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Fault Diagnosis of Hydraulic Seal Wear and Internal Leakage Using Wavelets and Wavelet Neural Network

机译:基于小波和小波神经网络的液压密封磨损及内部泄漏故障诊断

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The piston seal wear in hydraulic cylinder is one of the main factors that give rise to an internal leakage. This paper focuses on diagnosing piston seal wear and subsequent internal leakage from a double acting seal combination seal used in the support oil cylinder of a QY110 mobile crane. Wavelet transform is applied as a feature extractor to transform the raw oil pressure data into a feature vector consisting of wavelet packet subband energy, energy entropy, energy variance, and root mean square of the wavelet detailed coefficient d(4). This feature vector feeds into the wavelet neural network serving as a pattern recognizer for automatically classifying the fault patterns. We demonstrate with the leakage experiment and simulation data that the proposed fault detection and identification (FDI) scheme is capable of effectively detecting and classifying the piston seal wear with excellent accuracy. Our comparison studies reveal that the proposed FDI tandem produces much more accurate result than that from back-propagation neural network. This paper is supplement to and enrichment of existing studies on fault simulation and diagnosis associated with hydraulic cylinder leakage problems.
机译:液压缸中的活塞密封件磨损是引起内部泄漏的主要因素之一。本文的重点是诊断QY110移动式起重机的支撑油缸中使用的双作用密封组合密封件中的活塞密封件磨损和随后的内部泄漏。应用小波变换作为特征提取器,将原油压力数据转换为由小波包子带能量,能量熵,能量方差和小波详细系数d(4)的均方根组成的特征向量。该特征向量馈入小波神经网络,用作模式识别器,以自动分类故障模式。我们通过泄漏实验和仿真数据证明,提出的故障检测与识别(FDI)方案能够以优异的精度有效地检测和分类活塞密封磨损。我们的比较研究表明,与反向传播神经网络相比,拟议的FDI串联产生的结果要准确得多。本文是对与液压缸泄漏问题相关的故障模拟和诊断的现有研究的补充和充实。

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