Internet of Things (IoT) has become a popular paradigm to fulfil needs of the industry such as asset tracking, resource monitoring and automation. As security mechanisms are often neglected during the deployment of IoT devices, they are more easily attacked by complicated and large volume intrusion attacks using advanced techniques. Artificial Intelligence (AI) has been used by the cyber security community in the past decade to automatically identify such attacks. However, deep learning methods have yet to be extensively explored for Intrusion Detection Systems (IDS) specifically for IoT. Most recent works are based on time sequential models like LSTM and there is short of research in CNNs as they are not naturally suited for this problem. In this article, we propose a novel solution to the intrusion attacks against IoT devices using CNNs. The data is encoded as the convolutional operations to capture the patterns from the sensors data along time that are useful for attacks detection by CNNs. The proposed method is integrated with two classical CNNs: ResNet and EfficientNet, where the detection performance is evaluated. The experimental results show significant improvement in both true positive rate and false positive rate compared to the baseline using LSTM.
翻译:由于安全机制在部署IoT装置时常常被忽视,因此更容易受到使用先进技术的复杂和大规模入侵袭击的攻击; 过去十年来,网络安全界利用人工智能系统自动识别此类袭击; 然而,尚未专门为IoT广泛广泛探索入侵探测系统(IDS)的深层次学习方法。 最近的工作大多以LSTM等时间顺序模型为基础,而且CNN的研究也比较少,因为它们不自然适合这一问题。在本篇文章中,我们提出了使用CNN对IOT装置的入侵袭击的新的解决办法。数据被编码为“革命行动”,以便从感应器数据中捕捉模式,同时利用CNN进行袭击探测。提议的方法与两种古典CNN:ResNet和效能网络相结合,用来评估探测性能。实验结果显示,与使用LSTM的基线相比,真实正率和假正率都有显著改善。