123 results on '"Carr, Timothy R."'
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2. Optimizing Deep Geothermal Drilling for Energy Sustainability in the Appalachian Basin.
3. Machine Learning-Driven Quantification of CO 2 Plume Dynamics at Illinois Basin Decatur Project Sites Using Microseismic Data.
4. Coupled laboratory and field investigations resolve microbial interactions that underpin persistence in hydraulically fractured shales
5. Advancing subsurface analysis: Integrating computer vision and deep learning for the near real-time interpretation of borehole image logs in the Illinois Basin-Decatur Project
6. Mesozoic horizontal stress in the East Sichuan Fold-and-thrust Belt, South China: Insights for Lower Paleozoic shale gas retention
7. The pore structural evolution of the Marcellus and Mahantango shales, Appalachian Basin
8. Developing a quantitative mudrock calibration for a handheld energy dispersive X-ray fluorescence spectrometer
9. Application of predictive data analytics to model daily hydrocarbon production using petrophysical, geomechanical, fiber-optic, completions, and surface data: A case study from the Marcellus Shale, North America
10. Porosity and storage capacity of Middle Devonian shale: A function of thermal maturity, total organic carbon, and clay content
11. Numerical simulation of Water-alternating-gas Process for Optimizing EOR and Carbon Storage
12. Geostatistical 3D geological model construction to estimate the capacity of commercial scale injection and storage of CO2 in Jacksonburg-Stringtown oil field, West Virginia, USA
13. Dew point pressure prediction based on mixed-kernels-function support vector machine in gas-condensate reservoir
14. Application of mixed kernels function (MKF) based support vector regression model (SVR) for CO2 – Reservoir oil minimum miscibility pressure prediction
15. Identifying organic-rich Marcellus Shale lithofacies by support vector machine classifier in the Appalachian basin
16. The application of improved NeuroEvolution of Augmenting Topologies neural network in Marcellus Shale lithofacies prediction
17. Methodology of organic-rich shale lithofacies identification and prediction: A case study from Marcellus Shale in the Appalachian basin
18. CT Scanning and Geophysical Measurements of the Marcellus Formation from the Tippens 6HS Well
19. A national look at carbon capture and storage—National carbon sequestration database and geographical information system (NatCarb)
20. Dynamics of Taxonomic Diversity
21. Marcellus Shale Lithofacies Prediction by Multiclass Neural Network Classification in the Appalachian Basin
22. Neural network prediction of carbonate lithofacies from well logs, Big Bow and Sand Arroyo Creek fields, Southwest Kansas
23. Lithostratigraphy and Petrophysics of the Devonian Marcellus Interval in West Virginia and Southwestern Pennsylvania
24. Coal-Bed Natural Gas Production and Gas Content of Pennsylvanian Coal Units in Eastern Kansas
25. Relationships between lineal fracture intensity and chemical composition in the Marcellus Shale, Appalachian Basin
26. Introduction to special section: Petrophysical analysis for shale reservoir evaluation: Methods, progress, and case studies
27. Application of a convolutional neural network in permeability prediction: A case study in the Jacksonburg-Stringtown oil field, West Virginia, USA
28. An Integrated Geostatistical Approach: Constructing 3D Modeling and Simulation of St. Louis Carbonate Reservoir Systems, Archer Field, Southwest Kansas
29. Horizontal WellsFocus on the Reservoir
30. Cost-effective Techniques for the Independent Producer to Identify Candidate Reservoirs for Horizontal Drilling in Mature Oil and Gas Fields
31. Coalbed gas play emerges in eastern Kansas basins. (Exploration & Development)
32. Pseudoseismic Transforms of Wireline Logs: A Seismic Approach to Petrophysical Sequence Stratigraphy
33. Integrated data-driven 3D shale lithofacies modeling of the Bakken Formation in the Williston basin, North Dakota, United States
34. Application of a new hybrid particle swarm optimization-mixed kernels function-based support vector machine model for reservoir porosity prediction: A case study in Jacksonburg-Stringtown oil field, West Virginia, USA
35. Marcellus Shale Energy and Environmental Laboratory (MSEEL) Results and Plans: Improved Subsurface Reservoir Characterization And Engineered Completions
36. Estimation of Fracability of the Marcellus Shale: A Case Study from the MIP3H in Monongalia County, West Virginia, USA
37. Preparation of Northern Mid-Continent Petroleum Atlas
38. Geo-Engineering through Internet Informatics (GEMINI)
39. Improved Oil Recovery in Mississippian Carbonate Reservoirs of Kansas - Near-Term, Class II
40. Improved Oil Recovery in Mississippian Carbonate Reservoirs of Kansas -- Near-Term -- Class
41. Improved Oil Recovery in Mississippian Carbonate Reservoirs of Kansas -- Near-Term -- Class 2
42. Marcellus Shale Energy and Environment Laboratory: Subsurface Reservoir Characterization and Engineered Completion
43. Application of Fiber-optic Temperature Data Analysis in Hydraulic Fracturing Evaluation--A Case Study in Marcellus Shale
44. Biogeochemical Characterization of Core, Fluids, and Gas at MSEEL Site
45. Depositional Environment and Impact on Pore Structure and Gas Storage Potential of Middle Devonian Organic Rich Shale, Northeastern West Virginia, Appalachian Basin
46. Comparison of supervised and unsupervised approaches for mudstone lithofacies classification: Case studies from the Bakken and Mahantango-Marcellus Shale, USA
47. The hierarchical decomposition method and its application in recognizing Marcellus Shale lithofacies through combining with neural network
48. Conodont paleoecology and biofacies analysis of the Lower Triassic Thaynes Formation in the Cordilleran Miogeocline
49. Quantitative analysis of Pennsylvanian shallow-water conodont biofacies, Utah and Colorado
50. Chapter 8. Nonequilibrium Model of Diversification: Faunal Turnover Dynamics
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