基于sdn的云游戏服务器安全深度异常检测

Mohammadreza Ghafari, S. M. Safavi Hemami
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引用次数: 1

摘要

尽管云计算最近取得了进步,但用户和组织一直担心云环境的安全性。另一方面,云服务提供商也有顾虑,因为所有的云基础设施都在互联网上共享敏感数据。因此,深入研究以诊断网络异常似乎是合乎逻辑的,因为通过精确的方法,可以降低渗透的风险。在本文中,我们使用软件定义网络(SDN)来实现游戏流,以实现我们的测试渗透。此外,我们通过执行贪心方法构建了基于sdn的数据库。对于这个任务,在多个游戏流期间,三个攻击者以各种方式渗透到云游戏基础设施中,使玩家和游戏服务器无法访问。通过使用存储在控制器中的来自该事件的数据,我们创建了一个神经网络(NN)来评估和诊断异常。数值结果表明,该控制器能有效地检测异常,误差很小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
SDN-based Deep Anomaly Detection for Securing Cloud Gaming Servers
Despite recent advances in cloud computing, users and organizations have always feared for the security of cloud environments. On the other hand, there is a concern on the part of cloud service providers, since all the cloud infrastructure shares sensitive data on the Internet. For this reason, an in-depth study to diagnose network anomalies seems logical, because with a precise approach, the risks of infiltration can be reduced. In this paper, we have used Software Defined Network (SDN) to implement game streaming in order to achieve our test penetration. Furthermore, we built our SDN-based database by performing a greedy approach. For this job, during multiple game streaming, three attackers infiltrate the cloud game infrastructure in a variety of ways to make the access of the gamer and the game server out of reach. By using the data from this event, which are stored in the controller, we have created a Neural Network (NN) to assess and diagnose abnormalities. Numerical results show that our controller can be effective in detecting anomalies with very little error.
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