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PNN and GRNN Approach for Fault Diagnosis of Steam Turbine

机译:PNN和GRNN的汽轮机故障诊断方法。

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The artificial neural networks have received wide research efforts in fault diagnostics in recent years.This study proposes two types of feedforward neural networks (PNN and GRNN) for diagnosing the fault of the steam turbine.The eigenvectors of the vibration signals in steam turbine can be extracted by the time-domain analysis after the wavelet packet decomposition and reconstruction.Depending on these eigenvectors,we developed the fault diagnosis program with the PNN and GRNN approach for the steam turbine in Matlab,and diagnosed two common faults of steam turbine (mass unbalance and oil whirl).The diagnostic accuracy is up to 94.44%,and the diagnostic time is short.The results demonstrate that the diagnostic approach is able to identify the common faults of steam turbine quickly and efficiently.
机译:近年来,人工神经网络已经在故障诊断领域进行了广泛的研究工作,本文提出了两种用于诊断汽轮机故障的前馈神经网络(PNN和GRNN),汽轮机振动信号的特征向量可以为小波包分解和重构后,通过时域分析提取。基于这些特征向量,我们开发了基于PNN和GRNN方法的Matlab汽轮机故障诊断程序,并诊断了汽轮机的两个常见故障(质量失衡)。诊断准确率高达94.44%,诊断时间短。结果表明,该诊断方法能够快速,有效地识别汽轮机的常见故障。

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