A hybrid deep learning based enhanced and reliable approach for VANET intrusion detection system

Atul Barve, Pushpinder Singh Patheja
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Abstract

Advances in autonomous transportation technologies have profoundly influenced the evolution of daily commuting and travel. These innovations rely heavily on seamless connectivity, facilitated by applications within intelligent transportation systems that make effective use of vehicular Ad- hoc Network (VANET) technology. However, the susceptibility of VANETs to malicious activities necessitates the implementation of robust security measures, notably intrusion detection systems (IDS). The article proposed a model for an IDS capable of collaboratively collecting network data from both vehicular nodes and Roadside Units (RSUs). The proposed IDS makes use of the VANET distributed denial of service dataset. Additionally, the proposed IDS uses a K-means clustering method to find clear groups in the simulated VANET architecture. To mitigate the risk of model overfitting, we meticulously curated test data, ensuring its divergence from the training set. Consequently, a hybrid deep learning approach is proposed by integrating Convolutional Neural Networks (CNN) and Bidirectional Long Short-Term Memory (BiLSTM) networks. which results in the highest training, testing, and validation accuracy of 99.56, 99.49, and 99.65% respectively. The results of the proposed methodology is compared with the existing state-of-the-art in the same domain, the accuracy of the proposed method is raised by maximum of 4.65% and minimum by 0.20%.

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基于混合深度学习的 VANET 入侵检测系统的增强型可靠方法
自主交通技术的进步对日常通勤和旅行的发展产生了深远影响。这些创新在很大程度上依赖于无缝连接,而智能交通系统内的应用则有效利用了车载 Ad- hoc 网络(VANET)技术。然而,由于 VANET 易受恶意活动的影响,因此有必要实施强有力的安全措施,特别是入侵检测系统 (IDS)。文章提出了一种 IDS 模型,该模型能够协同收集来自车辆节点和路边装置(RSU)的网络数据。拟议的 IDS 利用了 VANET 分布式拒绝服务数据集。此外,拟议的 IDS 还使用 K-means 聚类方法在模拟的 VANET 架构中找到清晰的组。为了降低模型过拟合的风险,我们对测试数据进行了精心策划,确保其与训练集的差异。因此,通过整合卷积神经网络(CNN)和双向长短期记忆(BiLSTM)网络,我们提出了一种混合深度学习方法,其最高训练、测试和验证准确率分别为 99.56%、99.49% 和 99.65%。将所提方法的结果与同一领域现有的最先进方法进行比较,发现所提方法的准确率最高提高了 4.65%,最低提高了 0.20%。
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