Abstract
Synchrotron radiation (SR) X-ray tomography is a main technique in realizing imaging of an object section by section. We apply this technique in recovering shale microstructures which becomes a hot topic recently in non-conventional oil and gas exploration. We first set the experimental setup using SR sources at BL13W1 beamline at Shanghai Synchrotron Radiation Facility to obtain the measured data of the shale sample, and then we establish the
Dedicated to Professor Alemdar Hasanov in occasion of the 60th anniversary of his birthday
Funding source: Chinese Academy of Sciences
Award Identifier / Grant number: XDB10020100
Funding source: National Natural Science Foundation of China
Award Identifier / Grant number: 41325016
Award Identifier / Grant number: 11401171
Award Identifier / Grant number: 11271349
Funding statement: The research is supported by Strategic Priority Research Program of the Chinese Academy of Science (Grant No. XDB10020100), National Natural Science Foundation of China under grant numbers 41325016, 11401171, 11271349 and Key Scientific and Technological Project 14B110019 of the Education Bureau of Henan Province.
Acknowledgements
We are quite grateful for reviewers’ important comments and suggestions which yield an improved version of the paper.
References
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© 2017 Walter de Gruyter GmbH, Berlin/Boston
Artikel in diesem Heft
- Frontmatter
- An a posteriori mollification method for the heat equation backward in time
- Inverse problem for nonlinear backward space-fractional diffusion equation
- Inverse problems for linear parabolic equations using mixed formulations – Part 1: Theoretical analysis
- Born non-scattering electromagnetic media
- Synchrotron radiation-based l1-norm regularization on micro-CT imaging in shale structure analysis
- Generalized sensitivity functions for multiple output systems
- A Mumford–Shah-type approach to simultaneous reconstruction and segmentation for emission tomography problems with Poisson statistics
Artikel in diesem Heft
- Frontmatter
- An a posteriori mollification method for the heat equation backward in time
- Inverse problem for nonlinear backward space-fractional diffusion equation
- Inverse problems for linear parabolic equations using mixed formulations – Part 1: Theoretical analysis
- Born non-scattering electromagnetic media
- Synchrotron radiation-based l1-norm regularization on micro-CT imaging in shale structure analysis
- Generalized sensitivity functions for multiple output systems
- A Mumford–Shah-type approach to simultaneous reconstruction and segmentation for emission tomography problems with Poisson statistics