A novel method for multi-pollutant monitoring in water supply systems using chemical machine vision
Drinking water is vital for human health and life, but detecting multiple contaminants in it is challenging. Traditional testing methods are both time-consuming and labor-intensive, lacking the ability to capture abrupt changes in water quality over brief intervals. This paper proposes a direct anal...
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Veröffentlicht in: | Environmental science and pollution research international 2024-04, Vol.31 (18), p.26555-26566 |
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description | Drinking water is vital for human health and life, but detecting multiple contaminants in it is challenging. Traditional testing methods are both time-consuming and labor-intensive, lacking the ability to capture abrupt changes in water quality over brief intervals. This paper proposes a direct analysis and rapid detection method of three indicators of arsenic, cadmium, and selenium in complex drinking water systems by combining a novel long-path spectral imager with machine learning models. Our technique can obtain multiple parameters in about 1 s. The experiment involved setting up samples from various drinking water backgrounds and mixed groups, totaling 9360 injections. A raw visible light source ranging from 380 to 780 nm was utilized, uniformly dispersing light into the sample cell through a filter. The residual beam was captured by a high-definition camera, forming a distinctive spectrum. Three deep learning models—ResNet-50, SqueezeNet V1.1, and GoogLeNet Inception V1—were employed. Datasets were divided into training, validation, and test sets in a 6:2:2 ratio, and prediction performance across different datasets was assessed using the coefficient of determination and root mean square error. The experimental results show that a well-trained machine learning model can extract a lot of feature image information and quickly predict multi-dimensional drinking water indicators with almost no preprocessing. The model’s prediction performance is stable under different background drinking water systems. The method is accurate, efficient, and real-time and can be widely used in actual water supply systems. This study can improve the efficiency of water quality monitoring and treatment in water supply systems, and the method’s potential for environmental monitoring, food safety, industrial testing, and other fields can be further explored in the future. |
doi_str_mv | 10.1007/s11356-024-32791-3 |
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Traditional testing methods are both time-consuming and labor-intensive, lacking the ability to capture abrupt changes in water quality over brief intervals. This paper proposes a direct analysis and rapid detection method of three indicators of arsenic, cadmium, and selenium in complex drinking water systems by combining a novel long-path spectral imager with machine learning models. Our technique can obtain multiple parameters in about 1 s. The experiment involved setting up samples from various drinking water backgrounds and mixed groups, totaling 9360 injections. A raw visible light source ranging from 380 to 780 nm was utilized, uniformly dispersing light into the sample cell through a filter. The residual beam was captured by a high-definition camera, forming a distinctive spectrum. Three deep learning models—ResNet-50, SqueezeNet V1.1, and GoogLeNet Inception V1—were employed. Datasets were divided into training, validation, and test sets in a 6:2:2 ratio, and prediction performance across different datasets was assessed using the coefficient of determination and root mean square error. The experimental results show that a well-trained machine learning model can extract a lot of feature image information and quickly predict multi-dimensional drinking water indicators with almost no preprocessing. The model’s prediction performance is stable under different background drinking water systems. The method is accurate, efficient, and real-time and can be widely used in actual water supply systems. This study can improve the efficiency of water quality monitoring and treatment in water supply systems, and the method’s potential for environmental monitoring, food safety, industrial testing, and other fields can be further explored in the future.