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新型纳米复合材料修饰电极在鉴别不同品牌米酒中的应用。

Application of novel nanocomposite-modified electrodes for identifying rice wines of different brands.

作者信息

Wei Zhenbo, Yang Yanan, Zhu Luyi, Zhang Weilin, Wang Jun

机构信息

Department of Biosystems Engineering, Zhejiang University 866 Yuhangtang Road Hangzhou 310058 PR China

出版信息

RSC Adv. 2018 Apr 10;8(24):13333-13343. doi: 10.1039/c8ra00164b. eCollection 2018 Apr 9.

Abstract

In this paper, poly(acid chrome blue K) (PACBK)/AuNP/glassy carbon electrode (GCE), polysulfanilic acid (PABSA)/AuNP/GCE and polyglutamic acid (PGA)/CuNP/GCE were self-fabricated for the identification of rice wines of different brands. The physical and chemical characterization of the modified electrodes were obtained using scanning electron microscopy and cyclic voltammetry, respectively. The rice wine samples were detected by the modified electrodes based on multi-frequency large amplitude pulse voltammetry. Chronoamperometry was applied to record the response values, and the feature data correlating with wine brands were extracted from the original responses using the 'area method'. Principal component analysis, locality preserving projections and linear discriminant analysis were applied for the classification of different wines, and all three methods presented similarly good results. Extreme learning machine (ELM), the library for support vector machines (LIB-SVM) and the backpropagation neural network (BPNN) were applied for predicting wine brands, and BPNN worked best for prediction based on the testing dataset ( = 0.9737 and MSE = 0.2673). The fabricated modified electrodes can therefore be applied to identify rice wines of different brands with pattern recognition methods, and the application also showed potential for the detection aspects of food quality analysis.

摘要

本文中,自组装了聚(酸性铬蓝K)(PACBK)/金纳米粒子/玻碳电极(GCE)、聚磺酸(PABSA)/金纳米粒子/GCE和聚谷氨酸(PGA)/铜纳米粒子/GCE用于鉴别不同品牌的米酒。分别使用扫描电子显微镜和循环伏安法对修饰电极进行物理和化学表征。基于多频大幅脉冲伏安法,用修饰电极检测米酒样品。采用计时电流法记录响应值,并使用“面积法”从原始响应中提取与葡萄酒品牌相关的特征数据。应用主成分分析、局部保留投影和线性判别分析对不同葡萄酒进行分类,三种方法均呈现出相似的良好结果。应用极限学习机(ELM)、支持向量机库(LIB - SVM)和反向传播神经网络(BPNN)预测葡萄酒品牌,基于测试数据集,BPNN在预测方面效果最佳(准确率 = 0.9737,均方误差 = 0.2673)。因此,制备的修饰电极可应用于通过模式识别方法鉴别不同品牌的米酒,并且该应用在食品质量分析的检测方面也显示出潜力。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6d6a/9079784/1f5157183815/c8ra00164b-f1.jpg

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