School of Technology, Beijing Forestry University, No. 35 Tsinghua East Road, Beijing 100083, China.
Bureau of Ecology and Environment of Hanting District, No. 1507 Fenghua Road, Weifang 261100, China.
Sensors (Basel). 2023 Jan 4;23(2):571. doi: 10.3390/s23020571.
Tea polyphenols, amino acids, soluble sugars, and other ingredients in fresh tea leaves are the key parameters of tea quality. In this research, a tea leaf ingredient estimation sensor was developed based on a multi-channel spectral sensor. The experiment showed that the device could effectively acquire 700-1000 nm spectral data of tea tree leaves and could display the ingredients of leaf samples in real time through the visual interactive interface. The spectral data of white tea tree leaves acquired by the detection device were used to build an ingredient content prediction model based on the ridge regression model and random forest algorithm. As a result, the prediction model based on the random forest algorithm with better prediction performance was loaded into the ingredient detection device. Verification experiment showed that the root mean square error (RMSE) and determination coefficient (R) in the prediction were, respectively, as follows: moisture content (1.61 and 0.35), free amino acid content (0.16 and 0.79), tea polyphenol content (1.35 and 0.28), sugar content (0.14 and 0.33), nitrogen content (1.15 and 0.91), and chlorophyll content (0.02 and 0.97). As a result, the device can predict some parameters with high accuracy (nitrogen, chlorophyll, free amino acid) but some of them with lower accuracy (moisture, polyphenol, sugar) based on the R values. The tea leaf ingredient estimation sensor could realize rapid non-destructive detection of key ingredients affecting tea quality, which is conducive to real-time monitoring of the current quality of tea leaves, evaluating the status during tea tree growth, and improving the quality of tea production. The application of this research will be helpful for the automatic management of tea plantations.
茶叶中的茶多酚、氨基酸、可溶性糖等成分是茶叶品质的关键参数。本研究基于多通道光谱传感器,研制了一种茶叶成分估计传感器。实验表明,该装置可以有效地获取茶树叶片的 700-1000nm 光谱数据,并通过可视化交互界面实时显示叶片样本的成分。利用检测装置获取的白茶叶片光谱数据,构建基于岭回归模型和随机森林算法的成分含量预测模型。结果表明,加载基于随机森林算法的预测性能更好的预测模型到成分检测装置中。验证实验表明,预测中的均方根误差(RMSE)和决定系数(R)分别为:水分含量(1.61 和 0.35)、游离氨基酸含量(0.16 和 0.79)、茶多酚含量(1.35 和 0.28)、糖含量(0.14 和 0.33)、氮含量(1.15 和 0.91)和叶绿素含量(0.02 和 0.97)。结果表明,该装置可以基于 R 值,对一些参数(氮、叶绿素、游离氨基酸)进行高精度预测,而对其他参数(水分、多酚、糖)的预测精度较低。该茶叶成分估计传感器可以实现对影响茶叶品质的关键成分的快速无损检测,有利于实时监测当前茶叶的质量,评估茶树生长过程中的状况,提高茶叶生产的质量。本研究的应用将有助于茶园的自动管理。