Quantifying Atomically Dispersed Catalysts Using Deep Learning Assisted Microscopy.
Haoyang NiZhenyao WuXinyi WuJacob G SmithMichael J ZachmanJian-Min ZuoLili JuGuannan ZhangMiaofang ChiPublished in: Nano letters (2023)
The catalytic performance of atomically dispersed catalysts (ADCs) is greatly influenced by their atomic configurations, such as atom-atom distances, clustering of atoms into dimers and trimers, and their distributions. Scanning transmission electron microscopy (STEM) is a powerful technique for imaging ADCs at the atomic scale; however, most STEM analyses of ADCs thus far have relied on human labeling, making it difficult to analyze large data sets. Here, we introduce a convolutional neural network (CNN)-based algorithm capable of quantifying the spatial arrangement of different adatom configurations. The algorithm was tested on different ADCs with varying support crystallinity and homogeneity. Results show that our algorithm can accurately identify atom positions and effectively analyze large data sets. This work provides a robust method to overcome a major bottleneck in STEM analysis for ADC catalyst research. We highlight the potential of this method to serve as an on-the-fly analysis tool for catalysts in future in situ microscopy experiments.
Keyphrases
- deep learning
- convolutional neural network
- electron microscopy
- high resolution
- highly efficient
- machine learning
- artificial intelligence
- molecular dynamics
- big data
- single molecule
- electronic health record
- endothelial cells
- high throughput
- magnetic resonance
- optical coherence tomography
- high speed
- label free
- magnetic resonance imaging
- room temperature
- electron transfer
- risk assessment
- computed tomography
- single cell
- mass spectrometry
- resting state
- rna seq
- carbon dioxide