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Cathie Vix-Guterl

Researcher at Centre national de la recherche scientifique

Publications -  99
Citations -  6528

Cathie Vix-Guterl is an academic researcher from Centre national de la recherche scientifique. The author has contributed to research in topics: Carbon & Mesoporous material. The author has an hindex of 44, co-authored 98 publications receiving 5841 citations. Previous affiliations of Cathie Vix-Guterl include Institute of Company Secretaries of India & University of Upper Alsace.

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Electrochemical energy storage in ordered porous carbon materials

TL;DR: In this article, the specific capacitance and the hydrogen adsorption capacity in the carbon nanopores were correlated with the microtextural properties, and a linear dependence has been found between the capacitance or the amount of electrochemically stored hydrogen and the ultramicropores (pores smaller than 0.7nm).
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Correlation Between Microstructure and Na Storage Behavior in Hard Carbon

TL;DR: In this article, a single voltage Na uptake plateau at similar or equal to 0.1 V with a capacity of 200 mAh g(-1) for CNFs carbonized at above 2000 degrees C. This specific performance may be nested in the higher degree of graphitization, lower active surface area, and different porous texture of the carbon nanofibers.
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Optimisation of supercapacitors using carbons with controlled nanotexture and nitrogen content

TL;DR: In this article, a series of template carbons have been elaborated through a template technique using mesoporous silica and a perfect linear dependence has been found for the capacitance values versus the micropore volume determined by CO 2 adsorption.
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Realistic molecular model of kerogen's nanostructure

TL;DR: A panel of realistic molecular models of mature and immature kerogens are proposed that provide a detailed picture of kerogen's nanostructure without considering the presence of clays and other minerals in shales and show that they predict essential features amenable to experimental validation.