An adversarial environment reinforcement learning-driven intrusion detection algorithm for Internet of Things

IF 2.3 4区 计算机科学 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC EURASIP Journal on Wireless Communications and Networking Pub Date : 2024-05-04 DOI:10.1186/s13638-024-02348-6
Chahira Mahjoub, Monia Hamdi, Reem Ibrahim Alkanhel, Safa Mohamed, Ridha Ejbali
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Abstract

The increasing prevalence of Internet of Things (IoT) systems has made them attractive targets for malicious actors. To address the evolving threats and the growing complexity of detection, there is a critical need to search for and develop new algorithms that are fast and robust in detecting and classifying dangerous network traffic. In this context, deep reinforcement learning (DRL) is gaining recognition as a prospective solution in numerous fields as it enables autonomous agents to cooperate with their environment for decision-making without relying on human experts. This article presents an innovative approach to intrusion detection in IoT systems using an adversarial reinforcement learning (RL) algorithm known for its exceptional predictive capabilities. The predictive process relies on a classifier, implemented as a streamlined and highly efficient neural network. Embedded within this classifier is a policy function meticulously trained using an innovative RL model. Importantly, this model ensures that the environment’s behavior is dynamically fine-tuned simultaneously with the learning process, improving the overall effectiveness of the intrusion detection approach. The efficiency of our proposal was assessed using the Bot-IoT database, consisting of a mixture of legitimate IoT network traffic and simulated attack scenarios. Our scheme shows superior performance compared to existing ones. Therefore, our approach to IoT intrusion detection can be considered a valuable alternative to existing methods, capable of significantly improving the IoT systems’ security.

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对抗环境强化学习驱动的物联网入侵检测算法
物联网(IoT)系统的日益普及使其成为恶意行为者的目标。为了应对不断发展的威胁和日益复杂的检测,亟需寻找和开发新的算法,以快速、稳健地检测危险网络流量并对其进行分类。在此背景下,深度强化学习(DRL)作为一种前景广阔的解决方案,在众多领域获得了广泛认可,因为它能让自主代理与环境合作进行决策,而无需依赖人类专家。本文介绍了一种创新的物联网系统入侵检测方法,该方法使用的是一种对抗强化学习(RL)算法,以其卓越的预测能力而著称。预测过程依赖于一个分类器,该分类器以精简、高效的神经网络形式实现。在该分类器中嵌入了使用创新 RL 模型精心训练的策略函数。重要的是,该模型可确保在学习过程中同时对环境行为进行动态微调,从而提高入侵检测方法的整体有效性。我们使用 Bot-IoT 数据库评估了我们建议的效率,该数据库由合法物联网网络流量和模拟攻击场景混合组成。与现有方案相比,我们的方案表现出更优越的性能。因此,我们的物联网入侵检测方法可被视为现有方法的重要替代方案,能够显著提高物联网系统的安全性。
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来源期刊
CiteScore
7.70
自引率
3.80%
发文量
109
审稿时长
8.0 months
期刊介绍: The overall aim of the EURASIP Journal on Wireless Communications and Networking (EURASIP JWCN) is to bring together science and applications of wireless communications and networking technologies with emphasis on signal processing techniques and tools. It is directed at both practicing engineers and academic researchers. EURASIP Journal on Wireless Communications and Networking will highlight the continued growth and new challenges in wireless technology, for both application development and basic research. Articles should emphasize original results relating to the theory and/or applications of wireless communications and networking. Review articles, especially those emphasizing multidisciplinary views of communications and networking, are also welcome. EURASIP Journal on Wireless Communications and Networking employs a paperless, electronic submission and evaluation system to promote a rapid turnaround in the peer-review process. The journal is an Open Access journal since 2004.
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