Multi-domain fusion for cargo UAV fault diagnosis knowledge graph construction

Ao Xiao, Wei Yan, Xumei Zhang, Ying Liu, Hua Zhang, Qi Liu
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Abstract

The fault diagnosis of cargo UAVs (Unmanned Aerial Vehicles) is crucial to ensure the safety of logistics distribution. In the context of smart logistics, the new trend of utilizing knowledge graph (KG) for fault diagnosis is gradually emerging, bringing new opportunities to improve the efficiency and accuracy of fault diagnosis in the era of Industry 4.0. The operating environment of cargo UAVs is complex, and their faults are typically closely related to it. However, the available data only considers faults and maintenance data, making it difficult to diagnose faults accurately. Moreover, the existing KG suffers from the problem of confusing entity boundaries during the extraction process, which leads to lower extraction efficiency. Therefore, a fault diagnosis knowledge graph (FDKG) for cargo UAVs constructed based on multi-domain fusion and incorporating an attention mechanism is proposed. Firstly, the multi-domain ontology modeling is realized based on the multi-domain fault diagnosis concept analysis expression model and multi-dimensional similarity calculation method for cargo UAVs. Secondly, a multi-head attention mechanism is added to the BERT-BILSTM-CRF network model for entity extraction, relationship extraction is performed through ERNIE, and the extracted triples are stored in the Neo4j graph database. Finally, the DJI cargo UAV failure is taken as an example for validation, and the results show that the new model based on multi-domain fusion data is better than the traditional model, and the precision rate, recall rate, and F1 value can reach 87.52%, 90.47%, and 88.97%, respectively.

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多域融合货运无人机故障诊断知识图谱构建
货运无人机(UAV)的故障诊断对于确保物流配送安全至关重要。在智能物流背景下,利用知识图谱(KG)进行故障诊断的新趋势逐渐兴起,为提高工业 4.0 时代故障诊断的效率和准确性带来了新的机遇。货运无人机的运行环境复杂,其故障通常与运行环境密切相关。然而,现有数据仅考虑故障和维护数据,难以准确诊断故障。此外,现有的知识图谱在提取过程中存在实体边界混淆的问题,导致提取效率较低。因此,本文提出了一种基于多域融合并结合关注机制的货运无人机故障诊断知识图谱(FDKG)。首先,基于货运无人机多领域故障诊断概念分析表达模型和多维相似度计算方法,实现多领域本体建模。其次,在BERT-BILSTM-CRF网络模型中加入多头关注机制进行实体提取,通过ERNIE进行关系提取,并将提取的三元组存储在Neo4j图数据库中。最后,以大疆货运无人机故障为例进行验证,结果表明基于多域融合数据的新模型优于传统模型,精确率、召回率和F1值分别可达87.52%、90.47%和88.97%。
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