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首页> 外文期刊>Entropy >Analysis of Weak Fault in Hydraulic System Based on Multi-scale Permutation Entropy of Fault-Sensitive Intrinsic Mode Function and Deep Belief Network
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Analysis of Weak Fault in Hydraulic System Based on Multi-scale Permutation Entropy of Fault-Sensitive Intrinsic Mode Function and Deep Belief Network

机译:基于故障敏感本征函数的多尺度置换熵和深信度网络的液压系统弱故障分析

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With the aim of automatic recognition of weak faults in hydraulic systems, this paper proposes an identification method based on multi-scale permutation entropy feature extraction of fault-sensitive intrinsic mode function (IMF) and deep belief network (DBN). In this method, the leakage fault signal is first decomposed by empirical mode decomposition (EMD), and fault-sensitive IMF components are screened by adopting the correlation analysis method. The multi-scale entropy feature of each screened IMF is then extracted and features closely related to the weak fault information are then obtained. Finally, DBN is used for identification of fault diagnosis. Experimental results prove that this identification method has an ideal recognition effect. It can accurately judge whether there is a leakage fault, determine the degree of severity of the fault, and can diagnose and analyze hydraulic weak faults in general.
机译:为了自动识别液压系统中的弱故障,本文提出了一种基于故障敏感本征函数(IMF)和深度置信网络(DBN)的多尺度置换熵特征提取的识别方法。在这种方法中,首先通过经验模态分解(EMD)分解泄漏故障信号,然后采用相关分析方法筛选故障敏感的IMF分量。然后提取每个经过筛选的IMF的多尺度熵特征,然后获得与弱故障信息密切相关的特征。最后,DBN用于故障诊断的识别。实验结果证明该识别方法具有理想的识别效果。它可以准确地判断是否存在泄漏故障,确定故障的严重程度,并且通常可以诊断和分析水力薄弱故障。

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