</description><identifier>ISSN: 1614-7499</identifier><identifier>ISSN: 0944-1344</identifier><identifier>EISSN: 1614-7499</identifier><identifier>DOI: 10.1007/s11356-024-32791-3</identifier><identifier>PMID: 38448769</identifier><language>eng</language><publisher>Berlin/Heidelberg: Springer Berlin Heidelberg</publisher><subject>Aquatic Pollution ; Arsenic ; Atmospheric Protection/Air Quality Control/Air Pollution ; Cadmium ; cameras ; computer vision ; Contaminants ; data collection ; Datasets ; Deep learning ; Drinking water ; Earth and Environmental Science ; Ecotoxicology ; Environment ; Environmental Chemistry ; Environmental Health ; Environmental monitoring ; Food industry ; Food safety ; High definition ; human health ; Indicators ; Learning algorithms ; light ; Light sources ; Machine learning ; Machine vision ; Performance prediction ; Pollution monitoring ; prediction ; rapid methods ; Research Article ; Selenium ; Waste Water Technology ; Water conveyance ; Water Management ; Water monitoring ; Water pollution ; Water Pollution Control ; Water quality ; Water quality management ; Water supply ; Water supply systems</subject><ispartof>Environmental science and pollution research international, 2024-04, Vol.31 (18), p.26555-26566</ispartof><rights>The Author(s), under exclusive licence to Springer-Verlag GmbH Germany, part of Springer Nature 2024. 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Traditional testing methods are both time-consuming and labor-intensive, lacking the ability to capture abrupt changes in water quality over brief intervals. This paper proposes a direct analysis and rapid detection method of three indicators of arsenic, cadmium, and selenium in complex drinking water systems by combining a novel long-path spectral imager with machine learning models. Our technique can obtain multiple parameters in about 1 s. The experiment involved setting up samples from various drinking water backgrounds and mixed groups, totaling 9360 injections. A raw visible light source ranging from 380 to 780 nm was utilized, uniformly dispersing light into the sample cell through a filter. The residual beam was captured by a high-definition camera, forming a distinctive spectrum. Three deep learning models—ResNet-50, SqueezeNet V1.1, and GoogLeNet Inception V1—were employed. Datasets were divided into training, validation, and test sets in a 6:2:2 ratio, and prediction performance across different datasets was assessed using the coefficient of determination and root mean square error. The experimental results show that a well-trained machine learning model can extract a lot of feature image information and quickly predict multi-dimensional drinking water indicators with almost no preprocessing. The model’s prediction performance is stable under different background drinking water systems. The method is accurate, efficient, and real-time and can be widely used in actual water supply systems. This study can improve the efficiency of water quality monitoring and treatment in water supply systems, and the method’s potential for environmental monitoring, food safety, industrial testing, and other fields can be further explored in the future.</description><subject>Aquatic Pollution</subject><subject>Arsenic</subject><subject>Atmospheric Protection/Air Quality Control/Air Pollution</subject><subject>Cadmium</subject><subject>cameras</subject><subject>computer vision</subject><subject>Contaminants</subject><subject>data collection</subject><subject>Datasets</subject><subject>Deep learning</subject><subject>Drinking water</subject><subject>Earth and Environmental Science</subject><subject>Ecotoxicology</subject><subject>Environment</subject><subject>Environmental Chemistry</subject><subject>Environmental Health</subject><subject>Environmental monitoring</subject><subject>Food industry</subject><subject>Food safety</subject><subject>High definition</subject><subject>human health</subject><subject>Indicators</subject><subject>Learning algorithms</subject><subject>light</subject><subject>Light sources</subject><subject>Machine learning</subject><subject>Machine vision</subject><subject>Performance prediction</subject><subject>Pollution monitoring</subject><subject>prediction</subject><subject>rapid methods</subject><subject>Research Article</subject><subject>Selenium</subject><subject>Waste Water Technology</subject><subject>Water conveyance</subject><subject>Water Management</subject><subject>Water monitoring</subject><subject>Water pollution</subject><subject>Water Pollution Control</subject><subject>Water quality</subject><subject>Water quality management</subject><subject>Water supply</subject><subject>Water supply