农业工程学报
農業工程學報
농업공정학보
2013年
11期
255-260
,共6页
宁井铭%宛晓春%张正竹%毛小文%曾新生
寧井銘%宛曉春%張正竹%毛小文%曾新生
저정명%완효춘%장정죽%모소문%증신생
近红外光谱%神经网络%发酵%品质控制%普洱茶
近紅外光譜%神經網絡%髮酵%品質控製%普洱茶
근홍외광보%신경망락%발효%품질공제%보이다
near infrared spectroscopy%neural networks%fermentation%quality control%Pu’er tea
为了实现对普洱茶发酵程度快速判别,该研究提出了利用近红外光谱结合人工神经网络的方法.普洱茶是中国特有的茶类,发酵是普洱熟茶品质形成的关键工序,目前对于发酵程度的评价主要依赖感官审评,缺乏客观的量化依据.试验以轻度发酵、适度发酵和过度发酵3个不同发酵程度的普洱茶为研究材料.首先对采集得到的原始光谱进行标准归一化(SNV)预处理,利用人工神经网络(ANN)模式识别方法构建普洱茶发酵程度鉴别模型,在模型建立过程中,通过交互验证的方法对模型的最佳主成分因子数(PCs)进行优化.当主成分因子数为9时,ANN模型所得到的结果最佳,模型交互验证识别率和预测识别率分别为98.9%和97.8%.研究结果表明,近红外光谱技术结合模式识别能够实现对普洱茶发酵质量的快速判别,评判结果具有较高的准确性,优于感官审评.
為瞭實現對普洱茶髮酵程度快速判彆,該研究提齣瞭利用近紅外光譜結閤人工神經網絡的方法.普洱茶是中國特有的茶類,髮酵是普洱熟茶品質形成的關鍵工序,目前對于髮酵程度的評價主要依賴感官審評,缺乏客觀的量化依據.試驗以輕度髮酵、適度髮酵和過度髮酵3箇不同髮酵程度的普洱茶為研究材料.首先對採集得到的原始光譜進行標準歸一化(SNV)預處理,利用人工神經網絡(ANN)模式識彆方法構建普洱茶髮酵程度鑒彆模型,在模型建立過程中,通過交互驗證的方法對模型的最佳主成分因子數(PCs)進行優化.噹主成分因子數為9時,ANN模型所得到的結果最佳,模型交互驗證識彆率和預測識彆率分彆為98.9%和97.8%.研究結果錶明,近紅外光譜技術結閤模式識彆能夠實現對普洱茶髮酵質量的快速判彆,評判結果具有較高的準確性,優于感官審評.
위료실현대보이다발효정도쾌속판별,해연구제출료이용근홍외광보결합인공신경망락적방법.보이다시중국특유적다류,발효시보이숙다품질형성적관건공서,목전대우발효정도적평개주요의뢰감관심평,결핍객관적양화의거.시험이경도발효、괄도발효화과도발효3개불동발효정도적보이다위연구재료.수선대채집득도적원시광보진행표준귀일화(SNV)예처리,이용인공신경망락(ANN)모식식별방법구건보이다발효정도감별모형,재모형건립과정중,통과교호험증적방법대모형적최가주성분인자수(PCs)진행우화.당주성분인자수위9시,ANN모형소득도적결과최가,모형교호험증식별솔화예측식별솔분별위98.9%화97.8%.연구결과표명,근홍외광보기술결합모식식별능구실현대보이다발효질량적쾌속판별,평판결과구유교고적준학성,우우감관심평.
@@@@In order to get a rapid estimation on the fermentation degree of Pu’er tea in processing, the method of Near Infrared (NIR) spectroscopy combined with Artificial Neural Network (ANN) was first established in this study. Pu’er tea is a special tea that was processed in China only, and was favored by consumers at home and abroad with its bacteriostatic effect and its removal of grease, detoxification and other effects. Fermentation is the most critical process. The degree which is good or bad of fermentation affects the last quality of Pu’er tea directly. Fermentation is high, the beverage color may be red brown, and taste is weak. If fermentation is light, the taste is bitter and astringent, with brown leaves rather than green. Fermentation moderately can form the Pu’er ripe tea character, which is brown and red, thick in shape, and with a bright red color and mellow taste. Now, the quality of Pu’er tea on fermentation control is more dependent on sensory discrimination, there is a lack of an objective quantitative basis, which affects the stable quality of Pu’er tea. Use of different technical personnel to grasp the standard difference is very common. Because of the lack of stability of the sensory discrimination method, it is the key technical problem as to how to judge the fast and accurate fermentation degree of Pu’er tea, which affects standardization of production. @@@@Near infrared spectral analysis technology combined with a pattern recognition method has been used for the identification of the quality in wine, food, fruits, vegetables, Chinese chestnuts etc. Components analysis of tea and agricultural products has been received successfully. @@@@In this experiment, three different fermentation degrees of Pu’er tea, mild fermentation, moderate fermentation, and excessive fermentation respectively, were used as experimental targets. The original spectra data collected from the samples were firstly preprocessed by the Standard Normal Variate (SNV) method, in order to reduce the influence of the different particles of tea to the spectroscopy. The identification model for the Pu’er tea fermentation degree was constructed by the Artificial Neural Network recognition mode. In the process of model establishment, the best number of principal component factors (PCs) was optimized by a cross-validation method. The experimental results indicated that the optimum result could be obtained by an Artificial Neural Network model when the principal component factors were 9. Together, the relative discrimination rates of the Artificial Neural Network model were 98.9% and 97.8% in the training and prediction sets, respectively. The overall results proved that it was feasible to estimate Pu’er tea fermentation quality by Near Infrared spectroscopy combined with an Artificial Neural Network. The estimation results have higher veracity, and the correct rate of this estimation model was better than the sensor evaluation.