| Literature DB >> 31895353 |
Feifei Huang1, Ruihao Li1, Gan Wang1, Jueting Zheng1, Yongxiang Tang1, Junyang Liu1, Yang Yang1, Yuan Yao2, Jia Shi1, Wenjing Hong1.
Abstract
Single-molecule electrical characterization reveals the events occurring at the nanoscale, which provides guidelines for molecular materials and devices. However, data analysis to extract valuable information from the nanoscale measurement data remained as a major challenge. Herein, an unsupervised deep leaning method, a deep auto-encoder K-means (DAK) algorithm, is developed to distinguish different events from single-molecule charge transport measurements. As validated by three single-molecule junction systems, the method applies to the recognition for multiple compounds with various events and offers an effective data analysis method to track reaction kinetics at the single-molecule scale. This work opens the possibility of using deep unsupervised approaches to studying the physical and chemical processes at the single-molecule level.Year: 2020 PMID: 31895353 DOI: 10.1039/c9cp04496e
Source DB: PubMed Journal: Phys Chem Chem Phys ISSN: 1463-9076 Impact factor: 3.676