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Cognitive Software-Defined Networking Using Fuzzy Cognitive Maps

机译:使用模糊认知图的认知软件定义网络

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Future networks are expected to provide improved support for several different kinds of applications and services. All these services will have diverse characteristics and requirements to be satisfied. A potential technology to upgrade efficiently and effectively current generation networks is virtualization via network “softwarization.” This approach requires the combination of software-defined networking (SDN) and network function virtualization. Nevertheless, such a new complex network structure will raise further issues and challenges to be solved both reactively and proactively, without human intervention. In order to achieve that, academia and industry have identified the solution in the implementation and deployment of machine learning. Hence, very likely, 5G (and especially beyond 5G) networks will be cognitive virtualized networks. In that context, this paper proposes a cognitive SDN architecture based on fuzzy cognitive maps (FCMs). First, specific design modifications of FCMs are proposed to overcome some well-known issues of this learning paradigm. Second, the efficient integration with an SDN architecture is presented and analyzed. Finally, the emulation of a sample network scenario via Mininet is provided to validate the effectiveness and the potential of the new cognitive system and its capability to act and to adapt independently of human intervention.
机译:未来的网络有望为几种不同类型的应用程序和服务提供更好的支持。所有这些服务将具有不同的特性和需要满足的要求。通过网络“软化”进行虚拟化的一种潜在技术,可以有效,高效地升级当前的网络。这种方法需要结合软件定义网络(SDN)和网络功能虚拟化。然而,这种新的复杂网络结构将提出进一步的问题和挑战,而无需人工干预就可以主动和被动地加以解决。为了实现这一目标,学术界和工业界已经在机器学习的实施和部署中确定了解决方案。因此,很可能5G(尤其是5G以外)网络将成为认知虚拟化网络。在这种情况下,本文提出了一种基于模糊认知图(FCM)的认知SDN架构。首先,提出了FCM的特定设计修改方案,以克服此学习范例的一些众所周知的问题。其次,提出并分析了与SDN体系结构的有效集成。最后,通过Mininet提供了一个示例网络场景的仿真,以验证新认知系统的有效性和潜力,以及其独立于人工干预的行动和适应能力。

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