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Acoustic Emission Recognition Based on Spectrogram and Acoustic Features

机译:基于频谱图和声学特征的声发射识别

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摘要

In order to improve the level and efficiency of fault diagnosis, an acoustic emission recognition method based on spectrum and acoustic features is proposed. The proposed system is composed of CNN and BiLSTM networks. Firstly, the amplitude spectrum and group delay phase spectrum of AE signals are extracted, and the amplitude-phase spectrum composed of the two extracted spectrum is input into CNN network to obtain the global features of AE signals. Secondly, the acoustic features such as short-term energy, zero crossing rate and kurtosis of AE signals are extracted to obtain the features of AE signals Finally, the features extracted from CNN network and BiLSTM network are fused to get the fused features, which are classified and recognized by soltmax, so as to realize acoustic emission recognition. Simulation results show that the performance of the proposed system is improved by more than 17% compared with the other algorithm, and the effectiveness of the feature fusion model is verified by experiments.
机译:为了提高故障诊断的水平和效率,提出了一种基于频谱和声学特征的声发射识别方法。拟议的系统由CNN和BiLSTM网络组成。首先,提取声发射信号的幅度谱和群时延相位谱,将提取的两个频谱组成的幅相信号输入到CNN网络中,得到声发射信号的全局特征。其次,提取声纳信号的短期能量,零交叉率和峰度等声学特征,得到声纳信号的特征。最后,对从CNN网络和BiLSTM网络中提取的特征进行融合,得到融合特征。通过soltmax分类和识别,从而实现声发射识别。仿真结果表明,与其他算法相比,该系统的性能提高了17%以上,并通过实验验证了特征融合模型的有效性。

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