发酵
偏最小二乘回归
近红外光谱
过程分析技术
生物系统
分光计
工业与生产工程
工艺工程
乳酸
化学
数学
生物过程
计算机科学
化学工程
工程类
机器学习
食品科学
机械工程
细菌
遗传学
量子力学
生物
物理
作者
Yang Chen,Yaping Li,Meijin Guo,Li Xu,Jinsong Liu,Xiaofeng Liu,Zhongbing Chen,Xiaojun Tian,Haoyue Zheng,Xiwei Tian,Ju Chu,Yingping Zhuang
标识
DOI:10.1186/s40643-021-00452-9
摘要
Abstract The fermentation process is dynamically changing, and the metabolic status can be grasped through real-time monitoring of environmental parameters. In this study, a real-time and on-line monitoring experiment platform for substrates and products detection was developed based on non-contact type near-infrared (NIR) spectroscopy technology. The prediction models for monitoring the fermentation process of lactic acid, sophorolipids (SLs) and sodium gluconate (SG) were established based on partial least-squares regression and internal cross-validation methods. Through fermentation verification, the accuracy and precision of the NIR model for the complex fermentation environments, different rheological properties (uniform system and multi-phase inhomogeneous system) and different parameter types (substrate, product and nutrients) have good applicability, and R 2 was greater than 0.98, exhibiting a good linear relationship. The root mean square error of prediction shows that the model has high credibility. Through the control of appropriate glucose concentration in SG fermentation as well as glucose and oil concentrations SLs fermentation by NIR model, the titers of SG and SLs were increased to 11.8% and 26.8%, respectively. Although high cost of NIR spectrometer is a key issue for its wide application in an industrial scale. This work provides a basis for the application of NIR spectroscopy in complex fermentation systems.
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