Fast Detection and Classification of Microplastics below 10 μm Using CNN with Raman Spectroscopy

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초록

In light of the growing awareness regarding the ubiquitous presence of microplastics (MPs) in our environment, recent efforts have been made to integrate Artificial Intelligence (AI) technology into MP detection. Among spectroscopic techniques, Raman spectroscopy is preferred for the detection of MP particles measuring less than 10 mu m, as it overcomes the diffraction limitations encountered in Fourier transform infrared (FTIR). However, Raman spectroscopy's inherent limitation is its low scattering cross section, which often results in prolonged data collection times during practical sample measurements. In this study, we implemented a convolutional neural network (CNN) model alongside a tailored data interpolation strategy to expedite data collection for MP particles within the 1-10 mu m range. Remarkably, we achieved the classification of plastic types for individual particles with a mere 0.4 s of exposure time, reaching an approximate confidence level of 85.47(+/- 5.00)%. We postulate that the result significantly accelerates the aggregation of microplastic distribution data in diverse scenarios, contributing to the development of a comprehensive global microplastic map.

제목
Fast Detection and Classification of Microplastics below 10 μm Using CNN with Raman Spectroscopy
저자
Lim, JeonghyunShin, GogyunShin, Dongha
DOI
10.1021/acs.analchem.4c00823
발행일
2024-04
유형
Article
저널명
Analytical Chemistry
96
17
페이지
6819 ~ 6825