基于DRS频谱图像和深度学习的滚动轴承故障诊断研究

Zhuoxian Li, Hao Wang, Jiatai Chen, Zhexin Zhou, Wei Chen
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引用次数: 0

摘要

由于深度学习网络在处理数据,特别是图像数据方面具有更大的优势,因此深度学习在故障诊断中逐渐得到广泛的应用。然而,在故障诊断领域,将故障信号的频谱图像作为深度学习网络的输入的研究是非常罕见的。为此,本文提出了一种将离散随机分离(DRS)频谱图像与深度学习网络(DRSFSI-DL)相结合的全新智能故障诊断方法。为了研究上述方法的故障诊断效果,我们使用了几个深度学习网络进行比较,如GoogLeNet、residual network和Inception_ResNet_v2。将DRS方法处理后的振动故障频谱图像输入到深度学习网络中进行训练。在相同的深度学习网络环境下,将基于DRS频谱图像(DRSFSI)的故障诊断与基于功率谱密度(PSD)和倒谱的传统频谱诊断进行了比较。故障诊断结果表明,在相同的深度学习网络下,该方法比PSD图像和倒谱图像具有更好的分类精度。一些深度学习网络的故障诊断准确率可达100.00%,泛化性能优于PSD图像和倒谱图像。最后,利用全新的轴承故障数据集对该方法进行了进一步验证,取得了良好的准确率和泛化能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research on Rolling Bearing Fault Diagnosis Based on DRS Frequency Spectrum Image and Deep Learning
Deep learning is gradually being widely used in fault diagnosis now, because deep learning networks are more advantageous in processing data, especially image data. However, research using frequency spectra image of fault signals as inputs to deep learning networks are extremely rare in the field of fault diagnosis. Therefore, a brand-new intelligent fault diagnosis method is proposed in this paper which combines discrete random separate (DRS) frequency spectrum images with deep learning networks (DRSFSI-DL). To investigate the fault diagnosis effects of the method mentioned above, several deep learning networks are utilized for comparisons, such as GoogLeNet, residual network, and Inception_ResNet_v2. The vibration fault frequency spectrum images processed by the DRS method are input to train several deep learning networks. Under the same circumstance of deep learning networks, the fault diagnosis using the DRS frequency spectrum image (DRSFSI), is also compared to the fault diagnosis using traditional frequency spectrum, including the power spectrum density (PSD) and cepstrum. The fault diagnosis results show that the proposed method has a better classification accuracy than the PSD image and cepstrum image, with the same deep learning networks. The fault diagnosis accuracy can reach up to 100.00% for some deep learning networks with better generalization performance than the PSD image and cepstrum image. Lastly, the proposed method is further verified using the brand-new bearing fault dataset, and excellent accuracy and generalization ability are achieved.
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