Department of Chemistry, Inner Mongolia University, Huhehot, Inner Mongolia 010021, People's Republic of China.
Anal Biochem. 2010 Oct 15;405(2):184-91. doi: 10.1016/j.ab.2010.06.032. Epub 2010 Jun 25.
Two chemometric methods, WPT-ERNN and least square support vector machines (LS-SVM), were developed to perform the simultaneous spectrophotometric determination of nitrophenol-type compounds with overlapping spectra. The WPT-ERNN method is based on Elman recurrent neural network (ERNN) regression combined with wavelet packet transform (WPT) preprocessing and relies on the concept of combining the idea of WPT denoising with ERNN calibration for enhancing the noise removal ability and the quality of regression without prior separation. The LS-SVM technique is capable of learning a high-dimensional feature with fewer training data and reducing the computational complexity by requiring the solution of only a set of linear equations instead of a quadratic programming problem. The relative standard errors of prediction (RSEPs) obtained for all components using WPT-ERNN, ERNN, LS-SVM, partial least squares (PLS), and multivariate linear regression (MLR) were compared. Experimental results showed that the WPT-ERNN and LS-SVM methods were successful for the simultaneous determination of nitrophenol-type compounds even when severe overlap of spectra was present.
两种化学计量学方法,WPT-ERNN 和最小二乘支持向量机(LS-SVM),被开发出来用于同时分光光度测定具有重叠光谱的硝基酚类化合物。WPT-ERNN 方法基于 Elman 递归神经网络(ERNN)回归结合小波包变换(WPT)预处理,并依赖于结合 WPT 去噪与 ERNN 校准的思想,以提高去除噪声的能力和回归的质量,而无需事先分离。LS-SVM 技术能够用较少的训练数据学习高维特征,并通过仅需要求解一组线性方程而不是二次规划问题来降低计算复杂度。使用 WPT-ERNN、ERNN、LS-SVM、偏最小二乘法(PLS)和多元线性回归(MLR)对所有成分的预测相对标准误差(RSEPs)进行了比较。实验结果表明,即使在光谱严重重叠的情况下,WPT-ERNN 和 LS-SVM 方法也成功地用于同时测定硝基酚类化合物。