首页> 外文期刊>Journal of Applied Spectroscopy >Data Pre-Processing Method to Remove Interference of Gas Bubbles and Cell Clusters During Anaerobic and Aerobic Yeast Fermentations in a Stirred Tank Bioreactor
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Data Pre-Processing Method to Remove Interference of Gas Bubbles and Cell Clusters During Anaerobic and Aerobic Yeast Fermentations in a Stirred Tank Bioreactor

机译:数据预处理方法,消除搅拌罐生物反应器中厌氧和好氧酵母发酵过程中气泡和细胞团的干扰

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One aerobic and four anaerobic batch fermentations of the yeast Saccharomyces cerevisiae were conducted in a stirred bioreactor and monitored inline by NIR spectroscopy and a transflectance dip probe. From the acquired NIR spectra, chemometric partial least squares regression (PLSR) models for predicting biomass, glucose and ethanol were constructed. The spectra were directly measured in the fermentation broth and successfully inspected for adulteration using our novel data pre-processing method. These adulterations manifested as strong fluctuations in the shape and offset of the absorption spectra. They resulted from cells, cell clusters, or gas bubbles intercepting the optical path of the dip probe. In the proposed data pre-processing method, adulterated signals are removed by passing the time-scanned non-averaged spectra through two filter algorithms with a 5% quantile cutoff. The filtered spectra containing meaningful data are then averaged. A second step checks whether the whole time scan is analyzable. If true, the average is calculated and used to prepare the PLSR models. This new method distinctly improved the prediction results. To dissociate possible correlations between analyte concentrations, such as glucose and ethanol, the feeding analytes were alternately supplied at different concentrations (spiking) at the end of the four anaerobic fermentations. This procedure yielded low-error (anaerobic) PLSR models for predicting analyte concentrations of 0.31 g/l for biomass, 3.41 g/l for glucose, and 2.17 g/l for ethanol. The maximum concentrations were 14 g/l biomass, 167 g/l glucose, and 80 g/l ethanol. Data from the aerobic fermentation, carried out under high agitation and high aeration, were incorporated to realize combined PLSR models, which have not been previously reported to our knowledge.
机译:在搅拌的生物反应器中进行了酿酒酵母的一次需氧分批发酵和四个厌氧分批发酵,并通过近红外光谱法和透反射浸入探针在线监测。从获得的NIR光谱中,构建了预测生物量,葡萄糖和乙醇的化学计量偏最小二乘回归(PLSR)模型。光谱直接在发酵液中测量,并使用我们新颖的数据预处理方法成功检查了掺假。这些掺假表现为吸收光谱的形状和偏移的强烈波动。它们是由细胞,细胞簇或气泡拦截DIP探针的光路造成的。在所提出的数据预处理方法中,通过将时间扫描的非平均频谱通过两个具有5%位数截止值的滤波器算法来去除掺假信号。然后将包含有意义数据的过滤后光谱进行平均。第二步检查整个时间扫描是否可分析。如果为true,则计算平均值并用于准备PLSR模型。这种新方法明显改善了预测结果。为了解离分析物浓度(例如葡萄糖和乙醇)之间可能的相关性,在四个厌氧发酵结束时,交替提供不同浓度(加标)的进料分析物。此程序产生的低误差(厌氧)PLSR模型用于预测生物质的分析物浓度为0.31 g / l,葡萄糖为3.41 g / l和乙醇为2.17 g / l。最大浓度为14 g / l生物量,167 g / l葡萄糖和80 g / l乙醇。在高搅拌和高曝气条件下进行的需氧发酵数据被整合到PLSR组合模型中,这是我们以前所没有见过的。

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