3.8 Article

Interpretable machine learning framework for catalyst performance prediction and validation with dry reforming of methane

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The effect of impregnation strategy on methane dry reforming activity of Ce promoted Pt/ZrO2

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INTERNATIONAL JOURNAL OF HYDROGEN ENERGY (2009)

Article Chemistry, Physical

Durable Ni/MgO catalysts for CO2 reforming of methane: Activity and metal-support interaction

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JOURNAL OF MOLECULAR CATALYSIS A-CHEMICAL (2009)

Article Nanoscience & Nanotechnology

A highly stable catalyst in methane reforming with carbon dioxide

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SCRIPTA MATERIALIA (2009)

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Mesoporous nanocrystalline MgAl2O4 spinel and its applications as support for Ni catalyst in dry reforming

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SCRIPTA MATERIALIA (2009)

Article Chemistry, Physical

Structural features and performance of LaNi1-xRhxO3 system for the dry reforming of methane

M. E. Rivas et al.

APPLIED CATALYSIS A-GENERAL (2008)

Article Chemistry, Physical

CO2 reforming of CH4 over nanocrystalline zirconia-supported nickel catalysts

M. Rezaei et al.

APPLIED CATALYSIS B-ENVIRONMENTAL (2008)

Article Engineering, Environmental

Activity of different zeolite-supported Ni catalysts for methane reforming with carbon dioxide

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CHEMICAL ENGINEERING JOURNAL (2008)

Article Chemistry, Applied

Improvement of coke resistance of Ni/Al2O3 catalyst in CH4/CO2 reforming by ZrO2 addition

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FUEL PROCESSING TECHNOLOGY (2008)

Article Chemistry, Applied

Effect of metal-support interaction on coking resistance of Rh-based catalysts in CH4/CO2 reforming

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CHINESE JOURNAL OF CATALYSIS (2007)

Article Chemistry, Physical

Structural and surface features of PtNi catalysts for reforming of methane with CO2

B. Pawelec et al.

APPLIED CATALYSIS A-GENERAL (2007)

Article Materials Science, Multidisciplinary

Density functional theory in surface science and heterogeneous catalysis

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MRS BULLETIN (2006)

Article Chemistry, Physical

CO2 reforming of CH4 over La-Ni based perovskite precursors

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APPLIED CATALYSIS A-GENERAL (2006)

Article Chemistry, Applied

CO2 reforming of methane to syngas over highly active and stable Pt/MgO catalysts

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CATALYSIS TODAY (2006)

Article Chemistry, Applied

CO2 reforming of methane over LaNiO3 as precursor material

C Batiot-Dupeyrat et al.

CATALYSIS TODAY (2005)

Article Chemistry, Physical

Study of Ni catalysts on different supports to obtain synthesis gas

F Pompeo et al.

INTERNATIONAL JOURNAL OF HYDROGEN ENERGY (2005)

Article Chemistry, Physical

Rational design of Mg-Al mixed oxide-supported bimetallic catalysts for dry reforming of methane

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APPLIED CATALYSIS A-GENERAL (2005)

Article Chemistry, Physical

Preparation of La2NiO4/ZSM-5 catalyst and catalytic performance in CO2/CH4 reforming to syngas

WD Zhang et al.

APPLIED CATALYSIS A-GENERAL (2005)

Article Chemistry, Physical

K-, CeO2-, and Mn-promoted Ni/Al2O3 catalysts for stable CO2 reforming of methane

A Nandini et al.

APPLIED CATALYSIS A-GENERAL (2005)

Article Chemistry, Physical

Perovskites as catalysts precursors:: synthesis and characterization

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JOURNAL OF MOLECULAR CATALYSIS A-CHEMICAL (2005)