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Research on Fault Diagnosis Based on Singular Value Decomposition and Fuzzy Neural Network

机译:基于奇异值分解和模糊神经网络的故障诊断研究

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A method based on singular value decomposition (SVD) and fuzzy neural network (FNN) was proposed to extract and diagnose the fault features of diesel engine crankshaft bearings efficiently and accurately. Firstly, vibration signals of crankshaft bearings in known state under the same working condition were decomposed by EMD to obtain the modal components containing fault-feature information. Then, the singular values of modal components which include the main fault features were used as the initial vector matrix, where the eigenvectors were decomposed to form a fault characteristic matrix. At last, the fault features matrix was trained by the fuzzy neural network, in order to realize the diagnosis and identification of the crankshaft bearings in different states in the form of numerical values. The experiment showed that the numerical identification of the fuzzy neural network based on the singular value had high fault diagnosis accuracy and stability. This method can also reflect the gradual change of the crankshaft bearings’ fault to some extent, so it has the desired reliability and value.
机译:提出了一种基于奇异值分解(SVD)和模糊神经网络(FNN)的方法,可以有效,准确地提取和诊断柴油机曲轴轴承的故障特征。首先,通过EMD分解已知状态下处于相同工作状态的曲轴轴承的振动信号,得到包含故障特征信息的模态分量。然后,将包含主要断层特征的模态分量的奇异值用作初始矢量矩阵,对特征向量进行分解,形成断层特征矩阵。最后,利用模糊神经网络对故障特征矩阵进行训练,以数值形式实现对不同状态曲轴轴承的诊断和识别。实验表明,基于奇异值的模糊神经网络数值辨识具有较高的故障诊断精度和稳定性。该方法还可以在一定程度上反映曲轴轴承故障的逐渐变化,因此具有理想的可靠性和价值。

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