The need for secure Internet of Things (IoT) devices is growing as IoT devices are becoming more integrated into vital networks. Many systems rely on these devices to remain available and provide reliable service. Denial of service attacks against IoT devices are a real threat due to the fact these low power devices are very susceptible to denial-of-service attacks. Machine learning enabled network intrusion detection systems are effective at identifying new threats, but they require a large amount of data to work well. There are many network traffic data sets but very few that focus on IoT network traffic. Within the IoT network data sets there is a lack of CoAP denial of service data. We propose a novel data set covering this gap. We develop a new data set by collecting network traffic from real CoAP denial of service attacks and compare the data on multiple different machine learning classifiers. We show that the data set is effective on many classifiers.
翻译:随着IoT装置日益融入重要网络,对安全的东西的互联网(IoT)装置的需要正在增加。许多系统依靠这些装置来维持和提供可靠的服务。拒绝对IoT装置进行服务攻击是一个真正的威胁,因为事实上这些低功率装置极有可能被拒绝服务攻击。机器学习使网络入侵探测系统能够有效地识别新的威胁,但需要大量数据才能很好地发挥作用。许多网络交通数据集都集中在IoT网络的交通上,但很少关注IoT网络的交通。在IoT网络数据集中,没有CoAP拒绝提供服务数据。我们提出了一个涵盖这一差距的新数据集。我们开发了一套新数据集,从实际的COAP拒绝服务攻击中收集网络交通数据,并比较不同机器学习分类器的数据。我们显示,数据集对许多分类器有效。