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Multivariate classification of pulp NIR spectra for end-product properties using discrete wavelet transform with orthogonal signal correction

机译:使用离散小波变换和正交信号校正对纸浆NIR光谱进行最终产品特性的多元分类

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摘要

Natural material variations uncorrelated with physical properties of fibre networks hinder the development of robust calibration models by which to predict paper properties from on-line near-infrared (NIR) spectra of production pulps. Such a simple process gauge of product quality would offer attractive advantages for optimized manufacturing. The present work explores the effectiveness of data processing strategies designed to remove uncorrelated variance from calibration models linking NIR spectra with standard measures of paper quality, including tensile, tear, burst index, wet and dry zero span length, freeness, absorption and scattering coefficients. Post-processing of spectra by discrete wavelet transform (DWT) is shown to suppress the baseline and high-frequency noise, and orthogonal signal correction (OSC) substantially improves prediction accuracy by reducing the amplitude of uncorrelated (orthogonal) variations. We find that combined pretreatment by DWT and OSC yields a spectral dataset that exhibits the best prediction accuracy.
机译:与纤维网络的物理特性不相关的自然材料变化阻碍了稳健的校准模型的发展,通过该模型可以根据生产纸浆的在线近红外(NIR)光谱预测纸张性能。这样简单的产品质量过程规将为优化制造提供诱人的优势。本工作探索了旨在从校准模型中消除不相关方差的数据处理策略的有效性,该校准模型将NIR光谱与纸张质量的标准度量(包括拉伸,撕裂,爆裂指数,湿和干零跨距长度,游离度,吸收和散射系数)联系在一起。通过离散小波变换(DWT)对频谱进行后处理可抑制基线和高频噪声,而正交信号校正(OSC)可通过减小不相关(正交)变化的幅度来显着提高预测精度。我们发现,通过DWT和OSC进行的组合预处理产生的光谱数据集显示出最佳的预测精度。

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