首页> 外文会议>International Federation of Automatic Control Symposium on Fault Detection, Supervision and Safety of Technical Processes >COMPONENT FAULT DIAGNOSIS USING WAVELET NEURAL NETWORKS WITH LOCAL RECURRENT STRUCTURE
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COMPONENT FAULT DIAGNOSIS USING WAVELET NEURAL NETWORKS WITH LOCAL RECURRENT STRUCTURE

机译:用局部反复结构采用小波神经网络的组件故障诊断

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This paper investigates the development of the wavelet neural network with local recurrent structure and its application to fault detection and isolation (FDI) of components of a dynamic process. Hybrid learning based on orthogonal least-squares and the steepest-descent method, is used to train the proposed neural network. The experimental case study concerns the component fault diagnosis of a three-tank system. A neural simplified observer scheme is used to generate the residuals (symptoms) in the form of one step-ahead prediction errors. These are further analysed by a neural classifier in order to take the appropriate decision regarding the actual behaviour of the process.
机译:本文调查了具有局部反复结构的小波神经网络的发展及其在动态过程的组件的故障检测和隔离(FDI)中的应用。基于正交最小二乘和陡峭的方法的混合学习,用于训练所提出的神经网络。实验案例研究涉及三罐系统的组件故障诊断。神经简化的观察者方案用于以一个踩踏预测误差的形式产生残留物(症状)。通过神经分类器进一步分析了这些,以便对该过程的实际行为采取适当的决定。

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