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Beer Taste Detection Based on Electronic Tongue

机译:基于电子舌的啤酒味道检测

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We attempted to detect the five tastes in four different commercially available brands of beer using an electronic tongue and conducted a statistical analysis on their alcohol contents, original wort concentrations, and pH values. Statistical methods, including principal component analysis (PCA), linear discriminant analysis (LDA), and a backpropagation (BP) neural network, were used to identify and classify the four beer brands. According to PCA, in the five taste indicators of the four brands of beer, the contribution rates of the first and second principal components were 56.73 and 34.46% respectively; the beer was oxidized to a certain extent with increasing detection time. The results of LDA confirmed the high sensitivity of the electronic tongue sensors to beer tastes as the four brands were effectively identified by distinguishing the taste differences among them. The results of the BP neural network suggested that its predictive accuracy for the five tastes in the four brands can achieve 100% subject to the conformity between the measured and predicted values. The stepwise regression model established in our study could be effective for accurately predicting the original wort concentration of beer. The determination coefficients of the original wort concentration modeling set and the validation set were 0.99 and 0.96, and the root-mean-square errors were 0.06 and 0.41, respectively. As demonstrated by its high sensitivity in analyzing the tastes of four different beer brands, the electronic tongue can effectively distinguish the taste differences among different beers.
机译:我们试图使用电子舌头检测四种不同市售品牌啤酒的五种口味,并对其醇内容物,原始麦芽汁浓度和pH值进行统计分析。统计方法包括主成分分析(PCA),线性判别分析(LDA)和反向化(BP)神经网络,用于识别和分类四个啤酒品牌。根据PCA的说法,在四个品牌啤酒的五个品牌指标中,第一和第二主成分的贡献率分别为56.73和34.46%;随着检测时间的增加,啤酒在一定程度上被氧化。 LDA的结果证实了电子舌传感器对啤酒口味的高灵敏度,因为通过区分味道差异,有效地确定了四个品牌。 BP神经网络的结果表明,其四个品牌中五种品味的预测准确性可以实现100%,以符合测量和预测值之间的符合性。在我们的研究中建立的逐步回归模型可以有效地准确预测啤酒的原始麦芽汁浓度。原始麦芽汁浓度建模集和验证组的确定系数为0.99和0.96,并且根平均方误差分别为0.06和0.41。正如其在分析四种不同啤酒品牌的口味的高度敏感度所示,电子舌可以有效地区分不同啤酒之间的味道差异。

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