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Open Access
Numéro |
Oil & Gas Science and Technology - Rev. IFP Energies nouvelles
Volume 73, 2018
|
|
---|---|---|
Numéro d'article | 70 | |
Nombre de pages | 10 | |
DOI | https://doi.org/10.2516/ogst/2018021 | |
Publié en ligne | 7 décembre 2018 |
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