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Nature
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October 5, 2022
Low-hysteresis shape-memory ceramics designed by multimode modelling
Edward L Pang, Gregory B Olson, Christopher A Schuh
CALPHAD ; Computer Coupling of Phase Diagrams and Thermochemistry
|
December 14, 2020
Structural stability of Co-V intermetallic phases and thermodynamic description of the Co-V system
Peisheng Wang, Thomas Hammerschmidt, Ursula R Kattner, et al.
Intermetallics
|
October 4, 2019
Thermodynamic analysis of the topologically close packed σ phase in the Co-Cr system
Peisheng Wang, Matthew C Peters, Ursula R Kattner, et al.
CALPHAD ; Computer Coupling of Phase Diagrams and Thermochemistry
|
October 4, 2019
Thermodynamic assessment of the Co-Ta system
Peisheng Wang, Jörg Koßmann, Ursula R Kattner, et al.
Journal of Computational Chemistry
|
September 30, 2017
Prediction of seebeck coefficient for compounds without restriction to fixed stoichiometry: A machine learning approach
Al'ona Furmanchuk, James E Saal, Jeff W Doak, et al.
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Search research articles
Search
Showing results (1-10 of 5) with videos related to
Sort By:
Page
of 1
Nature
|
October 5, 2022
Low-hysteresis shape-memory ceramics designed by multimode modelling
Edward L Pang, Gregory B Olson, Christopher A Schuh
CALPHAD ; Computer Coupling of Phase Diagrams and Thermochemistry
|
December 14, 2020
Structural stability of Co-V intermetallic phases and thermodynamic description of the Co-V system
Peisheng Wang, Thomas Hammerschmidt, Ursula R Kattner, et al.
Intermetallics
|
October 4, 2019
Thermodynamic analysis of the topologically close packed σ phase in the Co-Cr system
Peisheng Wang, Matthew C Peters, Ursula R Kattner, et al.
CALPHAD ; Computer Coupling of Phase Diagrams and Thermochemistry
|
October 4, 2019
Thermodynamic assessment of the Co-Ta system
Peisheng Wang, Jörg Koßmann, Ursula R Kattner, et al.
Journal of Computational Chemistry
|
September 30, 2017
Prediction of seebeck coefficient for compounds without restriction to fixed stoichiometry: A machine learning approach
Al'ona Furmanchuk, James E Saal, Jeff W Doak, et al.
Page
of 1