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首页> 外文期刊>Journal of supercomputing >A security-aware virtual machine placement in the cloud using hesitant fuzzy decision-making processes
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A security-aware virtual machine placement in the cloud using hesitant fuzzy decision-making processes

机译:使用犹豫模糊决策过程云中的安全感知虚拟机放置

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摘要

The introduction of cloud computing systems brought with itself a solution for the dynamic scaling of computing resources leveraging various approaches for providing computing power, networking, and storage. On the other hand, it helped decrease the human resource cost by delegating the maintenance cost of infrastructures and platforms to the cloud providers. Nevertheless, the security risks of utilizing shared resources are recognized as one of the major concerns in using cloud computing environments. To be more specific, an intruder can attack a virtual machine and consequently extend his/her attack to other virtual machines that are co-located on the same physical machine. The worst situation is when the hypervisor is compromised in which all the virtual machines assigned to the physical node will be under security risk. To address these issues, we have proposed a security-aware virtual machine placement scheme to reduce the risk of co-location for vulnerable virtual machines. Four attributes are introduced to reduce the aforementioned risk including the vulnerability level of a virtual machine, the importance level of a virtual machine in the given context, the cumulative vulnerability level of a physical machine, and the capacity of a physical machine for the allocation of new virtual machines. Nevertheless, the evaluation of security risks, due to the various vulnerabilities' nature as well as the different properties of deployment environments is not quite accurate. To manage the precision of security evaluations, it is vital to consider hesitancy factors regarding security evaluations. To consider hesitancy in the proposed method, hesitant fuzzy sets are used. In the proposed method, the priorities of the cloud provider for the allocation of virtual machines are also considered. This will allow the model to assign more weights to attributes that have higher importance for the cloud provider. Eventually, the simulation results for the devised scenarios demonstrate that the proposed method can reduce the overall security risk of the given cloud data center. The results show that the proposed approach can reduce the risk of attacks caused by the co-location of virtual machines up to 41% compared to the existing approaches.
机译:云计算系统的引入自身带来了一种解决方案,用于控制资源的动态缩放,利用各种方法提供计算能力,网络和存储。另一方面,它通过将基础架构和平台的维护成本委托给云提供商来帮助降低人力资源成本。尽管如此,利用共享资源的安全风险被认为是使用云计算环境的主要问题之一。更具体地,入侵者可以攻击虚拟机,从而将他/她的攻击扩展到与位于同一物理机器上的其他虚拟机。最糟糕的情况是,当管理程序受到损害时,分配给物理节点的所有虚拟机都将受到安全风险。为了解决这些问题,我们提出了一种安全感的虚拟机放置方案,以降低易受攻击的虚拟机的共同位置的风险。引入了四个属性以减少上述风险,包括虚拟机的漏洞水平,给定上下文中虚拟机的重要性级别,物理机器的累积漏洞级别,以及用于分配的物理机器的容量新虚拟机。尽管如此,由于各种漏洞的性质以及部署环境的不同性质,对安全风险的评估并不完全准确。为了管理安全评估的精度,对考虑有关安全评估的犹豫不决的因素至关重要。要考虑在所提出的方法中犹豫不决,使用犹豫不决的模糊集。在所提出的方法中,还考虑了用于分配虚拟机的云提供商的优先级。这将允许模型为对云提供商具有更高重视的属性分配更多权重。最终,设计方案的仿真结果表明,所提出的方法可以降低给定云数据中心的整体安全风险。结果表明,与现有方法相比,该方法可以降低虚拟机的共同定位造成的攻击风险,这是与现有方法相比高达41%。

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