Chen Cheng, Zhang Wuyi, Shan Zhiguo, Zhang Chunhua, Dong Tianwu, Feng Zhouqiang, Wang Chengkang
Faculty of Management and Economics Kunming University of Science and Technology Kunming China.
College of Agriculture and Forestry Pu'er University Pu'er China.
Food Sci Nutr. 2022 Feb 22;10(4):1021-1038. doi: 10.1002/fsn3.2699. eCollection 2022 Apr.
In this study, moisture contents and product quality of Pu-erh tea were predicted with deep learning-based methods. Images were captured continuously in the sun-drying process. Environmental parameters (EP) of air humidity, air temperature, global radiation, wind speed, and ultraviolet radiation were collected with a portable meteorological station. Sensory scores of aroma, flavor, liquor color, residue, and total scores were given by a trained panel. Convolutional neural network (CNN) and gated recurrent unit (GRU) models were constructed based on image information and EP, which were selected in advance using the neighborhood component analysis (NCA) algorithm. The evolved models based on deep-learning methods achieved satisfactory results, with RMSE of 0.4332, 0.2669, 0.7508 (also with of .9997, .9882, .9986, with RPD of 53.5894, 13.1646, 26.3513) for moisture contents prediction in each batch of tea, tea at different sampling periods, the overall samples, respectively; and with RMSE of 0.291, 0.2815, 0.162, 0.1574, 0.3931 (also with of .9688, .9772, .9752, .9741, .8906, with RPD of 5.6073, 6.5912, 6.352, 6.1428, 4.0045) for final quality prediction of aroma, flavor, liquor color, residue, total score, respectively. By analyzing and comparing the RMSE values, the most significant environmental parameters (EP) were selected. The proposed combinations of different EP can also provide a valuable reference in the development of a new sun-drying system.
在本研究中,采用基于深度学习的方法预测普洱茶的水分含量和产品质量。在晒青过程中持续采集图像。使用便携式气象站收集空气湿度、气温、全球辐射、风速和紫外线辐射等环境参数(EP)。由经过培训的专业评审团给出香气、滋味、汤色、叶底的感官评分以及总分。基于图像信息和环境参数构建卷积神经网络(CNN)和门控循环单元(GRU)模型,这些参数预先使用邻域成分分析(NCA)算法进行选择。基于深度学习方法的改进模型取得了令人满意的结果,对于每批茶叶、不同采样时期的茶叶以及总体样本的水分含量预测,RMSE分别为0.4332、0.2669、0.7508( 分别为0.9997、0.9882、0.9986,RPD分别为53.5894、13.1646、26.3513);对于香气、滋味、汤色、叶底、总分的最终质量预测,RMSE分别为0.291、0.2815、0.162、0.1574、0.3931( 分别为0.9688、0.9772、0.9752、0.9741、0.8906,RPD分别为5.6073、6.5912、6.352、6.1428、4.0045)。通过分析和比较RMSE值,选择了最显著的环境参数(EP)。所提出的不同环境参数组合也可为新型晒青系统的开发提供有价值的参考。