可见性图
计算机科学
人工智能
图形
特征提取
人工神经网络
方位(导航)
数据挖掘
断层(地质)
欧几里德距离
模式识别(心理学)
机器学习
理论计算机科学
数学
几何学
地质学
正多边形
地震学
作者
Chenyang Li,Lingfei Mo,Ruqiang Yan
标识
DOI:10.1109/icsmd50554.2020.9261687
摘要
The automatic extraction and learning features relying on artificial intelligence algorithms replace traditional manual features. More effective feature expression improves the performance of machine fault diagnosis with fewer requirements for labor and expertise. However, the present models only can process the data in Euclidean space. The relations between data points are ignored for a long time, which can play a significant role in distinguishing diverse faults patterns. To combat this issue, a novel model for bearing faults diagnosis is proposed by incorporating the horizontal visibility graph (HVG) and graph neural networks (GNN). In the proposed model, time series is converted to graph retaining invariant dynamic characteristics through the HVG algorithm, and the generated graphs are fed into a designed GNN model for feature learning and faults classification further. Finally, the proposed model is tested on two actual bearing datasets, and it shows state-of-the-art performance in the bearing faults diagnosis. The experimental results demonstrate that extracting relation information using HVG benefits bearing faults diagnosis.
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