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Real-time monitoring of high-gravity corn mash fermentation using in situ raman spectroscopy

机译:使用原位拉曼光谱技术实时监测高重力玉米发酵

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In situ Raman spectroscopy was employed for real-time monitoring of simultaneous saccharification and fermentation (SSF) of corn mash by an industrial strain of Saccharomyces cerevisiae. An accurate univariate calibration model for ethanol was developed based on the very strong 883cm~(-1) C-C stretching band. Multivariate partial least squares (PLS) calibration models for total starch, dextrins, maltotriose, maltose, glucose, and ethanol were developed using data from eight batch fermentations and validated using predictions for a separate batch. The starch, ethanol, and dextrins models showed significant prediction improvement when the calibration data were divided into separate high- and low-concentration sets. Collinearity between the ethanol and starch models was avoided by excluding regions containing strong ethanol peaks from the starch model and, conversely, excluding regions containing strong saccharide peaks from the ethanol model. The two-set calibration models for starch (R~2=0.998, percent error=2.5%) and ethanol (R~2=0.999, percent error=2.1%) provide more accurate predictions than any previously published spectroscopic models. Glucose, maltose, and maltotriose are modeled to accuracy comparable to previous work on less complex fermentation processes. Our results demonstrate that Raman spectroscopy is capable of real time in situ monitoring of a complex industrial biomass fermentation. To our knowledge, this is the first PLS-based chemometric modeling of corn mash fermentation under typical industrial conditions, and the first Raman-based monitoring of a fermentation process with glucose, oligosaccharides and polysaccharides present.
机译:原位拉曼光谱法用于实时监测啤酒酵母工业菌株对玉米mash的同时糖化和发酵(SSF)。基于非常强的883cm〜(-1)C-C伸缩带,建立了准确的乙醇单变量校正模型。使用来自八批发酵的数据开发了总淀粉,糊精,麦芽三糖,麦芽糖,葡萄糖和乙醇的多元偏最小二乘(PLS)校准模型,并使用单独批次的预测进行了验证。当将校准数据分为单独的高浓度和低浓度组时,淀粉,乙醇和糊精模型显示出显着的预测改进。通过从淀粉模型中排除含有强乙醇峰的区域,以及相反,从乙醇模型中排除含有强糖峰的区域,避免了乙醇和淀粉模型之间的共线性。淀粉(R〜2 = 0.998,误差百分率= 2.5%)和乙醇(R〜2 = 0.999,误差百分率= 2.1%)的两组校正模型提供了比任何以前发布的光谱模型更准确的预测。葡萄糖,麦芽糖和麦芽三糖的建模精确度可与以前在不太复杂的发酵过程中所做的工作相媲美。我们的结果表明,拉曼光谱仪能够对复杂的工业生物质发酵进行实时原位监测。据我们所知,这是在典型的工业条件下玉米发酵的第一个基于PLS的化学计量学模型,并且是存在葡萄糖,低聚糖和多糖的发酵过程的第一个基于拉曼的监测。

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