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基于小波去噪与KPCA的TE过程故障检测研究
引用本文:王迎,王新明,赵小强.基于小波去噪与KPCA的TE过程故障检测研究[J].化工机械,2011,38(1):49-53.
作者姓名:王迎  王新明  赵小强
作者单位:兰州理工大学
基金项目:甘肃省自然科学基金,甘肃省科技支撑计划-工业类,兰州理工大学博士基金
摘    要:针对化工过程复杂非线性,并且含有噪声和随机干扰的特点,提出利用小波去噪与核主元分析(KPCA)相结合的方法来进行故障检测,既可以达到去噪、抗干扰的目的,又可以将输入空间中复杂的非线性问题转化为特征空间中的线性问题,从而解决了主元分析(PCA)方法在非线性过程中性能差的问题.并将该方法应用于Tennessee Eastm...

关 键 词:故障检测  核主元分析  小波去噪  TE过程

Fault Detection of Tennessee Eastman Process Based on Wavelet Denoising and KPCA
WANG Ying,WANG Xinming,ZHAO Xiaoqiang.Fault Detection of Tennessee Eastman Process Based on Wavelet Denoising and KPCA[J].Chemical Engineering & Machinery,2011,38(1):49-53.
Authors:WANG Ying  WANG Xinming  ZHAO Xiaoqiang
Affiliation:(Lanzhou University of Technology,Lanzhou 730050,China)
Abstract:Aiming at the complex and nonlinear chemical process,an fault detection method which combing wavelet denoising with kernel principal component analysis(KPCA) was presented to solve the noise and disturbance and to compute principal components in higher dimensional feature space by means of nonlinear kernel functions.The simulations in Tennessee Eastman(TE) chemical process demonstrate that this method outperforms the principal component analysis(PCA) in fault detection.
Keywords:Fault Detection  Kernel Principal Component Analysis  Wavelet Denoising  Tennessee Eastman Processes
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