论文标题
物联网可靠的入侵检测系统:基于深度转移学习的方法
Dependable Intrusion Detection System for IoT: A Deep Transfer Learning-based Approach
论文作者
论文摘要
物联网应用程序的安全问题由于在不同的企业系统中广泛使用而引起了震惊。对这些应用的潜在威胁正在不断地出现和改变,因此,对于这种威胁,必须进行复杂而可靠的防御解决方案。随着物联网网络和不断发展的威胁类型的快速发展,传统的基于机器学习的ID必须更新以应对当前可持续物联网环境的安全要求。近年来,深度学习和深度转移学习在不同领域取得了巨大的成功,并成为可靠网络入侵检测的潜在解决方案。但是,与异质IoT设置中传统ID的准确性,效率,可伸缩性和可靠性有关的新挑战和新兴挑战已经相关。本手稿提出了一个基于深度转移学习的可靠IDS模型,该模型胜过几种现有方法。独特的贡献包括有效的属性选择,最适合识别少量标记数据的正常和攻击场景,设计可靠的基于深层传输的重新网络模型,并评估考虑现实世界数据的评估。为此,已经进行了全面的实验性能评估。广泛的分析和绩效评估表明,所提出的模型稳健,更有效,并且表现出更好的性能,可确保可靠性。
Security concerns for IoT applications have been alarming because of their widespread use in different enterprise systems. The potential threats to these applications are constantly emerging and changing, and therefore, sophisticated and dependable defense solutions are necessary against such threats. With the rapid development of IoT networks and evolving threat types, the traditional machine learning-based IDS must update to cope with the security requirements of the current sustainable IoT environment. In recent years, deep learning, and deep transfer learning have progressed and experienced great success in different fields and have emerged as a potential solution for dependable network intrusion detection. However, new and emerging challenges have arisen related to the accuracy, efficiency, scalability, and dependability of the traditional IDS in a heterogeneous IoT setup. This manuscript proposes a deep transfer learning-based dependable IDS model that outperforms several existing approaches. The unique contributions include effective attribute selection, which is best suited to identify normal and attack scenarios for a small amount of labeled data, designing a dependable deep transfer learning-based ResNet model, and evaluating considering real-world data. To this end, a comprehensive experimental performance evaluation has been conducted. Extensive analysis and performance evaluation show that the proposed model is robust, more efficient, and has demonstrated better performance, ensuring dependability.