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融合多部件联合特征的瓦斯抽放泵故障分类研究

张建锋

工矿自动化2025,Vol.51Issue(12):16-26,11.
工矿自动化2025,Vol.51Issue(12):16-26,11.DOI:10.13272/j.issn.1671-251x.2025080105

融合多部件联合特征的瓦斯抽放泵故障分类研究

Study on fault classification of gas drainage pumps based on fused multi-component joint features

张建锋1

作者信息

  • 1. 中煤科工集团重庆研究院有限公司,重庆 400039||煤矿灾害防控全国重点实验室,重庆 400037
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摘要

Abstract

Fault classification methods for gas drainage pumps based on single-component features fail to consider the interactions among different components,making it difficult to accurately capture the essential characteristics of faults and thereby limiting their accuracy and reliability in gas drainage pump fault classification tasks.To address this issue,a gas drainage pump fault classification model based on fused multi-component joint features using Graph Sampling and Aggregation with a Hierarchical Attention Mechanism(GraphSAGE-HAT)was proposed.First,vibration data from the bearings,impeller,and pump casing of the gas drainage pump were collected using acceleration sensors to construct a dataset containing features from three components,and the dataset was preprocessed using the Min-Max normalization method.Second,the preprocessed dataset was transformed into a homogeneous graph using the K-Nearest Neighbor(KNN)algorithm to facilitate graph feature learning by graph neural network algorithms.Then,a hierarchical attention mechanism(HAT)was introduced to construct the GraphSAGE-HAT algorithm,in which HAT performed hierarchical weighted aggregation of intra-node component features as well as node and neighboring-node features in the homogeneous graph,effectively capturing inter-component correlation features and inter-node data structural characteristics.Finally,the aggregated features were fed into a fully connected layer to achieve gas drainage pump fault classification.Experimental results showed that,compared with single-component features,the model combining fused multi-component joint features with the GraphSAGE algorithm improved classification accuracy by 9.24%.With the further introduction of HAT,the model based on fused multi-component joint features and the GraphSAGE-HAT algorithm achieved an accuracy of 98.08%.

关键词

瓦斯抽放泵/故障分类/图采样聚合/分层注意力机制/多部件联合特征

Key words

gas drainage pump/fault classification/graph sampling and aggregation/hierarchical attention mechanism/multi-component joint features

分类

矿业与冶金

引用本文复制引用

张建锋..融合多部件联合特征的瓦斯抽放泵故障分类研究[J].工矿自动化,2025,51(12):16-26,11.

基金项目

重庆市技术创新与应用发展重点资助项目(cstc2019jscx-mbdxX0007) (cstc2019jscx-mbdxX0007)

天地科技科技创新创业项目(2023-TD-ZD001-005). (2023-TD-ZD001-005)

工矿自动化

OA北大核心

1671-251X

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