence in Subsurface Imaging | Webinar
- Join Geophysical Insights at IMAGE ’22
- Join Geophysical Insights at CMP 2022
- Catch Live Technical Talks at Booth 750
- Carolan Laudon Presents at Unconventional Resources Technology Conference 2022
- Carolan Laudon Presents at IDEC Digital Transformation 2022
- Deborah Sacrey to Present at 27th Annual 3D Seismic Symposium
- Dr. Tom Smith presented at SEG Virtual Event
- Deborah Sacrey at Energy in Data 2022
- Machine Learning in the Cloud – Accelerating Seismic Interpretation
- 2021 EAGE Conference on Seismic Interpretation Using AI Methods
- Deborah Sacrey Presented During Kansas Geological Society Technical Talk
- 2021 Energy Machine Learning Symposium
- Deborah Sacrey Spoke at the 71st Annual Gulf Coast Geoscience Convention
- Identify Reservoirs by Combining Machine Learning, Petrophysics, and Bi-variate Statistics
- Machine Learning – New Discoveries & Reservoir Optimization
- A Tale Of Two Reservoirs: How Machine Learning Can Help Define “Sweet Spots” In Conventional & Unconventional Reservoirs
- The Scientific Universe From Square One to SOM – April 27-28 2021
- Unsupervised Machine Learning Applied to Direct-P and Converted-P Data – a free webinar, 17/18 February 2021
- Self Organizing Maps Applied to Seismic Attributes as a Tool to Improve Stratigraphic Resolution
- Machine Learning Technologies for Seismic Interpretation with Case Studies
- Solving Problems in Interpretation with Machine Learning – GEO YPS Webinar Series
- From E to P Using Machine Learning: A Case Study in Columbia – A free webinar, May 19 2021
- Protected: SEG 2019 Presentations
- AAPG (ACE) 2020
- GSH-SEG Spring Symposium 2020
- SEG Annual Conference 2020
- 2020 Oil and Gas Machine Learning Symposium
- EAGE Annual Conference & Exhibition 2020
- Machine Learning for Unconventional Resources (MLUR) 2019 Workshop
- Dr. Tom Smith Speaks to SEG Wavelets Student Group at the University of Houston
- SEG 2019 – San Antonio
- SBGf 2019 – Rio de Janeiro
- 2019 Oil & Gas Machine Learning Symposium
- URTeC 2019 – Denver
- Webinar: Leveraging Deep Learning in Extracting Features of Interest from Seismic Data
- Boosting Reserves and Recovery Using Machine Learning and Analytics – AAPG Workshop
- EAGE 2019 – London
- EAGE Workshop – Kuala Lumpur
- AAPG ACE 2019 – San Antonio
- AAPG ACE 2018 | Special Executive Forum
- Applications of Machine Learning and Multi-Attribute Analysis to Conventional Reservoirs
- EAGE/PESGB Workshop on Machine Learning
- Protected: SEG 2018 Presentations
- Webinar: Leveraging Deep Learning in Extracting Features of Interest from Seismic Data
- Machine Learning Essentials for Seismic Interpretation | Geophysical Society of Houston (GSH) Webinar
- SEG 2018 – Anaheim
- SBGf 2017
- 2018 Oil & Gas Machine Learning Symposium
- SEG/SBGf – Machine Learning Workshop
- EAGE 2018 | Booth #1670
- CPS/SEG IGC 2018 | Booth #357
- CAPA 2017 Technical Symposium – Dr. ChingWen Chen
Featured
- Applying Machine Learning Technologies in the Niobrara Formation, DJ Basin, to Quickly Produce an Integrated Structural and Stratigraphic Seismic Classification Volume Calibrated to Wells
- Catch Live Technical Talks at Booth 750
- 2021 Energy Machine Learning Symposium – Energy in Transition
- Advanced Trends in Machine Learning for Seismic Fault Delineation
- A multi-disciplinary approach to establish a workflow for the application of machine learning for detailed reservoir description – Wisting case study
Industry Event Talks
- A Tale Of Two Reservoirs: How Machine Learning Can Help Define “Sweet Spots” In Conventional & Unconventional Reservoirs
- Boosting Reserves and Recovery Using Machine Learning and Analytics – AAPG Workshop