systems</subject><issn>1614-7499</issn><issn>0944-1344</issn><issn>1614-7499</issn><fulltext>true</fulltext><rsrctype>article</rsrctype><creationdate>2024</creationdate><recordtype>article</recordtype><recordid>eNqFkc1O3TAQRq2qqFDaF-iistQNmxTb4594iRBQJKRuytpyHIdrlNip7VDdtyeXC7Tqol15JJ_5RjMHoU-UfKWEqNNCKQjZEMYbYErTBt6gIyopbxTX-u0f9SF6X8o9IYxopt6hQ2g5b5XUR8id4Zge_IgnXzepx0PKeFrGGpo5jeNSbax4SjHUlEO8wyHiX7b6jMsyz-MWl22pfip4Kbtft_FTcHYNs24ToscPoYQUP6CDwY7Ff3x-j9Ht5cWP82_Nzfer6_Ozm8aB0LVpLZOyJb3rOrDUyYF1vRRuAKc6RToNwDvXW0mdcoMArkUHRLVsXdAOTkk4Rif73Dmnn4sv1UyhOD-ONvq0FANUgAQGgv4XZZoz2grFxIp--Qu9T0uO6yIGCJdaKSLZSrE95XIqJfvBzDlMNm8NJWZny-xtmdWWebJlYG36_By9dJPvX1te9KwA7IEy787v8-_Z_4h9BOhVoGs</recordid><startdate>20240401</startdate><enddate>20240401</enddate><creator>Yan, Jiacong</creator><creator>Lee, Jianchao</creator><creator>Liu, Lu</creator><creator>Duan, Qiannan</creator><creator>Lei, Jingzheng</creator><creator>Fu, Zhizhi</creator><creator>Zhou, Chi</creator><creator>Wu, WeiDong</creator><creator>Wang, Fei</creator><general>Springer Berlin Heidelberg</general><general>Springer Nature B.V</general><scope>NPM</scope><scope>AAYXX</scope><scope>CITATION</scope><scope>7QL</scope><scope>7SN</scope><scope>7T7</scope><scope>7TV</scope><scope>7U7</scope><scope>8FD</scope><scope>C1K</scope><scope>FR3</scope><scope>K9.</scope><scope>M7N</scope><scope>P64</scope><scope>7X8</scope><scope>7S9</scope><scope>L.6</scope></search><sort><creationdate>20240401</creationdate><title>A novel method for multi-pollutant monitoring in water supply systems using chemical machine vision</title><author>Yan, Jiacong ; 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Traditional testing methods are both time-consuming and labor-intensive, lacking the ability to capture abrupt changes in water quality over brief intervals. This paper proposes a direct analysis and rapid detection method of three indicators of arsenic, cadmium, and selenium in complex drinking water systems by combining a novel long-path spectral imager with machine learning models. Our technique can obtain multiple parameters in about 1 s. The experiment involved setting up samples from various drinking water backgrounds and mixed groups, totaling 9360 injections. A raw visible light source ranging from 380 to 780 nm was utilized, uniformly dispersing light into the sample cell through a filter. The residual beam was captured by a high-definition camera, forming a distinctive spectrum. Three deep learning models—ResNet-50, SqueezeNet V1.1, and GoogLeNet Inception V1—were employed. Datasets were divided into training, validation, and test sets in a 6:2:2 ratio, and prediction performance across different datasets was assessed using the coefficient of determination and root mean square error. The experimental results show that a well-trained machine learning model can extract a lot of feature image information and quickly predict multi-dimensional drinking water indicators with almost no preprocessing. The model’s prediction performance is stable under different background drinking water systems. The method is accurate, efficient, and real-time and can be widely used in actual water supply systems. This study can improve the efficiency of water quality monitoring and treatment in water supply systems, and the method’s potential for environmental monitoring, food safety, industrial testing, and other fields can be further explored in the future.</abstract><cop>Berlin/Heidelberg</cop><pub>Springer Berlin Heidelberg</pub><pmid>38448769</pmid><doi>10.1007/s11356-024-32791-3</doi><tpages>12</tpages></addata></record> |
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subjects | Aquatic Pollution Arsenic Atmospheric Protection/Air Quality Control/Air Pollution Cadmium cameras computer vision Contaminants data collection Datasets Deep learning Drinking water Earth and Environmental Science Ecotoxicology Environment Environmental Chemistry Environmental Health Environmental monitoring Food industry Food safety High definition human health Indicators Learning algorithms light Light sources Machine learning Machine vision Performance prediction Pollution monitoring prediction rapid methods Research Article Selenium Waste Water Technology Water conveyance Water Management Water monitoring Water pollution Water Pollution Control Water quality Water quality management Water supply Water supply systems |
title | A novel method for multi-pollutant monitoring in water supply systems using chemical machine vision |
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