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Fault diagnosis method for energy storage mechanism of high voltage circuit breaker based on CNN characteristic matrix constructed by sound-vibration signal

机译:基于CNN特征矩阵构造的高压断路器储能机理故障诊断方法

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摘要

Aiming at the problem that some traditional high voltage circuit breaker fault diagnosis methods were over-dependent on subjective experience, the accuracy was not very high and the generalization ability was poor, a fault diagnosis method for energy storage mechanism of high voltage circuit breaker, which based on Convolutional Neural Network (CNN) characteristic matrix constructed by sound-vibration signal ,was proposed. In this paper, firstly, the morphological filtering was used for background noise cancellation of sound signal, and the time scale alignment method based on kurtosis and envelope similarity were proposed to ensure the synchronism of the sound-vibration signal. Secondly, the Pearson correlation coefficient was used to construct two-dimensional image characteristic matrix for the expanded sound-vibration signal. Finally, the characteristic matrix was trained by utilizing CNN. Local Response Normalization (LRN) and core function decorrelation were utilized to improve the structure of CNN model, which reduced the bad impact of large data fluctuation of energy storage process on the diagnostic accuracy of circuit breaker energy storage mechanism. Compared with the traditional method, the proposed method has obvious advantages, whose total accurate rate up to 98.2 % and generalization performance is excellent.
机译:针对一些传统的高压断路器故障诊断方法过度依赖主观经验,精度不是很高,泛化能力差,高压断路器储能机制的故障诊断方法,这基于由声音振动信号构建的卷积神经网络(CNN)特征矩阵。在本文中,首先,使用形态过滤用于声音信号的背景噪声消除,以及基于Kurtosis和包络相似性的时间尺度对准方法,以确保声振信号的同步。其次,使用Pearson相关系数来构造用于扩展声振信号的二维图像特征矩阵。最后,通过利用CNN训练特征矩阵。利用本地响应标准化(LRN)和核心功能去相关性改善CNN模型的结构,这降低了能量存储过程大数据波动对断路器能量存储机构的诊断准确性的影响。与传统方法相比,该方法具有明显的优势,其总准确的速率高达98.2%,泛化性能优异。

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