废水
实时计算
计算机科学
环境科学
工艺工程
工程类
环境工程
作者
Małgorzata Szczerska,Kacper Cierpiak,Monika Kosowska,Paweł Wityk,Sebastián García Galán,Patryk Sokołowski,Sylwia Fudala‐Książek,Michał T. Tomczak,Bei Ye,Aneta Łuczkiewicz
标识
DOI:10.1016/j.snr.2025.100346
摘要
• Optical fiber sensors was developed for remote wastewater surveillance • The sensor was validated and tested in real wastewater samples • Functionalized sensing head allows SARS-CoV-2 antibodies detection in wastewater • The concentration of antibodies in wastewater samples was 10 −6 – 10 −1 mg/ml • Data analysis was performed using traditional and machine learning methods In this study, a remote monitoring sewage system based on optical method is presented for the first time. The built-in wastewater surveillance system can perform autonomous monitoring with no requirement of sample collection and its transport to the laboratory. The measurement results can be obtained in real time, the work operation allows continuous or on-demand mode. The study includes design, development and application of a biofunctionalized fiber-optic sensor, as well as engaging machine learning algorithms for measured signals classification. The validated SARS-CoV-2 antibodies sensor has a measurement range of 10 −12 mg/mL to 10 −1 mg/mL. Known concentrations of Immunoglobulin G (IgG) from 10 −6 mg/mL to 10 −1 mg/mL were added to the tested wastewater samples and then detected by the prepared optical probe. The data obtained were then processed and classified by traditional method and selected machine learning algorithms; the results obtained for the KNeighbors algorithm are Balanced Accuracy of 92.97% and F1-score of 94.19%. This study is of significance to establish a system that can effectively monitor the outbreak of potential infections in society.
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