Han Fangkai, Zhang Dongjing, Aheto Joshua H, Feng Fan, Duan Tengfei
School of Biological and Food Engineering Suzhou University Anhui China.
School of Food and Biological Engineering Jiangsu University Zhenjiang China.
Food Sci Nutr. 2020 Jun 29;8(8):4330-4339. doi: 10.1002/fsn3.1730. eCollection 2020 Aug.
The purpose of this present study was to develop a rapid and effective approach for identification of red wines that differ in geographical origins, brands, and grape varieties, a multi-sensor fusion technology based on a novel cost-effective electronic nose (E-nose) and a voltammetric electronic tongue (E-tongue) was proposed. The E-nose sensors was created using porphyrins or metalloporphyrins, pH indicators and Nile red printed on a C2 reverse phase silica gel plate. The voltammetric E-Tongue with six metallic working electrodes, namely platinum, gold, palladium, tungsten, titanium, and silver was employed to sense the taste of red wines. Principal component analysis (PCA) was utilized for dimensionality reduction and decorrelation of the raw sensors datasets. The fusion models derived from extreme learning machine (ELM) were built with PCA scores of E-nose and tongue as the inputs. Results showed superior performance (100% recognition rate) using combination of odor and taste sensors than individual artificial systems. The results suggested that fusion of the novel cost-effective E-nose created and voltammetric E-tongue coupled with ELM has a powerful potential in rapid quality evaluation of red wine.
本研究的目的是开发一种快速有效的方法来鉴别不同地理来源、品牌和葡萄品种的红葡萄酒,为此提出了一种基于新型经济高效电子鼻(E-nose)和伏安电子舌(E-tongue)的多传感器融合技术。E-nose传感器是通过将卟啉或金属卟啉、pH指示剂和尼罗红印刷在C2反相硅胶板上制成的。采用具有六个金属工作电极(即铂、金、钯、钨、钛和银)的伏安电子舌来感知红葡萄酒的味道。主成分分析(PCA)用于对原始传感器数据集进行降维和去相关处理。以E-nose和电子舌的PCA得分作为输入,构建了基于极限学习机(ELM)的融合模型。结果表明,与单个的人工系统相比,气味和味道传感器相结合具有更优异的性能(识别率达100%)。结果表明,所研制的新型经济高效E-nose与伏安电子舌相结合并与ELM融合,在红葡萄酒快速质量评估方面具有强大的潜力。