多传感器时空图网络融合经验模式分解卷积用于机器故障诊断

IF 14.7 1区 计算机科学 Q1 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Kuangchi Sun, Aijun Yin
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引用次数: 0

摘要

不同位置的多传感器时间序列数据不仅包含时间相关性信息,还包含空间相关性信息,这对于机器故障诊断来说是非常宝贵的。现有的图构建方法主要采用不同的数据分析方法来连接节点和边。然而,很少有研究考虑传感器本身的位置和多传感器时间序列数据的时间相关性信息。为了挖掘空间信息与时间信息之间的关系,本文构建了多传感器时空图。其中,多传感器的不同数据点被划分为不同的节点,代表空间特征信息。同一传感器的不同节点之间包含时间信息。此外,本文还提出了一种经验模式分解图卷积网络(EGCN)来提取特征。具体来说,将传统的图卷积算子改为经验模态分解算子,可将输入特征分解为多个本征模态特征,从而实现自适应特征提取,提高网络的表示能力。最后,不同的故障类型可以通过全连接层进行分类。来自不同测试平台的实验证明,在有限的故障样本下,该方法的诊断准确率超过 99%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-sensor temporal-spatial graph network fusion empirical mode decomposition convolution for machine fault diagnosis

Multi-sensor time-series data at different locations contains not only temporal correlation information but also spatial correlation information which is treasure for machine fault diagnosis. Existing graph construction methods mainly apply different data analysis methods to connect nodes and edges. Few works, however, consider the location of the sensor itself and temporal correlation information of multi-sensor time-series data. To mine the relationship between spatial information and temporal information, the multi-sensor temporal-spatial graph is constructed in this paper. Hereinto, the different data points of multi-sensor are severed as different nodes which represents the spatial feature information. The temporal information is contained between different nodes of the same sensor. Moreover, an empirical mode decomposition graph convolution network (EGCN) is proposed to extract the feature. Specifically, the traditional graph convolution operator is changed to empirical mode decomposition which can decompose the input features into multiple intrinsic modal features to achieve adaptive feature extraction and improve the representation capability of the network. Finally, the different fault types can be classified by fully connected layers. Experiments from different test rigs demonstrate that the proposed method achieves a diagnostic accuracy exceeding 99 % under limited fault samples.

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来源期刊
Information Fusion
Information Fusion 工程技术-计算机:理论方法
CiteScore
33.20
自引率
4.30%
发文量
161
审稿时长
7.9 months
期刊介绍: Information Fusion serves as a central platform for showcasing advancements in multi-sensor, multi-source, multi-process information fusion, fostering collaboration among diverse disciplines driving its progress. It is the leading outlet for sharing research and development in this field, focusing on architectures, algorithms, and applications. Papers dealing with fundamental theoretical analyses as well as those demonstrating their application to real-world problems will be welcome.
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