Advances in Computed Tomography

Advances in Computed Tomography

ISSN Print: 2169-2475
ISSN Online: 2169-2483
www.scirp.org/journal/act
E-mail: act@scirp.org
"Porosity Analysis Based on CT Images of Coal Under Uniaxial Loading"
written by Lingtao Mao, Peng Shi, Hui Tu, Liqian An, Yang Ju, Nai Hao,
published by Advances in Computed Tomography, Vol.1 No.2, 2012
has been cited by the following article(s):
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[13] A review of the application of X-ray computed tomography to the study of coal
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[14] Method and means to estimate porosity distribution on the surface of polished section of coal
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[15] Machine learning approach for automated coal characterization using scanned electron microscopic images
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[16] AGP de CO2: Caracterización del espacio poroso de las areniscas de Utrillas
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[18] Microstructure and pore system analysis of Barren Measures shale of Raniganj field, India
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