The security pitfalls of IoT devices make it easy for the attackers to exploit the IoT devices and make them a part of a botnet. Once hundreds of thousands of IoT devices are compromised and become the part of a botnet, the attackers use this botnet to launch the large and complex distributed denial of service (DDoS) attacks which take down the target websites or services and make them unable to respond the legitimate users. So far, many botnet detection techniques have been proposed but their performance is limited to a specific dataset on which they are trained. This is because the features used to train a machine learning model on one botnet dataset, do not perform well on other datasets due to the diversity of attack patterns. Therefore, in this paper, we propose a universal features set to better detect the botnet attacks regardless of the underlying dataset. The proposed features set manifest preeminent results for detecting the botnet attacks when tested the trained machine learning models over three different botnet attack datasets.
翻译:Iot装置的安全陷阱使攻击者很容易利用Iot装置,并把它们变成一个肉网的一部分。一旦数十万 Iot装置被破坏并成为肉网的一部分,攻击者就利用这个肉网来发动大规模复杂的分散式拒绝服务(DDoS)攻击,摧毁了目标网站或服务,使他们无法对合法用户作出反应。到目前为止,已经提出了许多肉网探测技术,但其性能仅限于训练它们的具体数据集。这是因为用于在一个肉网数据集上训练机器学习模型的功能,由于攻击模式的多样性,其他数据集的功能不完善。因此,在本文件中,我们提出一套通用的功能,用以更好地检测肉网攻击,而不论基本的数据集是什么。提议的功能显示在测试三个不同的肉网攻击数据集的经过训练的机器学习模型时,发现肉网攻击的突出结果。