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Intrusion Detection System for Bluetooth Mesh Networks: Data Gathering and Experimental Evaluations

机译:蓝牙网网的入侵检测系统:数据收集和实验评估

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Bluetooth Low Energy mesh networks are emerging as new standard of short burst communications. While security of the messages is guaranteed thought standard encryption techniques, little has been done in terms of actively protecting the overall network in case of attacks aiming to undermine its integrity. Although many network analysis and risk mitigation techniques are currently available, they require considerable amounts of data coming from both legitimate and attack scenarios to sufficiently discriminate among them, which often turns into the requirement of a complete description of the traffic flowing through the network. Furthermore, there are no publicly available datasets to this extent for BLE mesh networks, due most to the novelty of the standard and to the absence of specific implementation tools. To create a reliable mechanism of network analysis suited for BLE in this paper we propose a machine learning Intrusion Detection System (IDS) based on pattern classification and recognition of the most classical denial of service attacks affecting this kind of networks, working on a single internal node, thus requiring a small amount of information to operate. Moreover, in order to overcome the gap created by the absence of data, we present our data collection system based on ESP32 that allowed the collection of the packets from the Network and the Model layers of the BLE Mesh stack, together with a set of experiments conducted to get the necessary data to train the IDS. In the last part, we describe some preliminary results obtained by the experimental setups, focusing on its strengths, as well as on the aspects where further analysis is required, hence proposing some improvements of the classification model as future work.
机译:蓝牙低能量网状网络是新标准的短爆通信的新标准。虽然信息的安全是保证标准加密技术的保证,但在积极保护整个网络时,旨在破坏其完整性的情况。虽然目前有许多网络分析和风险缓解技术,但它们需要来自合法和攻击情景的相当大量的数据,以充分区分它们,这通常会进入流过网络流量的完整描述的要求。此外,由于标准的新颖性以及缺乏特定的实现工具,因此没有公开可用的数据集在这种情况下进行了这种程度的基础网络。为了创建适合BLE的网络分析的可靠机制,我们提出了一种基于模式分类的机器学习入侵检测系统(IDS),并识别影响这种网络的最古典拒绝服务攻击,在单个内部工作节点,从而需要少量的信息来操作。此外,为了克服由于没有数据而产生的差距,我们介绍了基于ESP32的数据收集系统,允许从网络的数据包和BLE网格堆栈的模型层与一组实验一起集合进行以获得培训IDS的必要数据。在最后一部分中,我们描述了通过实验设置获得的一些初步结果,专注于其优势,以及需要进一步分析的方面,因此提出了作为未来工作的分类模型的一些改进。

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