transsblgcn:一种故障诊断事件逻辑知识图构建的迁移学习模型

R. Lin, Lianglun Cheng, Tao Wang, Jianfeng Deng
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引用次数: 0

摘要

以故障诊断语料库为研究对象,提出了一种事件逻辑知识图的构建方法。首先,在构建事件逻辑本体模型的基础上提出数据标注策略,然后收集大型机器人传动系统故障诊断语料库,并根据该策略对部分数据进行标注。其次,我们提出了一种transsblgcn迁移学习模型,用于事件参数实体和事件参数关系联合抽取。基于大规模无标记故障诊断语料库训练语言模型,并将其转化为基于堆叠双向长短期记忆(BiLSTM)和双向图卷积网络(BiGCN)的模型。实验结果表明,该方法优于其他方法。最后,构建了机器人传动系统故障诊断的事件逻辑知识图,为自主机器人传动系统故障诊断提供决策支持。
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Trans-SBLGCN: A Transfer Learning Model for Event Logic Knowledge Graph Construction of Fault Diagnosis
Taking fault diagnosis corpus as the research object, an event logic knowledge graph construction method is proposed in this paper. Firstly, we propose a data labeling strategy based on a constructed event logic ontology model, then collect large-scale robot transmission system fault diagnosis corpus, and label part of the data according to the strategy. Secondly, we propose a transfer learning model called Trans-SBLGCN for event argument entity and event argument relation joint extraction. A language model is trained based on large-scale unlabeled fault diagnosis corpus and transferred to a model based on stacked bidirectional long short term memory (BiLSTM) and bidirectional graph convolutional network (BiGCN). Experimental results show that the method is superior to other methods. Finally, an event logic knowledge graph of robot transmission system fault diagnosis is constructed to provide decision support for autonomous robot transmission system fault diagnosis.
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