Geophysics and the Energy Transition

Geophysics and the Energy Transition

Landro, Martin; Wilson, Malcolm; Davis, Tom

Elsevier - Health Sciences Division

11/2024

550

Mole

9780323959414

15 a 20 dias

Descrição não disponível.
Section 1 - The energy transition
1. Introduction to the energy transition
2. Economic enablement of carbon capture and sequestration for the low carbon energy transition
3. A survey of carbon capture and sequestration (or storage) cost and storage
4. Energy transition: a reservoir engineering perspective
5. Preventing CO2 from fossil fuels from reaching the atmosphere
6. Critical reservoir parameters for safe, secure, and long-term storage: lessons of the past for selection of permanent geological storage sites
Section 2 - Integration of disciplines and technologies to ensure effective CCS
7. The need for integrated reservoir characterization in carbon capture and storage
8. CO2 messes with rock physics
9. The geochemistry of carbon capture and storage with implications for hydromechanical feedbacks and geophysical monitoring
10. The geomechanics of carbon storage
Section 3 - The role of geophysics in developing successful CCS projects
11. Geophysical technologies for CO2 monitoring
12. Advances in coupled passive and active seismic monitoring for large-scale geologic carbon storage projects
13. New tools for quantitative data interpretation
Section 4 - New site studies using advanced geophysical technologies
14. Multiwell DAS VSP monitoring of a small-scale CO2 injection: experience from the Stage 3 Otway Project
15. Next generation geophysical sensing: exploring a new wave of geophysical technologies for the energy transition
16. The Aquistore deep saline carbon dioxide storage project: learnings in three key areas for planned deep saline storage projects
17. New carbon capture and storage projects in the Williston Basin
Section 5 - Moving forward
18. The challenges of energy transition and opportunities for geophysicists
19. Opportunities for open-source software and open science in carbon capture and storage
20. Advanced geophysics used in CO2 storage
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3D mapping tools; 4D seismic; Acoustics; Advanced geophysical monitoring; Applied geology; Applied geophysics; Applied mechanics; Aquistore; Automated data collection; Biofuel; Buoyant gas; CCS; CCUS; CH4; CO2; CO2 EOR; CO2 capture; CO2 sensitivity analysis; CO2 sequestration; CO2 storage; CO2 use; Caprock; Carbon capture and storage; Carbon capture and storage (CCS); Carbon capture and underground storage; Carbon capture technologies; Carbon capture utilization and storage (CCUS); Carbon dioxide; Carbon free energy; Carbon sequestration; Carbon storage; Careers; Chemomechanics; Climate change; Climate policy; Collaboration; Compact volumetric phased array; Computational geophysical acquisition; Conformance; Containment; Controlled source electromagnetics; Converted shear wave (PS); Cost of CCS; Cost of CO2 capture; Cost of CO2 storage; Cost of CO2 transport; Cost of carbon capture sequestration; Cost of the survey; DAC; Data integration; Decarbonization; Deep saline formations; Density; Distributed acoustic sensing; Dynamic reservoir characterization; Earth sciences; Earthquake risks; Economics; Elastic; Electromagnetics; Energy and climate change; Energy policy; Energy sustainability; Energy systems; Energy transition; Energy types; Environmental chemical engineering; Environmental monitoring; Environmental science; Ethanol; Facies-based inversion; Fiber optic; Fiber optics; Finance; Fixed seismic arrays; Flow measurement; Fluid migration; Formation; Formation permeability; Formation porosity; Fourth Industrial Revolution; Future opportunities; GHG; Geologic hydrogen; Geological storage; Geomechanical; Geophone network; Geophysics; Geosequestration; Geothermal; H2; Hydrogen; Injection; Innovation; Integrated reservoir characterization; Interactive data visualization; Inverse theory; Leak detection; Low temperature aqueous geochemistry; Machine learning