期刊文献+

A Modeling Method Applied to Fault Diagnosis for Constant Linear System

一种用于故障诊断的定常线性系统的建模方法
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摘要 The paper presents a new modeling method applied to fault diagnosis for constant linear closed-loop system by taking the impulse response series as the system model, and provides the calculation process of the method and output of model. The high frequency part of the pulse series, in the method, is reversed so as not to lose the frequency information of the pulse series in its transfer function. On the other hand, the method can also avoid the disadvantage that the learning results of neural network are uncertain every time. In the last part, the application with random disturbance of digital simulation and practical system shows that the modeling method is high accurate and suitable to be applied in fault diagnosis area. The paper presents a new modeling method applied to fault diagnosis for constant linear closed-loop system by taking the impulse response series as the system model, and provides the calculation process of the method and output of model. The high frequency part of the pulse series, in the method, is reversed so as not to lose the frequency information of the pulse series in its transfer function. On the other hand, the method can also avoid the disadvantage that the learning results of neural network are uncertain every time. In the last part, the application with random disturbance of digital simulation and practical system shows that the modeling method is high accurate and suitable to be applied in fault diagnosis area.
出处 《Chinese Journal of Aeronautics》 SCIE EI CAS CSCD 2005年第3期242-249,共8页 中国航空学报(英文版)
基金 NationalNaturalScienceFoundationofChina(60371043) BeijingNaturalScienceFoundation(4012009) NationalDefenseFoundationofChina(51419020404HK0150) ProgramforNewCenturyExcellentTalentsinUniversity(NCET).
关键词 closed-loop system modeling convolution time-field model fault diagnosis hydraulic torque-load simulator closed-loop system modeling convolution time-field model fault diagnosis hydraulic torque-load simulator
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