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利用非线性红外技术和化学计量学监测酵母发酵——了解过程相关性和间接预测。

Monitoring yeast fermentations by nonlinear infrared technology and chemometrics-understanding process correlations and indirect predictions.

机构信息

Department of Chemical and Biochemical Engineering, Process and Systems Engineering Center (PROSYS), Technical University of Denmark, Søltofts Plads, Building 228 A, 2800, Kgs. Lyngby, Denmark.

Department of Food Science, Ingredient and Dairy Technology, University of Copenhagen, Rolighedsvej 26, 1958, Frederiksberg C, Denmark.

出版信息

Appl Microbiol Biotechnol. 2020 Jun;104(12):5315-5335. doi: 10.1007/s00253-020-10604-0. Epub 2020 Apr 24.

Abstract

Fermentation processes are still compromised by a lack of monitoring strategies providing integrated process data online, ensuring process understanding, control, and thus, optimal reactor efficiency. The crucial demand for online monitoring strategies, not only encouraged by the PAT initiative but also motivated by modern paradigms such as circular economy and sustainability, has driven research and industry to provide "next-generation process technology": in other words, technology tailored toward industrial needs. Mid-infrared (MIR) spectroscopy as such is superior to near-infrared (NIR) spectroscopy since it provides significantly enhanced selectivity. However, due to high costs and a lack of instrumental robustness, MIR spectroscopy is outcompeted by NIR when it comes to industrial application. The lack of chemometric expertise, model understanding, and practical guidance might add to the slow acceptance of industrial MIR application. This work demonstrates the use of novel MIR, so-called non-linear infrared (NLIR) technology and the importance of model understanding, exemplarily investigated on a lab-scale yeast fermentation process. The six analytes glucose, ethanol, glycerol, acetate, ammonium, and phosphate were modeled by partial least squares (PLS) based on spectral data, demonstrating the potential of the novel technology facilitating online data acquisition and the necessity of investigating indirect predictions. KEY POINTS: • NLIR spectra were acquired online during a yeast fermentation process • PLS models were constructed for six components based on uncorrelated samples • Glucose, ethanol, ammonium, and phosphates were modeled with errors of less than 15% • Acetate and glycerol were shown to rely on indirect predictions.

摘要

发酵过程仍然受到缺乏在线监测策略的限制,这些策略无法提供综合的过程数据,从而无法确保过程的理解、控制,以及因此无法实现最佳的反应器效率。对在线监测策略的关键需求,不仅受到 PAT 倡议的鼓励,而且还受到循环经济和可持续性等现代范式的推动,促使研究和工业界提供“下一代过程技术”:换句话说,就是针对工业需求定制的技术。中红外(MIR)光谱在选择性方面优于近红外(NIR)光谱,因此具有优势。然而,由于成本高和仪器稳定性不足,MIR 光谱在工业应用方面竞争不过 NIR。缺乏化学计量学专业知识、模型理解和实际指导可能也是工业 MIR 应用接受缓慢的原因之一。这项工作展示了新型 MIR(所谓的非线性红外(NLIR)技术)的应用,以及模型理解的重要性,通过对实验室规模的酵母发酵过程进行示例研究,说明了这一点。通过偏最小二乘(PLS)基于光谱数据对葡萄糖、乙醇、甘油、乙酸盐、铵和磷酸盐这六种分析物进行建模,证明了新型技术具有促进在线数据采集的潜力,并且需要研究间接预测。要点:

  • 在酵母发酵过程中在线采集 NLIR 光谱

  • 基于不相关的样本构建了用于六种成分的 PLS 模型

  • 对葡萄糖、乙醇、铵和磷酸盐进行建模,误差小于 15%

  • 显示乙酸盐和甘油依赖于间接预测。

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