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Scalable QoS degradation locating from end-to-end quality of flows on various routes

机译:可扩展的QoS降级,从各种路线上的流动端到端质量定位

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Methods to infer the locations of QoS degradation from end-to-end quality of flows have been proposed. These methods find the minimum set of links that covers all the bad quality flows and infer the links as the locations of QoS degradation. Since the computational complexity to find the minimum set cover is high, these methods have a difficulty in the scalability for the large-scale networks. In this paper, we propose a scalable locating method in which a network is (logically) divided into sub-networks. Bad quality flows going across the sub-networks create the dependency among sub-networks in inferring. Resolving this dependency, our proposed method enables each sub-network to run inferring algorithm independently in parallel. Simulation results show that the proposed method can reduce the inferring time significantly while the accuracy of inferring is not degraded.
机译:提出了从流动端到端质量的QoS降解位置的方法。这些方法找到了最小的链接集,涵盖了所有不良质量的流程,并将链接推断为QoS劣化的位置。由于找到最小集合盖的计算复杂性很高,因此这些方法对大规模网络的可扩展性难以达到。在本文中,我们提出了一种可伸缩定位方法,其中网络(逻辑地)被分成子网。跨越子网的不良质量流量在推断中创建子网之间的依赖性。解决这一依赖性,我们所提出的方法使得每个子网能够独立地并行地运行推断算法。仿真结果表明,该方法可以显着降低推断时间,而推断的准确性不会降低。

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