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Fault detection and isolation problem: Sliding mode fuzzy observers and neural networks

机译:故障检测与隔离问题:滑模模糊观察者和神经网络

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In this paper results of the application of a hybrid Fault Detection and Isolation scheme are presented. A Takagi-Sugeno fuzzy model is used to describe the system and a type of sliding mode observers are designed to estimate the system state vector; from this, the diagnostic signal-residual is generated by the comparison of measured and estimated output. Neural Networks are proposed in order to solve the fault isolation problem based on signal-residual. The faulted component is identified from the active signal-residuals by means of the application of the presented technique based on neural networks. This paper shows an application of the fault diagnosis technique, which was satisfactorily tested in a two-tank hydraulic system.
机译:在本文中,介绍了混合故障检测和隔离方案的应用。 Takagi-Sugeno模糊模型用于描述系统,设计的滑模观察者旨在估计系统状态向量;由此,通过比较测量和估计的输出来产生诊断信号差。提出了神经网络,以解决基于信号剩余的故障隔离问题。通过基于神经网络的呈现技术从主动信号 - 残差识别故障组分。本文显示了故障诊断技术的应用,该技术在双罐液压系统中令人满意地测试。

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