- EAGE Workshop – Kuala Lumpur
- AAPG ACE 2018 | Special Executive Forum
- Applications of Machine Learning and Multi-Attribute Analysis to Conventional Reservoirs
- EAGE/PESGB Workshop on Machine Learning
News
- Geophysical Insights Awards the Federal University of Ceará Department of Geology Licenses to New AI Technology
- Geophysical Insights – Paradise 3.5.2 Release Notes
- Geophysical Insights – Paradise 3.4.1 Release Notes
- Geophysical Insights Awards the University of Aberdeen Licenses to New AI Technology
- Geophysical Insights offers e-courses on AI and Seismic Interpretation without charge to support the industry
- Paradise 3.3 Press Release – Deep Learning Fault Detection and Seismic Facies Classification
- Geophysical Insights Announces Paradise Scripting Language
- Geophysical Insights Announces Call for Abstracts for 2019– University Challenge
- Paradise 3.2 Press Release
- Paradise 3.1 Press Release
- Dr. Tom Smith receives the Natural Science & Mathematics Distinguished Alumni Award from the University of Houston
- Tom Smith recognized at the Houston Geological Society Legends Night
- Geophysical Insights Becomes Industry Member Sponsor for AASPI
- Paradise 2.0 Press Release
- Paradise Launch Press Release
- Tom Smith Elected Chair to SEG
- Prove it! Campaign Press Release
- Geophysical Insights – Company Launch Press Release
Presentation
- What Interpreters Should Know About Machine Learning
- Protected: SEG 2019 Presentations
- Finding the Best Attribute Combination for Seismic Facies Classification
- Will Machine Learning “Profoundly” Change Geoscience Interpretation? An Interpreter’s Perspective
- The Holy Grail of Machine Learning in Seismic Interpretation
- Geobodies in Paradise: a Machine Learning Application
- Protected: SEG 2018 Presentations
- Making Sense of Machine Learning
- Comparison of Seismic Amplitude to SOM Classification
- Attribute Selection: Machine Learning vs. Interactive Interpretation
- The Next Advancement in Seismic Interpretation
Press Release
- Geophysical Insights Awards the Federal University of Ceará Department of Geology Licenses to New AI Technology
- Geophysical Insights – Paradise 3.5.2 Release Notes
- Geophysical Insights – Paradise 3.4.1 Release Notes
- Geophysical Insights Awards the University of Aberdeen Licenses to New AI Technology
- Geophysical Insights offers e-courses on AI and Seismic Interpretation without charge to support the industry
- Paradise 3.3 Press Release – Deep Learning Fault Detection and Seismic Facies Classification
- Geophysical Insights Announces Paradise Scripting Language
- Paradise 3.2 Press Release
- Paradise 3.1 Press Release
- Geophysical Insights Becomes Industry Member Sponsor for AASPI
- Paradise 2.0 Press Release
- Paradise Launch Press Release
- Prove it! Campaign Press Release
- Geophysical Insights – Company Launch Press Release
Recommended
- Unsupervised Machine Learning Techniques for Subtle Fault Detection
- Fabric and Internal Architecture of Permian Basin Turbidites Indicated by Unsupervised Machine Learning Analysis of P-P and SV-P Images
- Comparing Convolutional Neural Networking and Image Processing Seismic Fault Detection Methods
- A multi-disciplinary approach to establish a workflow for the application of machine learning for detailed reservoir description – Wisting case study
- Systematic Workflow for Reservoir Characterization in Northwestern Colombia using Multi-attribute Classification
- Net Reservoir Discrimination through Multi-Attribute Analysis at Single Sample Scale
- Seismic Facies Classification Using Deep Convolutional Neural Networks
- Machine Learning Terms
- Thin Beds and Anomaly Resolution in the Niobrara
- What is Machine Learning?
