基于图形变换器的改进型 GNN:轧机轴承故障诊断的新框架

IF 1.7 4区 计算机科学 Q3 AUTOMATION & CONTROL SYSTEMS Transactions of the Institute of Measurement and Control Pub Date : 2024-07-27 DOI:10.1177/01423312241265774
Dongxiao Hou, Bo Zhang, Jiahui Chen, Peiming Shi
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引用次数: 0

摘要

轧机系统结构复杂,运行条件多变。因此,在轧机故障诊断中需要充分考虑数据之间的相互依存关系。虽然图神经网络(GNN)是一种基于非欧几里得空间数据的强大架构,但目前的方法难以表示轧机故障振动信号的长程依赖性。仅仅增加 GNN 的深度还不足以扩大模型的感受野,因为更大的 GNN 模型可能会出现梯度消失或过渡平滑的问题。为了解决上述问题,本文提出了一种基于图变换器的改进型图神经网络来诊断轧机的健康状况。该方法首先对原始振动信号的频谱进行滑动最大采样,以提高频率分辨率并降低特征维度。其次,通过构建亲和图来描述故障特征之间的关系。最后,通过 Graph-Transformer 中的读出模块和自注意机制学习配对特征之间的长程依赖关系,并由分类器输出诊断结果。在轧机平台上的实验结果表明,该方法不仅能适应轧机不断变化的工作条件,而且在样本不平衡和强噪声的情况下也能取得优异的性能。
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Improved GNN based on Graph-Transformer: A new framework for rolling mill bearing fault diagnosis
The structure of the rolling mill system is complex and the operating conditions are changeable. Therefore, the interdependence between the data needs to be fully considered in the fault diagnosis of the rolling mill. Although graph neural network (GNN) is a powerful architecture based on non-Euclidean spatial data, the current method is difficult to represent the long-range dependence of rolling mill fault vibration signals. Simply increasing the depth of GNN is not enough to expand the receptive field of the model, because the larger GNN model may have the problem of gradient disappearance or transition smoothing. In order to solve the above problems, an improved graph neural network based on Graph-Transformer is proposed to diagnose the health status of rolling mill. This method first performs sliding maximum sampling on the spectrum of the original vibration signal to improve the frequency resolution and reduce the feature dimension. Second, the relationship between fault features is characterized by constructing affinity graph. Finally, the long-range dependency between paired features is learned through the readout module and the self-attention mechanism in Graph-Transformer and the diagnostic results are output by the classifier. The experimental results on the rolling mill platform show that this method can not only adapt to the changing working conditions of the rolling mill but also achieve excellent performance in the case of sample imbalance and strong noise.
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来源期刊
CiteScore
4.10
自引率
16.70%
发文量
203
审稿时长
3.4 months
期刊介绍: Transactions of the Institute of Measurement and Control is a fully peer-reviewed international journal. The journal covers all areas of applications in instrumentation and control. Its scope encompasses cutting-edge research and development, education and industrial applications.
期刊最新文献
Selective feature block and joint IoU loss for object detection A speed coordination control method based on D-S evidence synthesis theory Model Predictive Control based on Long-Term Memory neural network model inversion Improved GNN based on Graph-Transformer: A new framework for rolling mill bearing fault diagnosis Auxiliary variable-based output feedback control for hydraulic servo systems with desired compensation approach
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