A NOVEL ADDITIVE INTERNET OF THINGS (IoT) FEATURES AND CONVOLUTIONAL NEURAL NETWORK FOR CLASSIFICATION AND SOURCE IDENTIFICATION OF IoT DEVICES

A. Iorliam
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Abstract

The inter-class classification and source identification of IoT devices has been studied by several researchers recently due to the vast amount of available IoT devices and the huge amount of data these IoT devices generate almost every minute. As such there is every need to identify the source where the IoT data is generated and also separate an IoT device from the other using on the data they generate. This paper proposes a novel additive IoT features with the CNN system for the purpose of IoT source identification and classification. Experimental results shows that indeed the proposed method is very effective achieving an overall classification and source identification accuracy of 99.67 %. This result has a practical application to forensics purposes due to the fact that accurately identifying and classifying the source of an IoT device via the generated data can link organisations/persons to the activities they perform over the network. As such ensuring accountability and responsibility by IoT device users.
用于物联网设备分类和来源识别的新型附加物联网(IoT)特征和演化神经网络
由于现有的物联网设备数量庞大,而且这些物联网设备几乎每分钟都会产生大量数据,因此最近有多位研究人员对物联网设备的跨类分类和来源识别进行了研究。因此,有必要识别物联网数据的来源,并根据其生成的数据将物联网设备与其他设备区分开来。本文利用 CNN 系统提出了一种新颖的添加物联网特征的方法,用于物联网源识别和分类。实验结果表明,所提出的方法非常有效,总体分类和来源识别准确率达到 99.67%。这一结果可实际应用于取证目的,因为通过生成的数据对物联网设备的来源进行准确识别和分类,可将组织/个人与他们在网络上执行的活动联系起来。因此,可确保物联网设备用户承担责任和义务。
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