4.7 Article

Detection of multiple metal ions in water with a fluorescence sensor based on carbon quantum dots assisted by stepwise prediction and machine learning

Journal

ENVIRONMENTAL CHEMISTRY LETTERS
Volume 20, Issue 6, Pages 3415-3420

Publisher

SPRINGER HEIDELBERG
DOI: 10.1007/s10311-022-01475-0

Keywords

Carbon quantum dots; Fluorescence sensor array; Metal ions; Stepwise prediction

Funding

  1. Xinjiang Uygur Autonomous Region Natural Science Foundation of China [2019D01C068]
  2. Xinjiang Uygur Autonomous Region Key Research and Development Projects [2017B03017-5, 2017B03017-3]

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This study presents a fluorescence sensor array based on carbon quantum dots for detecting heavy metal ions in environmental samples. The sensor array demonstrates high accuracy in detecting multiple metal ions, and the SX-model helps improve the performance through machine learning. The method shows great potential for environmental monitoring of heavy metal pollution.
Pollution by heavy metals is threatening the environment and human health, yet there is a lack of a rapid methods to detect multiple metal ions. Here, we built a fluorescence sensor array based on carbon quantum dots to detect Cr6+, Fe3+, Fe2+, and Hg2+ in environmental samples. We added xylenol orange as the receptor to construct the sensor array under pH regulation. We also designed a SX-model by combining stepwise prediction and machine learning to assist the fluorescence sensor array in detecting single and mixed heavy metal ions in deionized water and real samples. Results show that the sensor array detects four heavy metal ions within a concentration range of 1-50 mu M with an accuracy of 95%, and the sensor identifies binary mixed samples with an accuracy of 95%. In addition, metal ions occurring in 144 lake water samples were discriminated with 100% accuracy. Overall, the SX-model-assisted fluorescence sensor array is an efficient method for detecting heavy metal ions in environmental samples.

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