{"title":"KG-IBL:知识图谱驱动的增量式广泛学习,用于识别少数几个特定发射器","authors":"Minyu Hua;Yibin Zhang;Qianyun Zhang;Huaiyu Tang;Lantu Guo;Yun Lin;Hikmet Sari;Guan Gui","doi":"10.1109/TIFS.2024.3481902","DOIUrl":null,"url":null,"abstract":"Specific emitter identification (SEI) plays a crucial role in the security of the Industrial Internet of Things (IIoT). In recent years, research on applying deep learning (DL) methods for signal identification has mushroomed. However, DL-based SEI methods rely on a huge amount of training data and powerful computing devices, limiting their application scenarios. In addition, DL models are considered black box models with poor interpretability. To solve the above problems, this paper proposes a novel few-shot SEI solution using knowledge graph-driven incremental broad learning (KG-IBL). Specifically, this paper uses a deep belief network (DBN) to dig deep into features and expand the broad structure with additional enhancement nodes. Furthermore, the proposed KG-IBL does not need to retrain all data to achieve dynamic incremental update learning. To our knowledge, this is the first endeavor to integrate KG with broad learning for addressing the few-shot SEI problem. The experimental results demonstrate that the proposed KG-IBL surpasses existing incremental methods in both identification performance and computational overhead. Last but not least, the accuracy of the proposed KG-IBL is 97.5%, which is only 1.67% lower than the theoretical upper limit, and the training time is nearly 267 times lower than that of deep learning models. 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Last but not least, the accuracy of the proposed KG-IBL is 97.5%, which is only 1.67% lower than the theoretical upper limit, and the training time is nearly 267 times lower than that of deep learning models. 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引用次数: 0
摘要
特定发射器识别(SEI)对工业物联网(IIoT)的安全起着至关重要的作用。近年来,将深度学习(DL)方法应用于信号识别的研究如雨后春笋般涌现。然而,基于 DL 的 SEI 方法依赖于大量的训练数据和强大的计算设备,限制了其应用场景。此外,DL 模型被认为是黑盒模型,可解释性较差。为解决上述问题,本文利用知识图谱驱动的增量广泛学习(KG-IBL)提出了一种新颖的少量 SEI 解决方案。具体来说,本文使用深度信念网络(DBN)深入挖掘特征,并通过额外的增强节点扩展广义结构。此外,所提出的 KG-IBL 不需要重新训练所有数据,就能实现动态增量更新学习。据我们所知,这是首次尝试将 KG 与广义学习相结合,以解决少量 SEI 问题。实验结果表明,所提出的 KG-IBL 在识别性能和计算开销方面都超过了现有的增量方法。最后但并非最不重要的是,所提出的 KG-IBL 的准确率为 97.5%,仅比理论上限低 1.67%,训练时间比深度学习模型低近 267 倍。代码和数据集可在 https://github.com/Lollipophua/KG-IBL 下载。
KG-IBL: Knowledge Graph Driven Incremental Broad Learning for Few-Shot Specific Emitter Identification
Specific emitter identification (SEI) plays a crucial role in the security of the Industrial Internet of Things (IIoT). In recent years, research on applying deep learning (DL) methods for signal identification has mushroomed. However, DL-based SEI methods rely on a huge amount of training data and powerful computing devices, limiting their application scenarios. In addition, DL models are considered black box models with poor interpretability. To solve the above problems, this paper proposes a novel few-shot SEI solution using knowledge graph-driven incremental broad learning (KG-IBL). Specifically, this paper uses a deep belief network (DBN) to dig deep into features and expand the broad structure with additional enhancement nodes. Furthermore, the proposed KG-IBL does not need to retrain all data to achieve dynamic incremental update learning. To our knowledge, this is the first endeavor to integrate KG with broad learning for addressing the few-shot SEI problem. The experimental results demonstrate that the proposed KG-IBL surpasses existing incremental methods in both identification performance and computational overhead. Last but not least, the accuracy of the proposed KG-IBL is 97.5%, which is only 1.67% lower than the theoretical upper limit, and the training time is nearly 267 times lower than that of deep learning models. The code and dataset are available for download at
https://github.com/Lollipophua/KG-IBL
.
期刊介绍:
The IEEE Transactions on Information Forensics and Security covers the sciences, technologies, and applications relating to information forensics, information security, biometrics, surveillance and systems applications that incorporate these features