A novel blade crack detection method based on diffusion model with acoustic-vibration fusion

Xun Zhao, Feiyun Xu, Di Song, Junxian Shen, Tianchi Ma
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Abstract

Compressors are now widely used in industry and engineering, and blades are one of the most important components in compressors. The performance of the blades directly affects the operating condition and life of the compressor. Currently, the mainstream method for diagnosing and classifying blade faults is based on vibration signal diagnosis. However, traditional methods are limited by the large influence of noise on vibration signals and the singularity of features, and their accuracy and efficiency are relatively low. In addition, as a mainstream diagnostic method, fault diagnosis based on neural networks also suffers from limitations in network structure and data volume, which reduces the generalization of diagnostic methods. Therefore, this paper proposes a new blade fault diagnosis network based on the diffusion model. Specifically, to improve the integrity of the features used for diagnosis, this paper first proposes a learnable weight fusion module and applies it to the fusion process of sound and vibration signals. Secondly, the diffusion model is introduced to generate normal blade signals under corresponding operating conditions when fused features of blades with faults are input. Finally, after obtaining the fused features of normal blades under corresponding operating conditions, the input-output feature difference of the diffusion model is used as the input of the classification network to achieve blade fault diagnosis. In experimental tests, the method proposed in this paper outperforms the current mainstream blade fault diagnosis methods on actual blade fault data. In addition, comparative experiments and ablation experiments also prove the effectiveness of the proposed method.
基于声-振动融合扩散模型的叶片裂纹检测新方法
压缩机在工业和工程中得到了广泛的应用,而叶片是压缩机中最重要的部件之一。叶片的性能直接影响压缩机的运行状态和寿命。目前,叶片故障诊断和分类的主流方法是基于振动信号的诊断。但传统方法受噪声对振动信号影响大、特征奇异性低等限制,精度和效率相对较低。此外,作为主流的故障诊断方法,基于神经网络的故障诊断还受到网络结构和数据量的限制,降低了诊断方法的通用性。为此,本文提出了一种基于扩散模型的叶片故障诊断网络。具体而言,为了提高用于诊断的特征的完整性,本文首先提出了一种可学习的权重融合模块,并将其应用于声音和振动信号的融合过程。其次,引入扩散模型,输入故障叶片的融合特征,生成相应工况下的正常叶片信号;最后,在获得相应工况下正常叶片的融合特征后,将扩散模型的输入输出特征差作为分类网络的输入,实现叶片故障诊断。在实验测试中,本文提出的方法在叶片实际故障数据上优于目前主流的叶片故障诊断方法。对比实验和烧蚀实验也证明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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