Accurate real-time monitoring of fine dust using a densely connected convolutional networks with measured plasma emissions

Accurate identification and monitoring of fine dust are emerging as a primary global issue for addressing the harmful effects of fine dust on public health. Identifying the source of fine dust is indispensable for ensuring the human lifespan as well as preventing environmental disasters. Here a simp...

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Veröffentlicht in:Chemosphere (Oxford) 2022-04, Vol.293, p.133604-133604, Article 133604
Hauptverfasser: Yang, Jun-Ho, Park, Sanghoon, Kim, Seonghwan, Cho, Youngkyu, Yoh, Jack J.
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Sprache:eng
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Zusammenfassung:Accurate identification and monitoring of fine dust are emerging as a primary global issue for addressing the harmful effects of fine dust on public health. Identifying the source of fine dust is indispensable for ensuring the human lifespan as well as preventing environmental disasters. Here a simple yet effective spark-induced plasma spectroscopy (SIPS) unit combined with deep learning for real-time classification is verified as a fast and precise PM (particulate matter) source identification technique. SIPS promises portable use, label-free detection, source identification, and chemical susceptibility in a single step with acceptable speed and accuracy. In particular, the densely connected convolutional networks (DenseNet) are used with measured spark-induced plasma emission datasets to identify PM sources at above 98%. The identification performance was compared with other common classification methods, and DenseNet with dropouts (30%), optimized batch size (16), and cyclic learning rate training emerged as the most promising source identification method. [Display omitted] •Accurate (>98%) identification of fine dust is achieved by using SIPS.•Application of deep learning in SIPS is conducted for the first time.•SIPS combined with DenseNet offered the best identification for fine dust sources.
ISSN:0045-6535
1879-1298
DOI:10.1016/j.chemosphere.2022.133604