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首页> 外文期刊>Bioresource Technology: Biomass, Bioenergy, Biowastes, Conversion Technologies, Biotransformations, Production Technologies >Fast classification and compositional analysis of cornstover fractions using Fourier transform near-infrared techniques
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Fast classification and compositional analysis of cornstover fractions using Fourier transform near-infrared techniques

机译:使用傅里叶变换近红外技术对玉米秸秆馏分进行快速分类和组成分析

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摘要

The objectives of this research were to determine the variation of chemical composition across botanical fractions of cornstover, and to probe the potential of Fourier transform near-infrared (FT-NIR) techniques in qualitatively classifying separated cornstover fractions and in quantitatively analyzing chemical compositions of cornstover by developing calibration models to predict chemical compositions of cornstover based on FT-NIR spectra. Large variations of cornstover chemical composition for wide calibration ranges, which is required by a reliable calibration model, were achieved by manually separating the cornstover samples into six botanical fractions, and their chemical compositions were determined by conventional wet chemical analyses, which proved that chemical composition varies significantly among different botanical fractions of cornstover. Different botanic fractions, having total saccharide content in descending order, are husk, sheath, pith, rind, leaf, and node. Based on FT-NIR spectra acquired on the biomass, classification by Soft Independent Modeling of Class Analogy (SIMCA) was employed to conduct qualitative classification of cornstover fractions, and partial least square (PLS) regression was used for quantitative chemical composition analysis. SIMCA was successfully demonstrated in classifying botanical fractions of cornstover. The developed PLS model yielded root mean square error of prediction (RMSEP %w/w) of 0.92, 1.03, 0.17, 0.27, 0.21, 1.12, and 0.57 for glucan, xylan, galactan, arabinan, mannan, lignin, and ash, respectively. The results showed the potential of FT-NIR techniques in combination with multivariate analysis to be utilized by biomass feedstock suppliers, bioethanol manufacturers, and bio-power producers in order to better manage bioenergy feedstocks and enhance bioconversion. (C) 2007 Elsevier Ltd. All rights reserved.
机译:这项研究的目的是确定玉米秸秆植物成分之间化学成分的变化,并探讨傅立叶变换近红外(FT-NIR)技术在定性分类分离玉米秸秆成分和定量分析玉米秸秆化学成分方面的潜力通过开发校准模型来基于FT-NIR光谱预测玉米秸秆的化学成分。通过将玉米秸秆样品手动分成六个植物级分,可以实现可靠校准模型所需的玉米秸秆化学成分在较大校准范围内的较大变化,并通过常规湿化学分析确定了其化学成分,这证明了化学成分玉米秸的不同植物级分之间差异很大。总糖含量降序排列的不同植物级分是果壳,鞘,髓,果皮,叶和节。基于生物质获得的FT-NIR光谱,采用类比软独立建模(SIMCA)进行玉米秸秆馏分的定性分类,并将偏最小二乘(PLS)回归用于化学成分定量分析。 SIMCA已成功地证明了玉米秸的植物成分分类。所开发的PLS模型对葡聚糖,木聚糖,半乳聚糖,阿拉伯聚糖,甘露聚糖,木质素和灰分的预测均方根误差(RMSEP%w / w)分别为0.92、1.03、0.17、0.27、0.21、1.12和0.57。 。结果表明,FT-NIR技术与多变量分析相结合的潜力可被生物质原料供应商,生物乙醇生产商和生物能源生产商利用,以更好地管理生物能源原料并增强生物转化。 (C)2007 Elsevier Ltd.保留所有权利。

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