基于多变量异构数据的图特征融合驱动的复杂流程工业系统故障诊断

IF 1.2 4区 工程技术 Q3 ACOUSTICS
Fengyuan Zhang, Jie Liu, Xiang Lu, Tao Li, Yi Li, Yongji Sheng, Hu Wang, Yingwei Liu
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引用次数: 0

摘要

集成了各种复杂设备的流程工业系统的稳定运行是生产的前提,这就需要对系统进行状态监测和诊断。近年来,深度学习(DL)的不断发展推动了流程工业系统智能诊断的研究,传感器系统布局也为这一任务提供了充足的数据基础。然而,这些 DL 驱动的方法也存在一些不足:(1)流程工业系统中存在的异构传感系统的输出信号往往是高维耦合的;(2)根据纯数据建立的故障诊断模型缺乏系统的流程知识,导致拟合不准确。为解决这些问题,本文提出了一种图特征融合驱动的复杂流程工业系统故障诊断方法。首先,根据系统的先验知识和数据特征,将原始的多源异构数据分为两类。在此基础上,根据系统的物理空间布局和反应机制,将两类数据分别转换为物理空间图(PSG)和过程知识图(PKG)。其次,利用图卷积神经网络同时提取子图的节点特征和系统空间特征,挖掘子图的故障表示信息。最后,利用注意力机制将学习到的子图特征与全局图表示融合,从而进行故障诊断。两个公开的过程化学数据集验证了所提方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Graph Feature Fusion-Driven Fault Diagnosis of Complex Process Industrial System Based on Multivariate Heterogeneous Data
The stable operation of the process industrial system, which is integrated with various complex equipment, is the premise of production, which requires the condition monitoring and diagnosis of the system. Recently, the continuous development of deep learning (DL) has promoted the research of intelligent diagnosis in process industry systems, and the sensor system layout has provided sufficient data foundation for this task. However, these DL-driven approaches have had some shortcomings: (1) the output signals of heterogeneous sensing systems existing in process industry systems are often high-dimensional coupled and (2) the fault diagnosis model built from pure data lacks systematic process knowledge, resulting in inaccurate fitting. To solve these problems, a graph feature fusion-driven fault diagnosis of complex process industry systems is proposed in this paper. First, according to the system’s prior knowledge and data characteristics, the original multisource heterogeneous data are divided into two categories. On this basis, the two kinds of data are converted to physical space graphs (PSG) and process knowledge graphs (PKG), respectively, according to the physical space layout and reaction mechanism of the system. Second, the node features and system spatial features of the subgraphs are extracted by the graph convolutional neural network at the same time, and the fault representation information of the subgraph is mined. Finally, the attention mechanism is used to fuse the learned subgraph features getting the global-graph representation for fault diagnosis. Two publicly available process chemistry datasets validate the effectiveness of the proposed method.
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来源期刊
Shock and Vibration
Shock and Vibration 物理-工程:机械
CiteScore
3.40
自引率
6.20%
发文量
384
审稿时长
3 months
期刊介绍: Shock and Vibration publishes papers on all aspects of shock and vibration, especially in relation to civil, mechanical and aerospace engineering applications, as well as transport, materials and geoscience. Papers may be theoretical or experimental, and either fundamental or highly applied.
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