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Neural networks based fluorescence and electrochemistry dual-modal sensor for sensitive and precise detection of cadmium and lead simultaneously. / Wang, Xinyi; Lin, Wencheng; Chen, Changming; Kong, Liubing; Huang, Zhuoru; Kirsanov, Dmitry; Legin, Andrey; Wan, Hao; Wang, Ping.

в: Sensors and Actuators B: Chemical, Том 366, 131922, 01.09.2022.

Результаты исследований: Научные публикации в периодических изданияхстатьяРецензирование

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Author

Wang, Xinyi ; Lin, Wencheng ; Chen, Changming ; Kong, Liubing ; Huang, Zhuoru ; Kirsanov, Dmitry ; Legin, Andrey ; Wan, Hao ; Wang, Ping. / Neural networks based fluorescence and electrochemistry dual-modal sensor for sensitive and precise detection of cadmium and lead simultaneously. в: Sensors and Actuators B: Chemical. 2022 ; Том 366.

BibTeX

@article{eace630913024953990e3c15282b274b,
title = "Neural networks based fluorescence and electrochemistry dual-modal sensor for sensitive and precise detection of cadmium and lead simultaneously",
abstract = "Heavy metals are harmful and it's meaningful to achieve co-detection. In this work, fluorescence (FL) and electrochemistry (EC) dual-modal sensors combined with neural networks are proposed to detect cadmium (Cd2+) and lead (Pb2+) without pretreatment for the first time. Dual-modal sensing eliminates individual limitations of FL and EC and combines their superiority. Quantum dots and sea urchin-like FeOOH are used as sensitive materials, among which FeOOH is used for the first time to detect Pb2+ with high repeatability and sensitivity. Combining with the proposed neural networks, the mean absolute error of Cd2+ and Pb2+ predicted are 0.2176 μg/L and 0.6002 μg/L, respectively, which are far better than traditional analysis methods. The R-Squared between the predicted value and the true value is 0.974 (Cd2+) and 0.999 (Pb2+), respectively, which verifies the feasibility of the designed sensor. This model eliminates the mutual interference between Cd2+ and Pb2+ based on the synergistic effect and can be used for low-level detection in water samples with complex background. In addition, the designed model could combine with other types of sensors to accurately monitor global-local waters. It also provides new ideas for data fusion, which expands the flexibility in environmental protection and health care.",
keywords = "Cd and Pb detection, Data fusion, Dual modal sensor, Fluorescence and electrochemistry, Neural network",
author = "Xinyi Wang and Wencheng Lin and Changming Chen and Liubing Kong and Zhuoru Huang and Dmitry Kirsanov and Andrey Legin and Hao Wan and Ping Wang",
note = "Publisher Copyright: {\textcopyright} 2022",
year = "2022",
month = sep,
day = "1",
doi = "10.1016/j.snb.2022.131922",
language = "English",
volume = "366",
journal = "Sensors and Actuators, B: Chemical",
issn = "0925-4005",
publisher = "Elsevier",

}

RIS

TY - JOUR

T1 - Neural networks based fluorescence and electrochemistry dual-modal sensor for sensitive and precise detection of cadmium and lead simultaneously

AU - Wang, Xinyi

AU - Lin, Wencheng

AU - Chen, Changming

AU - Kong, Liubing

AU - Huang, Zhuoru

AU - Kirsanov, Dmitry

AU - Legin, Andrey

AU - Wan, Hao

AU - Wang, Ping

N1 - Publisher Copyright: © 2022

PY - 2022/9/1

Y1 - 2022/9/1

N2 - Heavy metals are harmful and it's meaningful to achieve co-detection. In this work, fluorescence (FL) and electrochemistry (EC) dual-modal sensors combined with neural networks are proposed to detect cadmium (Cd2+) and lead (Pb2+) without pretreatment for the first time. Dual-modal sensing eliminates individual limitations of FL and EC and combines their superiority. Quantum dots and sea urchin-like FeOOH are used as sensitive materials, among which FeOOH is used for the first time to detect Pb2+ with high repeatability and sensitivity. Combining with the proposed neural networks, the mean absolute error of Cd2+ and Pb2+ predicted are 0.2176 μg/L and 0.6002 μg/L, respectively, which are far better than traditional analysis methods. The R-Squared between the predicted value and the true value is 0.974 (Cd2+) and 0.999 (Pb2+), respectively, which verifies the feasibility of the designed sensor. This model eliminates the mutual interference between Cd2+ and Pb2+ based on the synergistic effect and can be used for low-level detection in water samples with complex background. In addition, the designed model could combine with other types of sensors to accurately monitor global-local waters. It also provides new ideas for data fusion, which expands the flexibility in environmental protection and health care.

AB - Heavy metals are harmful and it's meaningful to achieve co-detection. In this work, fluorescence (FL) and electrochemistry (EC) dual-modal sensors combined with neural networks are proposed to detect cadmium (Cd2+) and lead (Pb2+) without pretreatment for the first time. Dual-modal sensing eliminates individual limitations of FL and EC and combines their superiority. Quantum dots and sea urchin-like FeOOH are used as sensitive materials, among which FeOOH is used for the first time to detect Pb2+ with high repeatability and sensitivity. Combining with the proposed neural networks, the mean absolute error of Cd2+ and Pb2+ predicted are 0.2176 μg/L and 0.6002 μg/L, respectively, which are far better than traditional analysis methods. The R-Squared between the predicted value and the true value is 0.974 (Cd2+) and 0.999 (Pb2+), respectively, which verifies the feasibility of the designed sensor. This model eliminates the mutual interference between Cd2+ and Pb2+ based on the synergistic effect and can be used for low-level detection in water samples with complex background. In addition, the designed model could combine with other types of sensors to accurately monitor global-local waters. It also provides new ideas for data fusion, which expands the flexibility in environmental protection and health care.

KW - Cd and Pb detection

KW - Data fusion

KW - Dual modal sensor

KW - Fluorescence and electrochemistry

KW - Neural network

UR - http://www.scopus.com/inward/record.url?scp=85129248955&partnerID=8YFLogxK

U2 - 10.1016/j.snb.2022.131922

DO - 10.1016/j.snb.2022.131922

M3 - Article

AN - SCOPUS:85129248955

VL - 366

JO - Sensors and Actuators, B: Chemical

JF - Sensors and Actuators, B: Chemical

SN - 0925-4005

M1 - 131922

ER -

ID: 95468947