- What is Big Data?
- Seismic Interpretation of DHI Characteristics with Machine Learning
- Interpretation of DHI Characteristics with Machine Learning
- Seismic Interpretation Below Tuning with Multi-Attribute Analysis
Technical Paper
- Case Study: An Integrated Machine Learning-Based Fault Classification Workflow
- Case Study with Petrobras: Applying Unsupervised Multi-Attribute Machine Learning for 3D Stratigraphic Facies Classification in a Carbonate Field, Offshore Brazil
- Applying Machine Learning Technologies in the Niobrara Formation, DJ Basin, to Quickly Produce an Integrated Structural and Stratigraphic Seismic Classification Volume Calibrated to Wells
- Detección De Contraste Litológico en El Jurásico Superior Oxfordiano (JSO) Mediante Inteligencia Artificial E Integración Multidisciplinaria.
- An Enhanced Fault Detection Workflow Combining Machine Learning and Seismic Attributes Yields an Improved Fault Model for Caspian Sea Asset
- Unsupervised Machine Learning for Time-lapse Seismic Studies and Reservoir Monitoring
- Which Seismic Attributes are Best for Subtle Fault Detection?
- Unsupervised Machine Learning Techniques for Subtle Fault Detection
- Fabric and Internal Architecture of Permian Basin Turbidites Indicated by Unsupervised Machine Learning Analysis of P-P and SV-P Images
- Comparing Convolutional Neural Networking and Image Processing Seismic Fault Detection Methods
- A multi-disciplinary approach to establish a workflow for the application of machine learning for detailed reservoir description – Wisting case study
- Systematic Workflow for Reservoir Characterization in Northwestern Colombia using Multi-attribute Classification
- Net Reservoir Discrimination through Multi-Attribute Analysis at Single Sample Scale
- Machine Learning Applied to 3D Seismic Data from the Denver-Julesburg Basin Improves Stratigraphic Resolution in the Niobrara
- Using Synthetic Data Sets to Train an End-to-End Convolutional Neural Network for 3D Seismic Fault Segmentation
- Applications of Machine Learning for Geoscientists – Permian Basin
- A Fault Detection Workflow Using Deep Learning and Image Processing
- Seismic Facies Classification Using Deep Convolutional Neural Networks
- Solving Exploration Problems with Machine Learning
- Significant Advancements in Seismic Reservoir Characterization with Machine Learning
- A Workflow to Skeletonize Faults and Stratigraphic Features
- Geobody Interpretation Through Multi-Attribute Surveys, Natural Clusters and Machine Learning
- Interpretation of DHI Characteristics with Machine Learning
- Seismic Interpretation Below Tuning with Multi-attribute Analysis
- Seismic Interpretation with Machine Learning
- Geologic Pattern Recognition from Seismic Attributes: Principal Component Analysis and Self-Organizing Maps
- Self-Organizing Neural Nets for Automatic Anomaly Identification
- Distillation of Seismic Attributes to Geologic Significance
- Relating Seismic Interpretation to Reserve / Resource Calculations
- Introduction to Self-Organizing Maps in Multi-Attribute Seismic Data
Uncategorized
- Deep Learning for Characterizing Paleokarst Collapse Features in 3-D Seismic Images
- Attribute Library – Spectral Magnitude, Spectral Phase, Spectral Voice, and Spectral Shape (Ridge) Attribute Components
- Attribute Library – Spectral Magnitude, Spectral Phase, and Spectral Voice Components
- Attribute Library – Banded Attributes Overview
- Attribute Library – Complex Trace Attribute Overview
- WELL LOG CALIBRATION OF KOHONEN-CLASSIFIED SEISMIC ATTRIBUTES USING BAYESIAN LOGIC
Video
- A Combined Deep Learning and Unsupervised Machine Learning Fault Detection Workflow
- Identify Reservoirs by Combining Machine Learning, Petrophysics, and Bi-variate Statistics
- Machine Learning – New Discoveries & Reservoir Optimization
