智能交通系统DDoS预测中未标记数据的高效投毒攻击与防御

Zhong Li, Xianke Wu, Changjun Jiang
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引用次数: 1

摘要

如今,大量与附近基站通信的智能传感器(如路边摄像头)可能会在智能交通系统中引发分布式拒绝服务(DDoS)攻击风暴。DDoS攻击会导致基站无法提供服务。因此,在考虑通信流量不均匀和隐私保护的前提下,利用分布式拒绝服务的多步特性,结合联邦学习框架,给出了一种基于隐马尔可夫模型的预测模型,用于预测未来基站是否会发生DDoS攻击。然而,在联邦学习中,我们需要考虑恶意参与者的中毒攻击问题。投毒事件将导致智能交通系统在没有安全防护的情况下瘫痪。传统的投毒攻击主要适用于带有标记数据的分类模型。在本文中,我们提出了一种基于强化学习的中毒方法,专门用于对未标记数据的预测模型进行中毒。此外,以前的相关防御策略依赖于服务器中带有标记数据的验证数据集。然而,这是不现实的,因为本地训练数据集由于隐私保护而没有上传到服务器,并且我们的数据集也是未标记的。此外,我们还提出了一种基于Dempster-Shafer (D-S)证据理论的无验证数据集防御策略,避免了异常聚集,从而获得了精确预测DDoS的鲁棒全局模型。在我们的实验中,我们结合DARPA2000数据集模拟3000个点进行评估。结果表明,该方法可以在短时间内成功地对未标记数据的全局预测模型下毒。同时,将本文提出的防御算法与三种常用的防御算法进行了比较。结果表明,该防御方法具有较高的排除投毒准确率和较高的攻击预测概率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Efficient poisoning attacks and defenses for unlabeled data in DDoS prediction of intelligent transportation systems
Nowadays, large numbers of smart sensors (e.g., road-side cameras) which communicate with nearby base stations could launch distributed denial of services (DDoS) attack storms in intelligent transportation systems. DDoS attacks disable the services provided by base stations. Thus in this paper, considering the uneven communication traffic flows and privacy preserving, we give a hidden Markov model-based prediction model by utilizing the multi-step characteristic of DDoS with a federated learning framework to predict whether DDoS attacks will happen on base stations in the future. However, in the federated learning, we need to consider the problem of poisoning attacks due to malicious participants. The poisoning attacks will lead to the intelligent transportation systems paralysis without security protection. Traditional poisoning attacks mainly apply to the classification model with labeled data. In this paper, we propose a reinforcement learning-based poisoning method specifically for poisoning the prediction model with unlabeled data. Besides, previous related defense strategies rely on validation datasets with labeled data in the server. However, it is unrealistic since the local training datasets are not uploaded to the server due to privacy preserving, and our datasets are also unlabeled. Furthermore, we give a validation dataset-free defense strategy based on Dempster–Shafer (D–S) evidence theory avoiding anomaly aggregation to obtain a robust global model for precise DDoS prediction. In our experiments, we simulate 3000 points in combination with DARPA2000 dataset to carry out evaluations. The results indicate that our poisoning method can successfully poison the global prediction model with unlabeled data in a short time. Meanwhile, we compare our proposed defense algorithm with three popularly used defense algorithms. The results show that our defense method has a high accuracy rate of excluding poisoners and can obtain a high attack prediction probability.
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