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J4  2012, Vol. 46 Issue (5): 824-829    DOI: 10.3785/j.issn.1008-973X.2012.05.008
自动化技术、电气工程     
结合PLS-DA与SVM的近红外光谱软测量方法
董学锋,戴连奎,黄承伟
浙江大学 工业控制技术国家重点实验室,浙江 杭州 310027
Near-infrared spectroscopy soft-sensing method by combining
partial least squares discriminant analysis and support vector machine
DONG Xue-feng,DAI Lian-kui,HUANG Cheng-wei
State Key Lab oratory of Industrial Control Technology, Zhejiang University, Hangzhou 310027, China
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摘要:

为了提高近红外光谱分析精度,提出结合偏最小二乘判别分析(PLS-DA)与支持向量机(SVM)的软测量方法(PLS-DA-SVM).该方法利用一组由不同类别组成的训练样本,引入二叉树进行多重分类,节点分类器由PLS-DA方法建立;利用偏最小二乘支持向量机(PLS-SVM)建立每类样本的定量模型.预测时,用PLS-DA分类树对待测样本进行分类,选择相应的PLS-SVM模型进行定量分析.实验利用PLS-DA-SVM方法和近红外光谱数据建立汽油的研究法辛烷值软测量模型,针对2个批次共计57个成品汽油样本进行蒙特卡洛交叉检验.结果表明,对汽油牌号进行识别,平均分类错误率为0.07%,低于其他常用分类方法;对研究法辛烷值进行预测,均方误差达到0.243,复相关系数达到0.991,较PLS、LS-SVM等方法有显著提高.

Abstract:

To improve the performance of near-infrared spectral analysis, this paper proposes a soft-sensing method (PLS-DA-SVM) which combines partial least squares discriminant analysis (PLS-DA) and support vector machine (SVM). Based on training samples with several classes, firstly, a binary tree built by PLSDA is introduced for multiple classification; secondly, sub-models for quantitative analy are constructed by partial least squares support vector machine (PLS-SVM). For a test sample, PLS-DA classification tree serves to determine its class, and the corresponding PLS-SVM sub-model is selected for quantitative analysis. A PLS-DA-SVM model with near-infrared spectroscopy data was established to determine the research octane number of gasoline samples. Monte Carlo cross validation was preformed with 57 product gasoline samples from 2 oil refineries. Results show that mean classification error rate for the recognition of gasoline brands is 0.07%, which is lower than other pattern recognition methods. Root mean square error of prediction (RMSEP) is reduced to 0.243 and correlation coefficient (R2) is up to 0.991, which show great improvement upon PLS, LS-SVM and other modeling methods.

出版日期: 2012-05-01
:  0 657.3  
基金资助:

国家“863”高技术研究发展计划资助项目(2009AA04Z123).

通讯作者: 戴连奎,男,教授,博导.     E-mail: lkdai@iipc.zju.edu.cn
作者简介: 董学锋(1985-),男,博士生,研究方向为光谱检测分析技术. E-mail: xfdong@iipc.zju.edu.cn
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引用本文:

董学锋,戴连奎,黄承伟. 结合PLS-DA与SVM的近红外光谱软测量方法[J]. J4, 2012, 46(5): 824-829.

DONG Xue-feng,DAI Lian-kui,HUANG Cheng-wei. Near-infrared spectroscopy soft-sensing method by combining
partial least squares discriminant analysis and support vector machine. J4, 2012, 46(5): 824-829.

链接本文:

http://www.zjujournals.com/eng/CN/10.3785/j.issn.1008-973X.2012.05.008        http://www.zjujournals.com/eng/CN/Y2012/V46/I5/824

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