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Pretreatment of near infrared spectral data in fast biomass analysis

机译:快速生物量分析中的近红外光谱数据预处理

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摘要

The ability to rapidly evaluate the chemical composition of biomass feedstock for purposes of process monitoring and optimisation is useful for gauging the potential applications and value of such feedstocks. Near infrared (NIR) spectroscopy, coupled with multivariate analysis and data pretreatment, was evaluated to remove interference from physical heterogeneity that could mask chemical property responses. Pretreatment methods included standard normal variate (SNV), multiplicative scattering correction (MSC), 1st derivative with the Savitzky-Golay algorithm (1st derivative), 2nd derivative with the Savitzky-Golay algorithm (2nd derivative), extended multiplicative signal correction (EMSC) and combinations of 1st derivative/2nd derivative with SNV. Results indicated that, of these methods, EMSC was most effective for diffuse reflectance NIR analysis of lignocellulosic biomass. The EMSC-pretreated data not only best accessed the chemical similarity of the probed feedstocks in our hierarchical cluster analysis but also consistently led to the overall best prediction of the chemical composition of the biomass.
机译:快速评估生物质原料的化学成分以进行过程监控和优化的能力对于评估此类原料的潜在应用和价值很有用。评估了近红外(NIR)光谱,结合多元分析和数据预处理,以消除可能掩盖化学性质响应的物理异质性干扰。预处理方法包括标准正态变量(SNV),乘法散射校正(MSC),采用Savitzky-Golay算法的一阶导数(一阶导数),采用Savitzky-Golay算法的二阶导数(二阶导数),扩展乘法信号校正(EMSC)一阶导数/二阶导数与SNV的组合。结果表明,在这些方法中,EMSC对木质纤维素生物质的漫反射近红外光谱分析最为有效。经EMSC预处理的数据不仅在我们的层次聚类分析中最好地获得了所探查原料的化学相似性,而且始终如一地得出了对生物质化学成分的整体最佳预测。

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