TY - JOUR
T1 - Domain features-informed two-step machine learning
T2 - accelerating the search for superlubric heterostructures
AU - Chen, Lu
AU - Huang, Yunjia
AU - Zhang, Hanyue
AU - Li, Ruoyu
AU - Mei, Hui
AU - Shi, Junqin
AU - Liu, Zhe
AU - Zhou, Feng
AU - Liu, Weimin
AU - Fan, Xiaoli
N1 - Publisher Copyright:
© The Author(s) 2026.
PY - 2026/12
Y1 - 2026/12
N2 - Searching for superlubric heterostructures composed of transitional metal dichalcogenides monolayers is challenging due to the variety of constituent elements. In this study, a two-step machine learning approach based on domain features is employed to efficiently tackle this challenging task. Machine learning models are trained to predict complex domain features from structural features. Bayesian optimization is then used to search for superlubricants. Machine learning models are iteratively rechained based on a small number of high-accuracy calculations, saving computational time and ensuring accuracy. MoS2/WS2, MoS2/VS2, and NiS2/NbSSe heterostructures have been identified as superlubric heterostructures and confirmed through theoretical calculations. Under 1 ~ 5 N, the experimental friction coefficients at the interface of MoS2/WS2 are 12% ~ 36% lower compared to MoS2/MoSe2, which has previously been proven to exhibit superlubricity. These results validate the effectiveness of the two-step machine learning approach in searching for superlubric heterostructures in a significantly reduced time.
AB - Searching for superlubric heterostructures composed of transitional metal dichalcogenides monolayers is challenging due to the variety of constituent elements. In this study, a two-step machine learning approach based on domain features is employed to efficiently tackle this challenging task. Machine learning models are trained to predict complex domain features from structural features. Bayesian optimization is then used to search for superlubricants. Machine learning models are iteratively rechained based on a small number of high-accuracy calculations, saving computational time and ensuring accuracy. MoS2/WS2, MoS2/VS2, and NiS2/NbSSe heterostructures have been identified as superlubric heterostructures and confirmed through theoretical calculations. Under 1 ~ 5 N, the experimental friction coefficients at the interface of MoS2/WS2 are 12% ~ 36% lower compared to MoS2/MoSe2, which has previously been proven to exhibit superlubricity. These results validate the effectiveness of the two-step machine learning approach in searching for superlubric heterostructures in a significantly reduced time.
UR - https://www.scopus.com/pages/publications/105035846933
U2 - 10.1038/s41524-026-01996-0
DO - 10.1038/s41524-026-01996-0
M3 - 文章
AN - SCOPUS:105035846933
SN - 2057-3960
VL - 12
JO - npj Computational Materials
JF - npj Computational Materials
IS - 1
M1 - 147
ER -