| Literature DB >> 30263613 |
Chunwang Dong1,2, Hongkai Zhu2, Jinjin Wang2, Haibo Yuan2, Jiewen Zhao1, Quansheng Chen1.
Abstract
Catechin content, the ratio of tea polyphenols and free amino acids (TP/FAA), as well as the ratio of theaflavins and thearubigins (TFs/TRs) are important biochemical indicators to evaluate fermentation quality. To achieve rapid determination of such biochemical indicators, synergy interval partial least square and extreme learning machine combined with an adaptive boosting algorithm, Si-ELM-AdaBoost algorithm, were used to establish quantitative analysis models between near infrared spectroscopy (NIRS) and catechin content and between TFs/TRs and TP/FAA, respectively. The results showed that prediction performance of the Si-ELM-AdaBoost mixed algorithm is superior than that of other models. The prediction results with root-mean-square error of prediction ranged from 0.006 to 0.563, the ratio performance deviation values exceeded 2.5, and predictive correlation coefficient values exceeded 0.9 in the prediction model of each biochemical indicator. NIRS combined with Si-ELM-AdaBoost mixed algorithm could be utilized for online monitoring of black tea fermentation. Meanwhile, the AdaBoost algorithm effectively improved the accuracy of the ELM model and could better approach the nonlinear continuous function.Entities:
Keywords: Black tea; Fermentation; Near infrared spectroscopy; Nonlinear tools
Year: 2017 PMID: 30263613 PMCID: PMC6049557 DOI: 10.1007/s10068-017-0119-x
Source DB: PubMed Journal: Food Sci Biotechnol ISSN: 1226-7708 Impact factor: 2.391