Spectroscopy and Spectral Analysis, Volume. 34, Issue 7, 1816(2014)
Spectral Scatter Correction of Coal Samples Based on Quasi-Linear Local Weighted Method
The present paper puts forth a new spectral correction method based on quasi-linear expression and local weighted function. The first stage of the method is to search 3 quasi-linear expressions to replace the original linear expression in MSC method, such as quadratic, cubic and growth curve expression. Then the local weighted function is constructed by introducing 4 kernel functions, such as Gaussian, Epanechnikov, Biweight and Triweight kernel function. After adding the function in the basic estimation equation, the dependency between the original and ideal spectra is described more accurately and meticulously at each wavelength point. Furthermore, two analytical models were established respectively based on PLS and PCA-BP neural network method, which can be used for estimating the accuracy of corrected spectra. At last, the optimal correction mode was determined by the analytical results with different combination of quasi-linear expression and local weighted function. The spectra of the same coal sample have different noise ratios while the coal sample was prepared under different particle sizes. To validate the effectiveness of this method, the experiment analyzed the correction results of 3 spectral data sets with the particle sizes of 0.2, 1 and 3 mm. The results show that the proposed method can eliminate the scattering influence, and also can enhance the information of spectral peaks. This paper proves a more efficient way to enhance the correlation between corrected spectra and coal qualities significantly, and improve the accuracy and stability of the analytical model substantially.
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LEI Meng, LI Ming, MA Xiao-ping, MIAO Yan-zi, WANG Jian-sheng. Spectral Scatter Correction of Coal Samples Based on Quasi-Linear Local Weighted Method[J]. Spectroscopy and Spectral Analysis, 2014, 34(7): 1816
Received: Sep. 14, 2013
Accepted: --
Published Online: Jul. 22, 2014
The Author Email: Meng LEI (leimengniee@163.com)