Materials Science · Physics
Upscaling DFT-trained machine-learning interatomic potential toward Quantum Monte Carlo accuracy: Sulfur-vacancy migration in monolayer MoS$_2$ as a testbed
Adam Hložný, Ján Brndiar, Ye Luo, Ivan Štich
2026-05-22
Materials Science · Physics
Machine-Learned Interatomic Potential for Predictive Simulation of MoS2 Epitaxy
Emir Bilgili, Nicholas Taormina, Richard Hennig, Simon R. Phillpot +1
2026-05-20
Materials Science · Physics
Machine-learning potentials for nanoscale simulations of deformation and fracture: example of TiB$_2$ ceramic
Shuyao Lin, Luis Casillas-Trujillo, Ferenc Tasnádi, Lars Hultman +3
2024-06-14
Materials Science · Physics
Large-Scale, Long-Time Atomistic Simulations of Proton Transport in Polymer Electrolyte Membranes Using a Neural Network Interatomic Potential
Yuta Yoshimoto, Naoki Matsumura, Yuto Iwasaki, Hiroshi Nakao +1
2025-03-27
Chemical Physics · Physics
Data-driven construction of machine-learning-based interatomic potentials for gas-surface scattering dynamics: the case of NO on graphite
Samuel Del Fré, Gilberto A. Alou Angulo, Maurice Monnerville, Alejandro Rivero Santamaría
2026-03-20
Materials Science · Physics
Benchmarking Universal Machine Learning Interatomic Potentials for Supported Nanoparticles: Decoupling Energy Accuracy from Structural Exploration
Jiayan Xu, Abhirup Patra, Amar Deep Pathak, Sharan Shetty +2
2026-03-26
Materials Science · Physics
Accurate Machine Learning Interatomic Potentials for Polyacene Molecular Crystals: Application to Single Molecule Host-Guest Systems
Burak Gurlek, Shubham Sharma, Paolo Lazzaroni, Angel Rubio +1
2025-04-17
Chemical Physics · Physics
Machine Learning Interatomic Potentials: library for efficient training, model development and simulation of molecular systems
Christoph Brunken, Olivier Peltre, Heloise Chomet, Lucien Walewski +10
2025-08-18
Materials Science · Physics
Machine Learning Interatomic Potentials for Million-Atom Simulations of Multicomponent Alloys
Fei Shuang, Penghua Ying, Kai Liu, Zixiong Wei +4
2026-04-06
Chemical Physics · Physics
Development of machine-learned interatomic potentials to predict structure, transport, and reactivity in platinum-based fuel cells
Kamron Fazel, Sam Brown, Jacob Clary, Pritom Bose +4
2026-04-03
Materials Science · Physics
Machine Learning Interatomic Potential for Simulations of Carbon at Extreme Conditions
Jonathan T. Willman, Kien Nguyen-Cong, Ashley S. Williams, Anatoly B. Belonoshko +4
2022-12-14
Chemical Physics · Physics
Machine Learning Interatomic Potentials: Advancing Open-Source Software for Efficient and Scalable Molecular Simulation
Christoph Brunken, Titouan Cormier, Lucien Walewski, Marco Carobene +14
2026-05-22
Materials Science · Physics
Structural Stability of Sulfur Depleted MoS2
Ygor M. Jaques, Cristiano F. Woellner, Lucas M. Sassi, Marcelo L. Pereira +3
2025-06-02
Chemical Physics · Physics
Design Space of Self--Consistent Electrostatic Machine Learning Interatomic Potentials
William J. Baldwin, Ilyes Batatia, Martin Vondrák, Johannes T. Margraf +1
2026-03-17
Materials Science · Physics
Exploring thermal expansion of carbon-based nanosheets by machine-learning interatomic potentials
Bohayra Mortazavi, Ali Rajabpour, Xiaoying Zhuang, Timon Rabczuk +1
2021-10-22
Chemical Physics · Physics
Learning Interatomic Potentials at Multiple Scales
Xiang Fu, Albert Musaelian, Anders Johansson, Tommi Jaakkola +1
2023-10-24
Chemical Physics · Physics
XMCQDPT2-Fidelity Transfer-Learning Potentials and a Wavepacket Oscillation Model with Power-Law Decay for Ultrafast Photodynamics
Ivan V. Dudakov, Pavel M. Radzikovitsky, Dmitry S. Popov, Denis A. Firsov +4
2025-12-09
Materials Science · Physics
Efficient molecular dynamics simulation of 2D penta-silicene materials using machine learning potentials
Le Huu Nghia, Pham Thi Bich Thao, Truong Do Anh Kha, Vo Khuong Dien +1
2026-02-13
Materials Science · Physics
Machine-learning interatomic potentials achieving CCSD(T) accuracy for systems with extended covalent networks and van der Waals interactions
Yuji Ikeda, Axel Forslund, Pranav Kumar, Yongliang Ou +3
2026-03-11
Materials Science · Physics
Large spin-orbit splitting of deep in-gap defect states of engineered sulfur vacancies in monolayer WS2
Bruno Schuler, Diana Y. Qiu, Sivan Refaely-Abramson, Christoph Kastl +9
2019-08-21
Materials Science · Physics
Characterizing Defect Dynamics in Silicon Carbide Using Symmetry-Adapted Collective Variables and Machine Learning Interatomic Potentials
Soumajit Dutta, Cunzhi Zhang, Gustavo Perez Lemus, Juan J. de Pablo +3
2025-12-05