- A Tale Of Two Reservoirs: How Machine Learning Can Help Define “Sweet Spots” In Conventional & Unconventional Reservoirs
- The Scientific Universe From Square One to SOM – April 27-28 2021
- Unsupervised Machine Learning Applied to Direct-P and Converted-P Data – a free webinar, 17/18 February 2021
- Application of Unsupervised Machine Learning for 3D Seismic, Pliocene Turbidities, Offshore Nile Delta
- Investigating the Internal Fabric of VSP data with Attribute Analysis and Unsupervised Machine Learning
- Finding Hydrocarbons using SOM Classifications
- Calibrating SOM Results to Wells – Improving Stratigraphic Resolution in the Niobrara
- Statistical Calibration of SOM results with Well Log Data (Case Study)
- Introduction to the Paradise AI Workbench
- Gas Hydrates, Reefs, Channel Architecture, and Fizz Gas: SOM Applications in a Variety of Geologic Settings
- Machine Learning Technologies for Seismic Interpretation with Case Studies
- A multi-disciplinary approach to establish a workflow for the application of machine learning for detailed reservoir description – Wisting case study
- From E to P Using Machine Learning: A Case Study in Columbia – A free webinar, May 19 2021
- Advantages of Machine Learning with Multi-Attribute Seismic Surveys
- e-Course by Dr. Tom Smith: Machine Learning Essentials for Seismic Interpretation
- Video (in Chinese) : Leveraging Deep Learning in Extracting Features of Interest from Seismic Data
- Video: Leveraging Deep Learning in Extracting Features of Interest from Seismic Data
- An Introduction to Paradise 3.2
- Solving Interpretation Problems using Machine Learning on Multi-Attribute, Sample-Based Seismic Data
- What is Machine Learning?
- What is Big Data?
- Attribute Essentials: Categories of Attributes
- Seismic Interpretation of DHI Characteristics with Machine Learning
- Seismic Interpretation Below Tuning with Multi-Attribute Analysis
- Eagle Ford Case Study
- A Profile of the Future Interpreter: A Movie by Dr. Kurt Marfurt of the AASPI Consortium, O.U.
Webinars
- Advantages of Machine Learning over Seismic Inversion for Reservoir Characterization Webinar (Spanish)
- Advantages of Machine Learning over Seismic Inversion for Reservoir Characterization Webinar (English)
- Impact of Machine Learning on Geoscience Interpretation: Five Significant Trends
- Join Geophysical Insights at CMP 2022
- Carolan Laudon Presents at Unconventional Resources Technology Conference 2022
- Carolan Laudon Presents at IDEC Digital Transformation 2022
- Deborah Sacrey to Present at 27th Annual 3D Seismic Symposium
- Dr. Tom Smith presented at SEG Virtual Event
- Deborah Sacrey at Energy in Data 2022
- Machine Learning in the Cloud – Accelerating Seismic Interpretation
- Identify Reservoirs by Combining Machine Learning, Petrophysics, and Bi-variate Statistics
- The Scientific Universe From Square One to SOM – April 27-28 2021
- Unsupervised Machine Learning Applied to Direct-P and Converted-P Data – a free webinar, 17/18 February 2021
- Machine Learning Technologies for Seismic Interpretation with Case Studies
- Solving Problems in Interpretation with Machine Learning – GEO YPS Webinar Series
- From E to P Using Machine Learning: A Case Study in Columbia – A free webinar, May 19 2021
- Video (in Chinese) : Leveraging Deep Learning in Extracting Features of Interest from Seismic Data
- Video: Leveraging Deep Learning in Extracting Features of Interest from Seismic Data
- Webinar: Leveraging Deep Learning in Extracting Features of Interest from Seismic Data
- Webinar: Leveraging Deep Learning in Extracting Features of Interest from Seismic Data
- Machine Learning Essentials for Seismic Interpretation | Geophysical Society of Houston (GSH) Webinar
- Solving Interpretation Problems using Machine Learning on Multi-Attribute, Sample-Based Seismic Data