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A model combining spectrum standardization and dominant factor based partial least square method for carbon analysis in coal using laser-induced breakdown spectroscopy

机译:光谱标准化和基于主导因素的偏最小二乘相结合的煤中碳的激光诱导击穿光谱模型

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摘要

Quantitative measurement of carbon content in coal is essentially important for coal property analysis. However, quantitative measurement of carbon content in coal using laser-induced breakdown spectroscopy (LIBS) suffered from low measurement accuracy due to measurement uncertainty as well as the matrix effects. In this study, our previously proposed spectrum standardization method and dominant factor based partial least square (PLS) method were combined to improve the measurement accuracy of carbon content in coal using LIBS. The combination model utilized the spectrum standardization method to accurately calculate dominant carbon concentration as the dominant factor, and then applied PLS with full spectrum information to correct residual errors. The combination model was applied to measure the carbon content in 24 bituminous coal samples. Results demonstrated that the combination model can further improve measurement accuracy compared with the spectrum standardization model and the dominant factor based PLS model, in which the dominant factor was calculated using traditional univariate method. The coefficient of determination, root-mean-square error of prediction, and average relative error for the combination model were 0.99, 1.63%, and 1.82%, respectively. The values for the spectrum standardization model were 0.90, 2.24%, and 2.75%, respectively, whereas those for the dominant factor based PLS model were 0.99,2.66%, and 3.64%, respectively. The results indicate that LIBS has great potential to be applied for the coal analysis.
机译:煤炭中碳含量的定量测量对于煤炭性能分析至关重要。然而,由于测量不确定性以及基体效应,使用激光诱导击穿光谱法(LIBS)对煤中碳含量进行定量测量的测量精度较低。在这项研究中,我们先前提出的频谱标准化方法和基于显性因子的偏最小二乘(PLS)方法相结合,以提高使用LIBS的煤中碳含量的测量精度。组合模型利用光谱标准化方法准确地计算出主要碳浓度作为主要因素,然后将PLS与全部光谱信息一起应用以校正残留误差。应用组合模型来测量24个烟煤样品中的碳含量。结果表明,与频谱标准化模型和基于显性因子的PLS模型相比,组合模型可以进一步提高测量精度,在传统的单变量方法中,显性因子是基于模型的。组合模型的确定系数,预测均方根误差和平均相对误差分别为0.99、1.63%和1.82%。频谱标准化模型的值分别为0.90、2.24%和2.75%,而基于显性因子的PLS模型的值分别为0.99、2.66%和3.64%。结果表明,LIBS具有很大的潜力可用于煤炭分析。

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