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基于神经网络内模的非线性偏最小二乘热电站烟气光谱定量分析

[Spectral quantitative analysis by nonlinear partial least squares based on neural network internal model for flue gas of thermal power plant].

作者信息

Cao Hui, Li Yao-Jiang, Zhou Yan, Wang Yan-Xia

出版信息

Guang Pu Xue Yu Guang Pu Fen Xi. 2014 Nov;34(11):3066-70.

Abstract

To deal with nonlinear characteristics of spectra data for the thermal power plant flue, a nonlinear partial least square (PLS) analysis method with internal model based on neural network is adopted in the paper. The latent variables of the independent variables and the dependent variables are extracted by PLS regression firstly, and then they are used as the inputs and outputs of neural network respectively to build the nonlinear internal model by train process. For spectra data of flue gases of the thermal power plant, PLS, the nonlinear PLS with the internal model of back propagation neural network (BP-NPLS), the non-linear PLS with the internal model of radial basis function neural network (RBF-NPLS) and the nonlinear PLS with the internal model of adaptive fuzzy inference system (ANFIS-NPLS) are compared. The root mean square error of prediction (RMSEP) of sulfur dioxide of BP-NPLS, RBF-NPLS and ANFIS-NPLS are reduced by 16.96%, 16.60% and 19.55% than that of PLS, respectively. The RMSEP of nitric oxide of BP-NPLS, RBF-NPLS and ANFIS-NPLS are reduced by 8.60%, 8.47% and 10.09% than that of PLS, respectively. The RMSEP of nitrogen dioxide of BP-NPLS, RBF-NPLS and ANFIS-NPLS are reduced by 2.11%, 3.91% and 3.97% than that of PLS, respectively. Experimental results show that the nonlinear PLS is more suitable for the quantitative analysis of glue gas than PLS. Moreover, by using neural network function which can realize high approximation of nonlinear characteristics, the nonlinear partial least squares method with internal model mentioned in this paper have well predictive capabilities and robustness, and could deal with the limitations of nonlinear partial least squares method with other internal model such as polynomial and spline functions themselves under a certain extent. ANFIS-NPLS has the best performance with the internal model of adaptive fuzzy inference system having ability to learn more and reduce the residuals effectively. Hence, ANFIS-NPLS is an accurate and useful quantitative thermal power plant flue gas analysis method.

摘要

针对火电厂烟道光谱数据的非线性特征,本文采用基于神经网络内部模型的非线性偏最小二乘(PLS)分析方法。首先通过PLS回归提取自变量和因变量的潜在变量,然后分别将它们作为神经网络的输入和输出,通过训练过程构建非线性内部模型。针对火电厂烟道气体的光谱数据,对PLS、具有反向传播神经网络内部模型的非线性PLS(BP-NPLS)、具有径向基函数神经网络内部模型的非线性PLS(RBF-NPLS)和具有自适应模糊推理系统内部模型的非线性PLS(ANFIS-NPLS)进行了比较。BP-NPLS、RBF-NPLS和ANFIS-NPLS对二氧化硫的预测均方根误差(RMSEP)分别比PLS降低了16.96%、16.60%和19.55%。BP-NPLS、RBF-NPLS和ANFIS-NPLS对一氧化氮的RMSEP分别比PLS降低了8.60%、8.47%和10.09%。BP-NPLS、RBF-NPLS和ANFIS-NPLS对二氧化氮的RMSEP分别比PLS降低了2.11%、3.91%和3.97%。实验结果表明,非线性PLS比PLS更适合于烟道气的定量分析。此外,利用神经网络能够实现非线性特征高度逼近的功能,本文提出的具有内部模型的非线性偏最小二乘法具有良好的预测能力和鲁棒性,能够在一定程度上克服多项式和样条函数等其他内部模型的非线性偏最小二乘法的局限性。具有自适应模糊推理系统内部模型的ANFIS-NPLS具有更强的学习能力和有效减小残差的能力,性能最佳。因此,ANFIS-NPLS是一种准确有效的火电厂烟道气定量分析方法。

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