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基于主元分析的桥梁挠度传感器故障诊断研究
引用本文:胡顺仁,李瑞平,包明,张建科.基于主元分析的桥梁挠度传感器故障诊断研究[J].传感器与微系统,2014(6):9-12.
作者姓名:胡顺仁  李瑞平  包明  张建科
作者单位:重庆理工大学电子信息与自动化学院;重庆大学光电技术及系统教育部重点实验室
基金项目:国家“863”计划资助项目(2006AA04Z433);重庆市科技攻关重大专项资助项目(CYB—DQ—0004);重庆市科委科技攻关资助项目(2010GGD004)
摘    要:主元分析(PCA)是一种典型的数据降维的多元统计方法,已被越来越多地用于故障诊断。将PCA应用在桥梁挠度传感器故障诊断。介绍了PCA的理论,研究了基于PCA的故障检测方法和基于贡献率的故障诊断方法。计算平方预测误差(SPE)和Hoteling T2统计,当统计量超过阈值时,判断系统出现了传感器故障,然后通过SPE贡献图判断故障源。通过仿真验证了PCA在故障诊断的实用性,但结果也表明:PCA对小故障不是很敏感。

关 键 词:桥梁监测  平方预报误差  主元分析  故障诊断

Bridge deflection sensor fault diagnosis research based on PCA
HU Shun-ren;LI Rui-ping;BAO Ming;ZHANG Jian-ke.Bridge deflection sensor fault diagnosis research based on PCA[J].Transducer and Microsystem Technology,2014(6):9-12.
Authors:HU Shun-ren;LI Rui-ping;BAO Ming;ZHANG Jian-ke
Affiliation:HU Shun-ren;LI Rui-ping;BAO Ming;ZHANG Jian-ke;School of Electronic Information and Automation,Chongqing University of Technology;Key Laboratory of Optoelectronic Technology and System,Ministry of Education,Chongqing University;
Abstract:Principal component analysis (PCA)is a typical data dimension reduction multivariate statistical method, which has been used in fault diagnosis. PCA is applied in bridge deflection sensor fault diagnosis. Introduce theory of PCA, and study fault detection method based on PCA and fault diagnosis method based on contribution rate. Calculate squared prediction error (SPE) and Hotelling T^Q statistics, when statistics exceeds threshold,judge there are sensor faults in system, and by using SPE contribution figure judge fault source. By simulation, the practicability of PCA in fault diagnosis is proved, but the result also show that PCA is not so sensitive to small fault.
Keywords:bridge monitoring  squared prediction error(SPE)  principal component analysis (PCA)  fault diagnosis
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