School of Mechanical and Electrical Engineering, Henan Agricultural University, Zhengzhou, Henan, China.
PLoS One. 2018 Dec 31;13(12):e0206517. doi: 10.1371/journal.pone.0206517. eCollection 2018.
An electronic nose was used to evaluate the bitterness and astringency of green tea, and the possible application of the sensor was assessed for the evaluation of different tasting green tea samples. Three different grades of green tea were measured with the electronic nose and electronic tongue. The sensor array of the E-nose was optimized by correlation analysis. The relationship between the signal of the optimized sensor array and the bitterness and astringency of green tea was developed using multiple linear regression (MLR), partial least squares regression (PLSR), and back propagation neural network (BPNN). BPNN is a multilayer feedforward neural network trained by an error propagation algorithm. The results showed that the BPNN model possessed good ability to predict the bitterness and astringency of green tea, with high correlation coefficients (R = 0.98 for bitterness and R = 0.96 for astringency) and relatively lower root mean square errors (RMSE) (0.25 for bitterness and 0.32 for astringency) for the calibration set. The R value is 0.92 and 0.87, and the RMSE is 0.34 and 0.55, for bitterness and astringency, respectively, of the prediction set. These results indicate that the electronic nose could be used as a feasible and reliable method to evaluate the taste of green tea. These results can provide a theoretical reference for rapid detection of the bitter and astringent taste of green tea using volatile odor information.
电子鼻用于评估绿茶的苦味和涩味,并评估传感器在评估不同口感的绿茶样品中的可能应用。使用电子鼻和电子舌测量了三种不同等级的绿茶。通过相关分析对电子鼻的传感器阵列进行了优化。使用多元线性回归(MLR)、偏最小二乘回归(PLSR)和反向传播神经网络(BPNN)建立了优化后的传感器阵列信号与绿茶苦味和涩味之间的关系。BPNN 是一种通过误差传播算法训练的多层前馈神经网络。结果表明,BPNN 模型具有良好的预测绿茶苦味和涩味的能力,其校准集的相关系数(苦味为 0.98,涩味为 0.96)较高,均方根误差(RMSE)较低(苦味为 0.25,涩味为 0.32)。预测集的 R 值分别为 0.92 和 0.87,RMSE 分别为 0.34 和 0.55。这些结果表明,电子鼻可作为评估绿茶口感的一种可行且可靠的方法。这些结果可为利用挥发性气味信息快速检测绿茶的苦、涩味提供理论参考。