An Unsmooth Feature Variation and Dynamic Graph Structure Update GCN for Machinery Fault Diagnosis
ID:24 Submission ID:28 View Protection:ATTENDEE Updated Time:2024-10-23 10:46:16 Hits:66 Oral Presentation

Start Time:2024-11-01 14:00 (Asia/Shanghai)

Duration:20min

Session:[P2] Parallel Session 2 » [P2-1] Parallel Session 2(November 1 PM)

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Abstract
Fault detection of high-speed high-power diesel engines is highly challenging. Currently, multi-channel data is applied to fault detection of high-speed and high-power diesel engines. A common multi-channel data fault diagnosis method is the graph neural network (GNN), which can represent the connection relationship of different sensors as a graph and then diagnose the mechanical equipment. However, ordinary GNN suffers from the phenomenon that node features tend to be over-smoothed, which reduces the saliency of node features, as well as the need to set the linking method of nodes artificially, and the model cannot automatically correct the insufficiently reasonable graph structure, which leads to insufficiently stable diagnostic results. Therefore, we propose an unsmooth feature variation and dynamic graph structure update graph convolutional network (UDGCN). The network combines the improved feed forward network (FFN), a node feature variation layer for increasing the diversity of node information, and an improved graph convolutional network (GCN) which combined a dynamic graph structure update layer after a normal GCN for adaptively adjusting the way nodes are connected in the k nearest neighbors (KNN) graph. In the end, the datasets of misfire faults of diesel engines are tested and analyzed by training models, which show that the proposed method has higher diagnostic accuracy and stronger adaptability to the working conditions. Otherwise, this paper analyzes the interpretability of the model by the GraphLIME method with improved sampling method, which achieves certain interpretation effect and enhances the credibility of the model.
Keywords
diesel engines, fault diagnosis, graph neural networks (GNN), unsmooth feature variation and dynamic graph structure update graph convolutional network (UDGCN) , GraphLIME
Speaker
LinZesheng
Student Beijing University of Chemical Technology

Submission Author
LinZesheng Beijing University of Chemical Technology
LiYuguang Beijing University of Chemical Technology
HaoPengyuan Beijing University of Chemical Technology
LiYingli China Petroleum Safety and Environmental Protection Technology Research Institute
WangHuaqing Beijing university of chemical technology
SongLiuyang Beijing university of chemical technology
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Important Dates

15th August 2024   31st August 2024- Manuscript Submission

15th September 2024 - Acceptance Notification

1st October 2024 - Camera Ready Submission

1st October 2024  – Early Bird Registration

 

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