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Entry Aggregation and Early Match Using Hidden Markov Model of Flow Table in SDN

机译:使用SDN流表的隐马尔可夫模型进行条目聚合和早期匹配

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摘要

The usage of multiple flow tables (MFT) has significantly extended the flexibility and applicability of software-defined networking (SDN). However, the size of MFT is usually limited due to the use of expensive ternary content addressable memory (TCAM). Moreover, the pipeline mechanism of MFT causes long flow processing time. In this paper a novel approach called Agg-ExTable is proposed to efficiently manage the MFT. Here the flow entries in MFT are periodically aggregated by applying pruning and the Quine–Mccluskey algorithm. Utilizing the memory space saved by the aggregation, a front-end ExTable is constructed, keeping popular flow entries for early match. Popular entries are decided by the Hidden Markov model based on the match frequency and match probability. Computer simulation reveals that the proposed scheme is able to save about 45% of space of MFT, and efficiently decrease the flow processing time compared to the existing schemes.
机译:多个流表(MFT)的使用极​​大地扩展了软件定义网络(SDN)的灵活性和适用性。但是,由于使用昂贵的三态内容可寻址存储器(TCAM),MFT的大小通常受到限制。此外,MFT的流水线机制会导致较长的流处理时间。在本文中,提出了一种称为Agg-ExTable的新颖方法来有效管理MFT。在这里,通过应用修剪和Quine-Mccluskey算法定期汇总MFT中的流条目。利用聚合节省的内存空间,构建了一个前端ExTable,保留了流行的流条目以进行早期匹配。热门条目由Hidden Markov模型基于匹配频率和匹配概率决定。计算机仿真表明,与现有方案相比,该方案能够节省约45%的MFT空间,并有效减少流处理时间。

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