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An intelligent clustering scheme for distributed intrusion detection in vehicular cloud computing

机译:车辆云计算中分布式入侵检测的智能聚类方案

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In recent years, vehicular cloud computing (VCC) has emerged as a new technology which is being used in wide range of applications in the area of multimedia-based healthcare applications. In VCC, vehicles act as the intelligent machines which can be used to collect and transfer the healthcare data to the local, or global sites for storage, and computation purposes, as vehicles are having comparatively limited storage and computation power for handling the multimedia files. However, due to the dynamic changes in topology, and lack of centralized monitoring points, this information can be altered, or misused. These security breaches can result in disastrous consequences such as-loss of life or financial frauds. Therefore, to address these issues, a learning automata-assisted distributive intrusion detection system is designed based on clustering. Although there exist a number of applications where the proposed scheme can be applied but, we have taken multimedia-based healthcare application for illustration of the proposed scheme. In the proposed scheme, learning automata (LA) are assumed to be stationed on the vehicles which take clustering decisions intelligently and select one of the members of the group as a cluster-head. The cluster-heads then assist in efficient storage and dissemination of information through a cloud-based infrastructure. To secure the proposed scheme from malicious activities, standard cryptographic technique is used in which the auotmaton learns from the environment and takes adaptive decisions for identification of any malicious activity in the network. A reward and penalty is given by the stochastic environment where an automaton performs its actions so that it updates its action probability vector after getting the reinforcement signal from the environment. The proposed scheme was evaluated using extensive simulations on ns-2 with SUMO. The results obtained indicate that the proposed scheme yields an improvement of 10 % in detection rate of malicious nodes when compared with the existing schemes.
机译:近年来,车辆云计算(VCC)已作为一种新技术出现,正在基于多媒体的医疗保健应用领域中广泛应用。在VCC中,车辆充当智能机,可用于收集医疗数据并将其传输到本地或全球站点以进行存储和计算,因为车辆具有相对有限的存储和计算能力来处理多媒体文件。但是,由于拓扑结构的动态变化以及缺少集中的监视点,因此可能会更改或滥用此信息。这些安全漏洞可能导致灾难性后果,例如生命损失或财务欺诈。因此,为了解决这些问题,设计了一种基于聚类的学习自动机辅助分布式入侵检测系统。尽管存在许多可以应用提出的方案的应用程序,但是,我们已经采用基于多媒体的医疗保健应用程序来说明提出的方案。在提出的方案中,假定学习自动机(LA)驻扎在智能地做出聚类决策并选择该组成员之一作为聚类头的车辆上。然后,群集头可通过基于云的基础架构来帮助有效地存储和传播信息。为了保护提出的方案免受恶意活动的侵害,使用了标准的加密技术,其中自动机从环境中学习并做出自适应决策,以识别网络中的任何恶意活动。随机环境会给与奖励和惩罚,在这种环境中,自动机会执行其动作,以便在从环境中获得强化信号后更新其动作概率向量。所提议的方案是使用SUMO在ns-2上进行广泛的仿真评估的。获得的结果表明,与现有方案相比,该方案的恶意节点检测率提高了10%。

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