SDN网络北向接口安全的风险评估方法

M. Niemiec, P. Jaglarz, Marcin Jekot, P. Chołda, Piotr Boryło
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引用次数: 5

摘要

对网络最严重的威胁通常来自外部实体。因此,确保与外部应用程序通信的SDN网络的北向接口需要特别密切关注。本文提出了安全SDN的风险评估与管理方法(RAMSES)。这种新颖的解决方案能够估计与通过SDN网络中的北向api接收的流量需求请求相关的风险。RAMSES量化预期流量需求对网络成本的影响,并指定使用信誉系统估计的不良请求的可能性。准确的风险评估使SDN网络管理员能够做出正确的决策并减轻潜在的威胁。这可以通过基于网络优化工具和与请求发送方声誉相关的几个场景的广泛数值验证来观察。RAMSES的验证证实了其风险评估方法在保护SDN网络免受北向api相关威胁方面的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Risk Assessment Approach to Secure Northbound Interface of SDN Networks
The most significant threats to networks usually originate from external entities. As such, the Northbound interface of SDN networks which ensures communication with external applications requires particularly close attention. In this paper we propose the Risk Assessment and Management approach to SEcure SDN (RAMSES). This novel solution is able to estimate the risk associated with traffic demand requests received via the Northbound-API in SDN networks. RAMSES quantifies the impact on network cost incurred by expected traffic demands and specifies the likelihood of adverse requests estimated using the reputation system. Accurate risk estimation allows SDN network administrators to make the right decisions and mitigate potential threat scenarios. This can be observed using extensive numerical verification based on an network optimization tool and several scenarios related to the reputation of the sender of the request. The verification of RAMSES confirmed the usefulness of its risk assessment approach to protecting SDN networks against threats associated with the Northbound-API.
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