Machine learning-aided atomic structure identification of interfacial ionic hydrates from AFM images.
Binze TangYizhi SongMian QinYe TianZhen Wei WuYing JiangDuanyun CaoLimei XuPublished in: National science review (2022)
Relevant to broad applied fields and natural processes, interfacial ionic hydrates have been widely studied by using ultrahigh-resolution atomic force microscopy (AFM). However, the complex relationship between the AFM signal and the investigated system makes it difficult to determine the atomic structure of such a complex system from AFM images alone. Using machine learning, we achieved precise identification of the atomic structures of interfacial water/ionic hydrates based on AFM images, including the position of each atom and the orientations of water molecules. Furthermore, it was found that structure prediction of ionic hydrates can be achieved cost-effectively by transfer learning using neural network trained with easily available interfacial water data. Thus, this work provides an efficient and economical methodology that not only opens up avenues to determine atomic structures of more complex systems from AFM images, but may also help to interpret other scientific studies involving sophisticated experimental results.
Keyphrases
- atomic force microscopy
- ionic liquid
- high speed
- single molecule
- deep learning
- electron transfer
- convolutional neural network
- machine learning
- neural network
- molecular dynamics simulations
- optical coherence tomography
- high resolution
- perovskite solar cells
- solid state
- artificial intelligence
- electronic health record
- mass spectrometry