Machine Learning Assisted Metal Oxide-Bismuth Oxy Halide Nanocomposite for Electrochemical Sensing of Heavy Metals in Aqueous Media

IF 1.5 4区 材料科学 Q3 Chemistry Crystal Research and Technology Pub Date : 2024-01-18 DOI:10.1002/crat.202300173
Vijayalakshmi Kailasam, Radha Sankararajan, Muthumeenakshi Kailasam, Sreeja Balakrishnapillai Suseela
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Abstract

Heavy metal in excess quantity is one of the major inorganic pollutants in water. It causes several hazards to human life and ecosystem. It exists in traces in most of the commonly available drinking water sources from lakes, ponds, wells, etc., However, their presence in treated water is relatively significant. As the treated water is primarily used for agricultural purposes, it is necessary to monitor and measure their concentration. This requires sensing of metals in aqueous medium with good sensitivity and stability. Recently, nanosensors coupled with electrochemical transducer is preferred for analyzing heavy metal in aqueous solutions. In this work, Silver oxide-bismuth oxy bromide coated with nafion is proposed as an electrochemical sensor for detection of heavy metal ions in aqueous solution. Cyclic voltammetry (CV) behavior of the proposed electrode is observed in different electrolytes. Further, Differential Pulse Voltammetry (DPV) study shows that current increases with trace nickel and copper metal ions of different concentration. Further, machine learning (ML) algorithms such as Naïve Bayes, ANN, SVM and decision trees are employed for nickel ions to train the cyclic voltammetry data and evaluate its performance. Naïve Bayes algorithm provides the best accuracy of 93.2% among all the models.

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用于水介质重金属电化学传感的机器学习辅助金属氧化物-卤化铋纳米复合材料
过量的重金属是水中的主要无机污染物之一。它对人类生活和生态系统造成多种危害。在湖泊、池塘、水井等大多数常见的饮用水源中都存在微量重金属,但在经过处理的水中则相对较多。由于处理过的水主要用于农业目的,因此有必要对其浓度进行监测和测量。这就需要对水介质中的金属进行灵敏度高、稳定性好的传感。最近,纳米传感器与电化学传感器相结合,成为分析水溶液中重金属的首选。在这项研究中,提出了一种镀有 nafion 的氧化银-溴化铋氧电化学传感器,用于检测水溶液中的重金属离子。在不同的电解质中观察了所提出电极的循环伏安(CV)行为。此外,差分脉冲伏安法(DPV)研究表明,不同浓度的痕量镍和铜金属离子会增加电流。此外,还针对镍离子采用了机器学习(ML)算法,如奈夫贝叶斯、ANN、SVM 和决策树,以训练循环伏安数据并评估其性能。在所有模型中,Naïve Bayes 算法的准确率最高,达到 93.2%。
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来源期刊
CiteScore
2.50
自引率
6.70%
发文量
121
审稿时长
1.9 months
期刊介绍: The journal Crystal Research and Technology is a pure online Journal (since 2012). Crystal Research and Technology is an international journal examining all aspects of research within experimental, industrial, and theoretical crystallography. The journal covers the relevant aspects of -crystal growth techniques and phenomena (including bulk growth, thin films) -modern crystalline materials (e.g. smart materials, nanocrystals, quasicrystals, liquid crystals) -industrial crystallisation -application of crystals in materials science, electronics, data storage, and optics -experimental, simulation and theoretical studies of the structural properties of crystals -crystallographic computing
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Issue Information: Crystal Research and Technology 11'2024 Research on the Heterogeneous Deformation Behavior of Nickel Base Alloy Based on CPFEM Ca(Mo,W)O4 Solid Solutions Formation in CaMoO4-CaWO4 System Growth of YAG:Nd laser crystals by Horizontal Directional Crystallization in Protective Carbon-Containing Atmosphere Preparation and Photophysical Properties of Znq2 Metallic Nanomaterials
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