Accurate prediction of structural and mechanical properties on amorphous materials enabled through machine-learning potentials: A case study of silicon nitride
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In: Computational materials science, Vol. 249.2025, No. 5 February, 113629, 06.01.2025.
Research output: Contribution to journal › Article › Research › peer-review
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TY - JOUR
T1 - Accurate prediction of structural and mechanical properties on amorphous materials enabled through machine-learning potentials
T2 - A case study of silicon nitride
AU - Nayak, Ganesh Kumar
AU - Srinivasan, Prashanth
AU - Todt, Juraj
AU - Daniel, Rostislav
AU - Nicolini, Paolo
AU - Holec, David
PY - 2025/1/6
Y1 - 2025/1/6
N2 - Ab initio calculations represent the technique of election to study material system, however, they presentsevere limitations in terms of the size of the system that can be simulated. Often, the results in the simulationof amorphous materials depend dramatically on the size of the system. Here, we overcome this limitation forthe specific case of mechanical properties of amorphous silicon nitride (a-Si3N4) by training a machine learning(ML) interatomic model. Our strategy is based on the generation of targeted training sets, which also includedeliberately stressed structures. Using this dataset, we trained a moment tensor potential (MTP) for a-Si3N4.We show that molecular dynamics simulations using the ML model on much larger systems yield elasticallyisotropic response and can reproduce experimental measurement. To do so, models containing at least ≈3, 500atoms are necessary. The Young’s modulus calculated from the MTP at room temperature is 220 GPa, which isvery well in agreement with the nanoindentation measurement. Our study demonstrates the broader impact ofmachine learning potentials for predicting structural and mechanical properties, even for complex amorphousstructures.
AB - Ab initio calculations represent the technique of election to study material system, however, they presentsevere limitations in terms of the size of the system that can be simulated. Often, the results in the simulationof amorphous materials depend dramatically on the size of the system. Here, we overcome this limitation forthe specific case of mechanical properties of amorphous silicon nitride (a-Si3N4) by training a machine learning(ML) interatomic model. Our strategy is based on the generation of targeted training sets, which also includedeliberately stressed structures. Using this dataset, we trained a moment tensor potential (MTP) for a-Si3N4.We show that molecular dynamics simulations using the ML model on much larger systems yield elasticallyisotropic response and can reproduce experimental measurement. To do so, models containing at least ≈3, 500atoms are necessary. The Young’s modulus calculated from the MTP at room temperature is 220 GPa, which isvery well in agreement with the nanoindentation measurement. Our study demonstrates the broader impact ofmachine learning potentials for predicting structural and mechanical properties, even for complex amorphousstructures.
UR - https://doi.org/10.1016/j.commatsci.2024.113629
U2 - 10.1016/j.commatsci.2024.113629
DO - 10.1016/j.commatsci.2024.113629
M3 - Article
VL - 249.2025
JO - Computational materials science
JF - Computational materials science
SN - 0927-0256
IS - 5 February
M1 - 113629
ER -