BLS-identification: A device fingerprint classification mechanism based on broad learning for Internet of Things

IF 7.5 2区 计算机科学 Q1 TELECOMMUNICATIONS
Yu Zhang , Bei Gong , Qian Wang
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引用次数: 0

Abstract

The popularity of the Internet of Things (IoT) has enabled a large number of vulnerable devices to connect to the Internet, bringing huge security risks. As a network-level security authentication method, device fingerprint based on machine learning has attracted considerable attention because it can detect vulnerable devices in complex and heterogeneous access phases. However, flexible and diversified IoT devices with limited resources increase difficulty of the device fingerprint authentication method executed in IoT, because it needs to retrain the model network to deal with incremental features or types. To address this problem, a device fingerprinting mechanism based on a Broad Learning System (BLS) is proposed in this paper. The mechanism firstly characterizes IoT devices by traffic analysis based on the identifiable differences of the traffic data of IoT devices, and extracts feature parameters of the traffic packets. A hierarchical hybrid sampling method is designed at the preprocessing phase to improve the imbalanced data distribution and reconstruct the fingerprint dataset. The complexity of the dataset is reduced using Principal Component Analysis (PCA) and the device type is identified by training weights using BLS. The experimental results show that the proposed method can achieve state-of-the-art accuracy and spend less training time than other existing methods.

BLS识别:一种基于广义学习的物联网设备指纹分类机制
物联网(IoT)的普及使大量易受攻击的设备接入互联网,带来了巨大的安全风险。作为一种网络级安全认证方法,基于机器学习的设备指纹因其能在复杂、异构的接入阶段检测到易受攻击的设备而备受关注。然而,灵活多样的物联网设备和有限的资源增加了在物联网中执行设备指纹验证方法的难度,因为它需要重新训练模型网络来处理增量特征或类型。为解决这一问题,本文提出了一种基于广泛学习系统(BLS)的设备指纹机制。该机制首先根据物联网设备流量数据的可识别差异,通过流量分析对物联网设备进行特征描述,并提取流量包的特征参数。在预处理阶段,设计了一种分层混合采样方法,以改善不平衡的数据分布并重建指纹数据集。利用主成分分析法(PCA)降低数据集的复杂性,并通过使用 BLS 的训练权重来识别设备类型。实验结果表明,与其他现有方法相比,所提出的方法可以达到最先进的准确度,并花费更少的训练时间。
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来源期刊
Digital Communications and Networks
Digital Communications and Networks Computer Science-Hardware and Architecture
CiteScore
12.80
自引率
5.10%
发文量
915
审稿时长
30 weeks
期刊介绍: Digital Communications and Networks is a prestigious journal that emphasizes on communication systems and networks. We publish only top-notch original articles and authoritative reviews, which undergo rigorous peer-review. We are proud to announce that all our articles are fully Open Access and can be accessed on ScienceDirect. Our journal is recognized and indexed by eminent databases such as the Science Citation Index Expanded (SCIE) and Scopus. In addition to regular articles, we may also consider exceptional conference papers that have been significantly expanded. Furthermore, we periodically release special issues that focus on specific aspects of the field. In conclusion, Digital Communications and Networks is a leading journal that guarantees exceptional quality and accessibility for researchers and scholars in the field of communication systems and networks.
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