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Intrusion Detection for Cyber–Physical Systems Using Generative Adversarial Networks in Fog Environment

机译:在雾环境中使用生成对抗性网络的网络地理系统的入侵检测

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摘要

Cyber-attacks cyber-physical systems (CPSs) can lead to sensing and actuation misbehavior, severe damages to physical objects, and safety risks. Machine learning algorithms have been proposed for hindering cyber-attacks on CPSs, but the absence of labeled data from novel attacks makes their detection quite challenging. In this context, generative adversarial networks (GANs) are a promising unsupervised approach to detect cyber-attacks by implicitly modeling the system. However, the detection of cyber-attacks on CPSs has strict latency requirements, since the attacks need to be stopped before the system is compromised. In this article, we propose FID-GAN, a novel fog-based, unsupervised intrusion detection system (IDS) for CPSs using GANs. The IDS is proposed for a fog architecture, which brings computation resources closer to the end nodes and thus contributes to meeting low-latency requirements. In order to achieve higher detection rates, the proposed architecture computes a reconstruction loss based on the reconstruction of data samples mapped to the latent space. Other works that follow a similar approach struggle with the time required to compute the reconstruction loss, which renders them impractical for latency constrained applications. We address this problem by training an encoder that accelerates the reconstruction loss computation. Experiments show that the proposed solution achieves higher detection rates and is at least 5.5 times faster than a baseline approach in the three studied data sets.
机译:网络攻击网络 - 物理系统(CPS)可以导致传感和致动不当行为,对物理对象的严重损害和安全风险。已经提出了机器学习算法,用于阻碍CPS的网络攻击,但是从新攻击中没有标记数据使其检测得非常具有挑战性。在这种情况下,生成的对抗性网络(GANS)是一种希望通过隐式建模系统来检测网络攻击的有希望的无监督方法。但是,对CPS的网络攻击的检测有严格的延迟要求,因为在系统泄露之前需要停止攻击。在本文中,我们建议FID-GaN,一种使用GANS的CPS的新型迷人,无监督的入侵检测系统(IDS)。 idS提出了一种雾架构,其将计算资源更靠近终端节点,从而有助于满足低延迟要求。为了实现更高的检测率,所提出的体系结构基于映射到潜在空间的数据样本的重建来计算重建损失。遵循类似的方法的其他作品与计算重建损失所需的时间,这使得它们对于延迟约束应用程序不切实际。我们通过培训加速重建损失计算的编码器来解决这个问题。实验表明,该解决方案达到了更高的检测率,并且比三学习数据集中的基线方法快至少5.5倍。

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