Data-centric artificial olfactory system based on the eigengraph
  • Sung Seung-Hyun
  • Suh Jun Min
  • 황윤지
  • Jang Ho Won
  • Park Jeon Gue
  • 외 1명
Citations

WEB OF SCIENCE

0

초록

Recent studies of electronic nose system tend to waste significant amount of important data in odor identification. Until now, the sensitivity-oriented data composition has made it difficult to discover meaningful data to apply artificial intelligence in terms of in-depth analysis for odor attributes specifying the identities of gas molecules, ultimately resulting in hindering the advancement of the artificial olfactory technology. Here, we realize a data-centric approach to implement standardized artificial olfactory systems inspired by human olfactory mechanisms by formally defining and utilizing the concept of Eigengraph in electrochemisty. The implicit odor attributes of the eigengraphs were mathematically substantialized as the Fourier transform-based Mel-Frequency Cepstral Coefficient feature vectors. Their effectiveness and applicability in deep learning processes for gas classification have been clearly demonstrated through experiments on complex mixed gases and automobile exhaust gases. We suggest that our findings can be widely applied as source technologies to develop standardized artificial olfactory systems.,Sensitivity-dependent data analysis methods disrupted the development of artificial olfactory technologies. Here, authors present a data-centric artificial olfactory system based on eigengraph that reflects the intrinsic electrochemical interaction.,

제목
Data-centric artificial olfactory system based on the eigengraph
저자
Sung Seung-HyunSuh Jun Min황윤지Jang Ho WonPark Jeon GueJun Seong Chan
DOI
10.1038/s41467-024-45430-9
발행일
2024-02
저널명
Nature Communications
15
1