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首页> 外文期刊>Applied biochemistry and biotechnology, Part A. enzyme engineering and biotechnology >Infrared Spectroscopy as Alternative to Wet Chemical Analysis to Characterize Eucalyptus globulus Pulps and Predict Their Ethanol Yield for a Simultaneous Saccharification and Fermentation Process
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Infrared Spectroscopy as Alternative to Wet Chemical Analysis to Characterize Eucalyptus globulus Pulps and Predict Their Ethanol Yield for a Simultaneous Saccharification and Fermentation Process

机译:红外光谱作为湿化学分析的替代方法,用于表征桉木浆并同时进行糖化和发酵过程,预测其乙醇收率

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摘要

Bioethanol can be obtained from wood by simultaneous enzymatic saccharification and fermentation step (SSF). However, for enzymatic process to be effective, a pretreatment is needed to break the wood structure and to remove lignin to expose the carbohydrates components. Evaluation of these processes requires characterization of the materials generated in the different stages. The traditional analytical methods of wood, pretreated materials (pulps), monosaccharides in the hydrolyzated pulps, and ethanol involve laborious and destructive methodologies. This, together with the high cost of enzymes and the possibility to obtain low ethanol yields from some pulps, makes it suitable to have rapid, nondestructive, less expensive, and quantitative methods to monitoring the processes to obtain ethanol from wood. In this work, infrared spectroscopy (IR) accompanied with multivariate analysis is used to characterize chemically organosolv pretreated Eucalyptus globulus pulps (glucans, lignin, and hemicellulosic sugars), as well as to predict the ethanol yield after a SSF process. Mid (4,000-400 cm(-1)) and near-infrared (12,500-4,000 cm(-1)) spectra of pulps were used in order to obtain calibration models through of partial least squares regression (PLS). The obtained multivariate models were validated by cross validation and by external validation. Mid-infrared (mid-IR)/NIR PLS models to quantify ethanol concentration were also compared with a mathematical approach to predict ethanol yield estimated from the chemical composition of the pulps determined by wet chemical methods (discrete chemical data). Results show the high ability of the infrared spectra in both regions, mid-IR and NIR, to calibrate and predict the ethanol yield and the chemical components of pulps, with low values of standard calibration and validation errors (root mean square error of calibration, root mean square error of validation (RMSEV), and root mean square error of prediction), high correlation between predicted and measured by the reference methods values (R (2) between 0.789 and 0.997), and adequate values of the ratio between the standard deviation of the reference methods and the standard errors of infrared PLS models relative performance determinant (RPD) (greater than 3 for majority of the models). Use of IR for ethanol quantification showed similar and even better results to the obtained with the discrete chemical data, especially in the case of mid-IR models, where ethanol concentration can be estimated with a RMSEV equal to 1.9 g L-1. These results could facilitate the analysis of high number of samples required in the evaluation and optimization of the processes.
机译:生物乙醇可通过同时进行的酶促糖化和发酵步骤(SSF)从木材中获得。然而,为了使酶促工艺有效,需要进行预处理以破坏木材结构并去除木质素以暴露碳水化合物成分。对这些过程的评估需要表征在不同阶段产生的材料。木材,预处理材料(纸浆),水解纸浆中的单糖和乙醇的传统分析方法涉及费力和破坏性的方法。这与酶的高成本以及从某些纸浆中获得低乙醇产量的可能性一起,使其适于具有快速,无损,便宜和定量的方法来监测从木材中获得乙醇的过程​​。在这项工作中,红外光谱(IR)与多变量分析一起用于表征化学处理过的有机溶剂预处理的桉树球果浆(葡聚糖,木质素和半纤维素糖),以及预测SSF工艺后的乙醇收率。纸浆的中光谱(4,000-400 cm(-1))和近红外光谱(12,500-4,000 cm(-1))用于通过偏最小二乘回归(PLS)获得校准模型。通过交叉验证和外部验证对获得的多元模型进行验证。还将用于量化乙醇浓度的中红外(mid-IR)/ NIR PLS模型与一种数学方法进行了比较,该数学方法根据通过湿化学方法(离散化学数据)确定的纸浆化学组成来预测乙醇收率。结果表明,中红外和近红外两个区域的红外光谱都具有很高的校准和预测纸浆的乙醇收率和化学成分的能力,而标准校准和验证误差(校准的均方根误差,验证的均方根误差(RMSEV)和预测的均方根误差),参考方法的预测值和测量值之间的高度相关性(R(2)在0.789和0.997之间)以及标准之间的比率的适当值参考方法的偏差和红外PLS模型的标准误差相对性能决定因素(RPD)(大多数模型大于3)。使用IR进行乙醇定量显示与通过离散化学数据获得的结果相似甚至更好的结果,尤其是在中红外模型中,其中RMSEV等于1.9 g L-1可以估算出乙醇浓度。这些结果可能有助于分析过程评估和优化中所需的大量样品。

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