The internet-of-Vehicle (IoV) can facilitate seamless connectivity between connected vehicles (CV), autonomous vehicles (AV), and other IoV entities. Intrusion Detection Systems (IDSs) for IoV networks can rely on machine learning (ML) to protect the in-vehicle network from cyber-attacks. Blockchain-based Federated Forests (BFFs) could be used to train ML models based on data from IoV entities while protecting the confidentiality of the data and reducing the risks of tampering with the data. However, ML models created this way are still vulnerable to evasion, poisoning, and exploratory attacks using adversarial examples. This paper investigates the impact of various possible adversarial examples on the BFF-IDS. We proposed integrating a statistical detector to detect and extract unknown adversarial samples. By including the unknown detected samples into the dataset of the detector, we augment the BFF-IDS with an additional model to detect original known attacks and the new adversarial inputs. The statistical adversarial detector confidently detected adversarial examples at the sample size of 50 and 100 input samples. Furthermore, the augmented BFF-IDS (BFF-IDS(AUG)) successfully mitigates the adversarial examples with more than 96% accuracy. With this approach, the model will continue to be augmented in a sandbox whenever an adversarial sample is detected and subsequently adopt the BFF-IDS(AUG) as the active security model. Consequently, the proposed integration of the statistical adversarial detector and the subsequent augmentation of the BFF-IDS with detected adversarial samples provides a sustainable security framework against adversarial examples and other unknown attacks.
翻译:视频互联网(IoV)可以促进连接车辆(CV)、自主车辆(AV)和其他IOV实体之间的无缝连接。 IOV网络的入侵探测系统(IDS)可以依靠机器学习(ML)来保护车内网络免遭网络攻击。基于链路的Freed Forest(BFFs)可以使用基于IOV实体的数据的ML模型来培训ML模型,同时保护数据的保密性并减少对数据的篡改风险。然而,ML模型创造的这种方式仍然容易被规避、中毒和利用对抗性统计实例进行探索性攻击。本文可以调查各种可能的对抗性实例对BFF-ID网络的影响,以便发现和提取未知的对抗性样本。通过将未知的检测样本纳入探测器,我们用一个额外的模型来检测最初已知的攻击和新的对抗性投入性投入性投入。 统计性对50和100个样本的抽样中,可以可靠地检测对抗性辩论性模型中的对抗性实例,然后将BFFS-IFS 升级到这个未知的安全性样本中。