CIESC Journal ›› 2009, Vol. 60 ›› Issue (12): 3058-3062.
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HUANG Daoping;GONG Tingting;ZENG Hui
Online:
Published:
黄道平;龚婷婷;曾辉
Abstract:
Nonlinear principal component analysis(NLPCA)fault detection method achieves good detection results especially in a nonlinear process.Signed directed graph(SDG)model is based on deep-going information,which excels in fault interpretation.In this work,an NLPCA-SDG fault diagnosis method was proposed.SDG model was used to interpret the residual contributions produced by NLPCA.This method could overcome the shortcomings of traditional principal component analysis(PCA)method in fault detection of a nonlinear process and the shortcomings of traditional SDG method in single variable statistics in discriminating node conditions and threshold values.The application to a distillation unit of a petrochemical plant illustrated its validity in nonlinear process fault diagnosis.
Key words: 故障诊断, 非线性主元分析, 符号有向图, 神经网络
故障诊断,
关键词: 故障诊断, 非线性主元分析, 符号有向图, 神经网络
HUANG Daoping, GONG Tingting, ZENG Hui. A fault diagnosis method based on nonlinear principal component analysis and sign directed graph[J]. CIESC Journal, 2009, 60(12): 3058-3062.
黄道平, 龚婷婷, 曾辉. 基于非线性主元分析和符号有向图的故障诊断方法 [J]. 化工学报, 2009, 60(12): 3058-3062.
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https://hgxb.cip.com.cn/EN/Y2009/V60/I12/3058
ZHAO Chengye;LIU Xinggao
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