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The Journal of Physical Chemistry Letters
|
December 18, 2024
Overcoming Inaccuracies in Machine Learning Interatomic Potential Implementation for Ionic Vacancy Simulations
Pandu Wisesa, Wissam A Saidi
The Journal of Physical Chemistry Letters
|
September 22, 2023
Machine-Learning Accelerated First-Principles Accurate Modeling of the Solid-Liquid Phase Transition in MgO under Mantle Conditions
Pandu Wisesa, Christopher M Andolina, Wissam A Saidi
The Journal of Physical Chemistry Letters
|
January 9, 2023
Development and Validation of Versatile Deep Atomistic Potentials for Metal Oxides
Pandu Wisesa, Christopher M Andolina, Wissam A Saidi
RSC Advances
|
May 9, 2022
Materials with the CrVO<sub>4</sub> structure type as candidate superprotonic conductors
Pandu Wisesa, Chenyang Li, Chuhong Wang, et al.
Nano Letters
|
January 14, 2025
Cu-Ni Oxidation Mechanism Unveiled: A Machine Learning-Accelerated First-Principles and <i>in Situ</i> TEM Study
Pandu Wisesa, Meng Li, Matthew T Curnan, et al.
Page
of 1
Search research articles
Search
Showing results (1-10 of 5) with videos related to
Sort By:
Page
of 1
The Journal of Physical Chemistry Letters
|
December 18, 2024
Overcoming Inaccuracies in Machine Learning Interatomic Potential Implementation for Ionic Vacancy Simulations
Pandu Wisesa, Wissam A Saidi
The Journal of Physical Chemistry Letters
|
September 22, 2023
Machine-Learning Accelerated First-Principles Accurate Modeling of the Solid-Liquid Phase Transition in MgO under Mantle Conditions
Pandu Wisesa, Christopher M Andolina, Wissam A Saidi
The Journal of Physical Chemistry Letters
|
January 9, 2023
Development and Validation of Versatile Deep Atomistic Potentials for Metal Oxides
Pandu Wisesa, Christopher M Andolina, Wissam A Saidi
RSC Advances
|
May 9, 2022
Materials with the CrVO<sub>4</sub> structure type as candidate superprotonic conductors
Pandu Wisesa, Chenyang Li, Chuhong Wang, et al.
Nano Letters
|
January 14, 2025
Cu-Ni Oxidation Mechanism Unveiled: A Machine Learning-Accelerated First-Principles and <i>in Situ</i> TEM Study
Pandu Wisesa, Meng Li, Matthew T Curnan, et al.
Page
of 1