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Fault detection and diagnosis for non-Gaussian stochastic distribution systems with time delays via RBF neural networks

机译:时滞的非高斯随机分布系统的RBF神经网络故障检测与诊断

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摘要

A new fault detection and diagnosis (FDD) problem via the output probability density functions (PDFs) for non-gausian stochastic distribution systems (SDSs) is investigated. The PDFs can be approximated by radial basis functions (RBFs) neural networks. Different from conventional FDD problems, the measured information for FDD is the output stochastic distributions and the stochastic variables involved are not confined to Gaussian ones. A (RBFs) neural network technique is proposed so that the output PDFs can be formulated in terms of the dynamic weighings of the RBFs neural network. In this work, a nonlinear adaptive observer-based fault detection and diagnosis algorithm is presented by introducing the tuning parameter so that the residual is as sensitive as possible to the fault. Stability and Convergency analysis is performed in fault detection and fault diagnosis analysis for the error dynamic system. At last, an illustrated example is given to demonstrate the efficiency of the proposed algorithm, and satisfactory results have been obtained.
机译:通过输出概率密度函数(PDF)对非高斯随机分布系统(SDS)进行了新的故障检测与诊断(FDD)问题。 PDF可以通过径向基函数(RBF)神经网络来近似。与传统的FDD问题不同,FDD的测量信息是输出随机分布,并且所涉及的随机变量不限于高斯分布。提出了一种(RBFs)神经网络技术,以便可以根据RBFs神经网络的动态权重来制定输出PDF。在这项工作中,通过引入调整参数,提出了一种基于非线性自适应观测器的故障检测和诊断算法,以使残差对故障尽可能敏感。在误差动态系统的故障检测和故障诊断分析中执行稳定性和收敛性分析。最后,给出一个例子说明该算法的有效性,取得了满意的结果。

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