We have investigated Machine Learning Interatomic Potentials in application to the properties of gold nanoparticles through the DeePMD package, using data generated with the ab-initio VASP program. Benchmarking was carried out on Au20 nanoclusters against ab-initio molecular dynamics simulations and show we can achieve similar accuracy with the machine learned potential at far reduced cost using LAMMPS. We have been able to reproduce structures and heat capacities of several isomeric forms. Comparison of our workflow with similar ML-IP studies is discussed and has identified areas for future improvement
In materials science, the first principles modeling, especially density functional theory (DFT), ser...
Abstract Machine learning interatomic potentials (MLIPs) are a promising technique for atomic modeli...
28 pagesUnderstanding the role of native defects, impurities, and dopants in reducing the intrinsica...
Machine learning of the quantitative relationship between local environment descriptors and the pote...
Understanding materials dynamics under extreme conditions of pressure, temperature, and strain rate ...
Machine learning interatomic potentials (ML-IPs) have emerged as a promising approach for bridging t...
Atomic-scale modeling and understanding of materials have made remarkable progress, but they are sti...
Interatomic potential (i.e. force-field) plays a vital role in atomistic simulation of materials. Em...
Machine Learning interatomic potentials (ML-IAP) are currently the most promising Non-empirical IAPs...
Abstract: Interatomic potential models based on machine learning (ML) are rapidly developing as tool...
Molecular simulations allow to investigate the behaviour of materials at the atomistic level, sheddi...
The molecular dynamics (MD) simulation is a favored method in materials science for understanding an...
This thesis deals with discussions on the motivation and approach for discovering new interatomic po...
Machine learning techniques using artificial neural networks (ANNs) have proven to be effective tool...
Thesis (Master's)--University of Washington, 2021Understanding molecules and molecular interactions ...
In materials science, the first principles modeling, especially density functional theory (DFT), ser...
Abstract Machine learning interatomic potentials (MLIPs) are a promising technique for atomic modeli...
28 pagesUnderstanding the role of native defects, impurities, and dopants in reducing the intrinsica...
Machine learning of the quantitative relationship between local environment descriptors and the pote...
Understanding materials dynamics under extreme conditions of pressure, temperature, and strain rate ...
Machine learning interatomic potentials (ML-IPs) have emerged as a promising approach for bridging t...
Atomic-scale modeling and understanding of materials have made remarkable progress, but they are sti...
Interatomic potential (i.e. force-field) plays a vital role in atomistic simulation of materials. Em...
Machine Learning interatomic potentials (ML-IAP) are currently the most promising Non-empirical IAPs...
Abstract: Interatomic potential models based on machine learning (ML) are rapidly developing as tool...
Molecular simulations allow to investigate the behaviour of materials at the atomistic level, sheddi...
The molecular dynamics (MD) simulation is a favored method in materials science for understanding an...
This thesis deals with discussions on the motivation and approach for discovering new interatomic po...
Machine learning techniques using artificial neural networks (ANNs) have proven to be effective tool...
Thesis (Master's)--University of Washington, 2021Understanding molecules and molecular interactions ...
In materials science, the first principles modeling, especially density functional theory (DFT), ser...
Abstract Machine learning interatomic potentials (MLIPs) are a promising technique for atomic modeli...
28 pagesUnderstanding the role of native defects, impurities, and dopants in reducing the intrinsica...