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김귀용

Kim, Kwiyong
Redox and electrochemistry advancing clean technologies Lab.
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Revolutionizing cesium monitoring in seawater through electrochemical voltammetry and machine learning

Author(s)
Lee, JinukBaek, KwangyeolJeong, HeewonDoh, SunghoonKim, KwiyongCho, Kyung Hwa
Issued Date
2025-02
DOI
10.1016/j.jhazmat.2024.136558
URI
https://scholarworks.unist.ac.kr/handle/201301/86257
Citation
JOURNAL OF HAZARDOUS MATERIALS, v.484, pp.136558
Abstract
Monitoring radioactive cesium ions (Cs+) in seawater is vital for environmental safety but remains challenging due to limitations in the accessibility, stability, and selectivity of traditional methods. This study presents an innovative approach that combines electrochemical voltammetry using nickel hexacyanoferrate (NiHCF) thinfilm electrode with machine learning (ML) to enable accurate and portable detection of Cs+. Optimizing the fabrication of NiHCF thin-film electrodes enabled the development of a robust sensor that generates cyclic voltammograms (CVs) sensitive to Cs* concentrations as low as 1 ppb in synthetic seawater and 10 ppb in real seawater, with subtle changes in CV patterns caused by trace Cs* effectively identified and analyzed using ML. Using 2D convolutional neural networks (CNNs), we classified Cs+ concentrations across eight logarithmic classes (0 - 106 ppb) with 100 % accuracy and an F1-score of 1 in synthetic seawater datasets, outperforming the 1D CNN and deep neural networks. Validation using real seawater datasets confirmed the applicability of our model, achieving high performance. Moreover, gradient-weighted class activation mapping (Grad-CAM) identified critical CV regions that were overlooked during manual inspection, validating model reliability. This integrated method offers sensitive and practical solutions for monitoring Cs+ in seawater, helping to prevent its accumulation in ecosystems.
Publisher
ELSEVIER
ISSN
0304-3894
Keyword (Author)
ElectrochemistryDeep learningConvolutional neural networkCesiumCyclic voltammetry
Keyword
ENVIRONMENTAL WATERREMOVALIONSADSORPTIONIMPACTSCS-137

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