IoT Device Identification Based on Network Traffic Characteristics

M. Mainuddin, Z. Duan, Yingfei Dong, Shaeke Salman, Tania Taami
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引用次数: 3

Abstract

IoT device identification plays an important role in monitoring and improving the performance and security of IoT devices. Compared to traditional non-IoT devices, IoT devices provide us with both unique challenges and opportunities in detecting the types of IoT devices. Based on critical insights obtained in our previous work on understanding the network traffic characteristics of IoT devices, in this paper we develop an effective machine-learning based IoT device identification scheme, named iotID. In developing iotID, we extract 70 features of TCP flows from three complementary aspects: remote network servers and port numbers, packet-level traffic characteristics such as packet inter-arrival times, and flow-level traffic characteristics such as flow duration. Different from existing work, we take into account the imbalance nature of network traffic generated by various devices in both the learning and evaluation phases of iotID. Our performance studies based on network traffic collected on a typical smart home environment consisting of both IoT and non-IoT devices show that iotID can achieve a balanced accuracy score of above 99%.
基于网络流量特征的物联网设备识别
物联网设备识别对于监控和提高物联网设备的性能和安全性具有重要作用。与传统的非物联网设备相比,物联网设备在检测物联网设备类型方面为我们提供了独特的挑战和机遇。基于我们之前在理解物联网设备的网络流量特征方面获得的关键见解,在本文中,我们开发了一种有效的基于机器学习的物联网设备识别方案,名为iotID。在开发iotID的过程中,我们从三个互补的方面提取了TCP流的70个特征:远程网络服务器和端口号、数据包级流量特征(如数据包间到达时间)和流级流量特征(如流持续时间)。与现有工作不同的是,我们在iotID的学习和评估阶段都考虑了各种设备产生的网络流量的不平衡性。我们的性能研究基于在典型的智能家居环境中收集的网络流量,包括物联网和非物联网设备,表明iotID可以达到99%以上的平衡精度得分。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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