Utilizing
Data Mining for the Synthesis of Functionalized
Tungsten Oxide with Enhanced Oxygen Vacancies for Highly Sensitive
Detection of Triethylamine
Version 2 2024-01-26, 23:04Version 2 2024-01-26, 23:04
Version 1 2024-01-25, 00:03Version 1 2024-01-25, 00:03
Posted on 2024-01-26 - 23:04
The
optimal combination of metal ions and ligands for sensing materials
was estimated by using a data-driven model developed in this research.
This model utilized advanced computational algorithms and a data set
of 100,000 literature pieces. The semiconductor metal oxide (SMO)
that is most suitable for detecting triethylamine (TEA) with the highest
probability was identified by using the Word2vec model, which employed
the maximum likelihood method. The loss function of the probability
distribution was minimized in this process. Based on the analysis,
a novel hierarchical nanostructured tungsten-based coordination with
2,5-dihydroxyterephthalic acid (W-DHTA) was synthesized. This synthesis
involved a postsynthetic hydrothermal treatment (psHT) and the self-assembly
of tungsten oxide nanorods. The tungsten oxide nanorods had a significant
number of oxygen vacancies. Various techniques were used to characterize
the synthesized material, and its sensing performance toward volatile
organic compound (VOC) gases was evaluated. The results showed that
the functionalized tungsten oxide exhibited an exceptionally high
sensitivity and selectivity toward TEA gas. Even in a highly disturbed
environment, the detection limit for TEA gas was as low as 40 parts
per billion (ppb). Furthermore, our findings suggest that the control
of oxygen vacancies in sensing materials plays a crucial role in enhancing
the sensitivity and selectivity of gas sensors. This approach was
supported by the utilization of density functional theory (DFT) computation
and machine learning algorithms to assess and analyze the performance
of sensor devices, providing a highly efficient and universally applicable
research methodology for the development and design of next-generation
functional materials.
CITE THIS COLLECTION
DataCite
DataCiteDataCite
No result found
Shao, Shaofeng; Yan, Liangwei; Zhang, Lei; Zhang, Jun; Li, Zuoxi; Kim, Hyoun Woo; et al. (2024). Utilizing
Data Mining for the Synthesis of Functionalized
Tungsten Oxide with Enhanced Oxygen Vacancies for Highly Sensitive
Detection of Triethylamine. ACS Publications. Collection. https://doi.org/10.1021/acsami.3c16021Â