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首页> 外文期刊>Analytical Letters >Rapid Determination of Holocellulose and Lignin in Wood by Near Infrared Spectroscopy and Kernel Extreme Learning Machine
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Rapid Determination of Holocellulose and Lignin in Wood by Near Infrared Spectroscopy and Kernel Extreme Learning Machine

机译:近红外光谱和内核极端学习机的木材中全纤维素和木质素的快速测定

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To improve the production efficiency in the pulp and paper industry, the chemical composition of pulp wood species has to be measured in real-time, especially the holocellulose and acid insoluble lignin contents. Near infrared (NIR) spectroscopy, as a promising rapid and on-line technology, is an attractive and promising tool to determine holocellulose and lignin contents in pulp wood. Due to the high complexity and nonlinearity of the spectra of pulp wood, it is significant to select suitable chemometric methods. In this study, in order to eliminate noise and irrelevant information of the original spectra collected by a portable spectrometer, four methods were used to preprocess the original spectra, including the first derivative, moving average filtering, multiplicative scatter correction and standard normal variate transformation. Next a comparison was conducted using four modeling approaches, including partial least squares (PLS) regression, least square support vector machine (LSSVM), backpropagation neural network (BPNN), and kernel extreme learning machine (KELM). The last three approaches were calibrated using spectral features that reduced the dimensions by principal component analysis (PCA). Furthermore, regularization parameter and kernel function parameter of LSSVM and KELM were optimized by a particle swarm optimization (PSO) algorithm. The results indicated that multiplicative scatter correction efficiently eliminated the spectral noise and irrelative information, and that KELM displayed the best prediction performance compared to the other approaches. Therefore, an inexpensive and portable NIR spectrometer has been employed to accurately and efficiently determine the chemical composition of pulp wood when combined with multiplicative scatter correction and the KELM method.
机译:为了提高纸浆和造纸工业的生产效率,必须实时测量纸浆木材物种的化学成分,特别是全纤维素和酸不溶性木质素含量。近红外线(NIR)光谱,作为有前途的快速和在线技术,是一种有吸引力和有希望的工具,用于确定纸浆木材中的全纤维素和木质素含量。由于纸浆木材光谱的高复杂性和非线性,因此选择合适的化学计量方法是显着的。在本研究中,为了消除由便携式光谱仪收集的原始光谱的噪声和无关信息,使用四种方法来预处理原始光谱,包括第一衍生,移动平均滤波,乘法散射校正和标准正常变换。接下来,使用四种建模方法进行比较,包括偏最小二乘(PLS)回归,最小二乘支持向量机(LSSVM),反向传播神经网络(BPNN)和内核极端学习机(KELM)。使用主成分分析(PCA)降低尺寸的光谱特征来校准最后三种方法。此外,通过粒子群优化(PSO)算法优化LSSVM和KELM的正则化参数和内核功能参数。结果表明,乘法散射校正有效地消除了频谱噪声和抗烈信息,并且与其他方法相比,KELM显示了最佳预测性能。因此,在与乘法散射校正和kelm方法结合时,已经采用了廉价和便携式的NIR光谱仪以准确和有效地确定纸浆木材的化学成分。

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