TY - JOUR
T1 - Atomic-scale structural inversion of interfacial water from atomic force microscopy
AU - Luo, Weiqiang
AU - Xu, Hongxin
AU - Wang, Yiheng
AU - Zhan, Zheyuan
AU - Xia, Zhiyi
AU - Guo, Jing
AU - Su, Yuefeng
AU - Chen, Jiawei
AU - Hong, Yanhui
AU - Cao, Duanyun
N1 - Publisher Copyright:
© 2026 Author(s).
PY - 2026/5/21
Y1 - 2026/5/21
N2 - The atomic-scale structure of interfacial water plays a central role in electrochemistry, catalysis, friction, and biological engineering. Although atomic force microscopy (AFM) provides high spatial resolution, direct determination of atomic water structures remains challenging due to weak hydrogen contrast and the complex relationship between AFM images and underlying atomic configurations. Here, we develop a closed-loop, physics-informed structural inversion framework for interfacial water from multi-height AFM images. This framework combines conditional generative adversarial learning with an explicit and interpretable structural descriptor that explicitly encodes atomic positions and hydrogen orientations, establishing a direct link between AFM contrast and atomic configuration. Trained on simulated AFM data, the method achieves high accuracy in localizing atomic positions and determining hydrogen orientation. For experimental AFM images, automated preprocessing and structure-aware postprocessing procedures yield physically plausible atomic structures that reproduce the observed AFM contrast after relaxation, despite experimental noise and limited height sampling. Rather than targeting a unique solution, this approach provides a robust initialization for AFM inverse problems, substantially reducing the configurational search space and offering a general strategy applicable to other hydrogen-rich and weakly bonded interfacial systems.
AB - The atomic-scale structure of interfacial water plays a central role in electrochemistry, catalysis, friction, and biological engineering. Although atomic force microscopy (AFM) provides high spatial resolution, direct determination of atomic water structures remains challenging due to weak hydrogen contrast and the complex relationship between AFM images and underlying atomic configurations. Here, we develop a closed-loop, physics-informed structural inversion framework for interfacial water from multi-height AFM images. This framework combines conditional generative adversarial learning with an explicit and interpretable structural descriptor that explicitly encodes atomic positions and hydrogen orientations, establishing a direct link between AFM contrast and atomic configuration. Trained on simulated AFM data, the method achieves high accuracy in localizing atomic positions and determining hydrogen orientation. For experimental AFM images, automated preprocessing and structure-aware postprocessing procedures yield physically plausible atomic structures that reproduce the observed AFM contrast after relaxation, despite experimental noise and limited height sampling. Rather than targeting a unique solution, this approach provides a robust initialization for AFM inverse problems, substantially reducing the configurational search space and offering a general strategy applicable to other hydrogen-rich and weakly bonded interfacial systems.
UR - https://www.scopus.com/pages/publications/105039273213
U2 - 10.1063/5.0326873
DO - 10.1063/5.0326873
M3 - Article
C2 - 42138405
AN - SCOPUS:105039273213
SN - 0021-9606
VL - 164
JO - Journal of Chemical Physics
JF - Journal of Chemical Physics
IS - 19
M1 - 194106
ER -