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[Author] Yousuke TAKAHASHI(4hit)

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  • Separating Predictable and Unpredictable Flows via Dynamic Flow Mining for Effective Traffic Engineering Open Access

    Yousuke TAKAHASHI  Keisuke ISHIBASHI  Masayuki TSUJINO  Noriaki KAMIYAMA  Kohei SHIOMOTO  Tatsuya OTOSHI  Yuichi OHSITA  Masayuki MURATA  

     
    PAPER-Internet

      Pubricized:
    2017/08/07
      Vol:
    E101-B No:2
      Page(s):
    538-547

    To efficiently use network resources, internet service providers need to conduct traffic engineering that dynamically controls traffic routes to accommodate traffic change with limited network resources. The performance of traffic engineering (TE) depends on the accuracy of traffic prediction. However, the size of traffic change has been drastically increasing in recent years due to the growth in various types of network services, which has made traffic prediction difficult. Our approach to tackle this issue is to separate traffic into predictable and unpredictable parts and to apply different control policies. However, there are two challenges to achieving this: dynamically separating traffic according to predictability and dynamically controlling routes for each separated traffic part. In this paper, we propose a macroflow-based TE scheme that uses different routing policies in accordance with traffic predictability. We also propose a traffic-separation algorithm based on real-time traffic analysis and a framework for controlling separated traffic with software-defined networking technology, particularly OpenFlow. An evaluation of actual traffic measured in an Internet2 network shows that compared with current TE schemes the proposed scheme can reduce the maximum link load by 34% (at the most congested time) and the average link load by an average of 11%.

  • Extendable NFV-Integrated Control Method Using Reinforcement Learning Open Access

    Akito SUZUKI  Ryoichi KAWAHARA  Masahiro KOBAYASHI  Shigeaki HARADA  Yousuke TAKAHASHI  Keisuke ISHIBASHI  

     
    PAPER-Network

      Pubricized:
    2020/01/24
      Vol:
    E103-B No:8
      Page(s):
    826-841

    Network functions virtualization (NFV) enables telecommunications service providers to realize various network services by flexibly combining multiple virtual network functions (VNFs). To provide such services, an NFV control method should optimally allocate such VNFs into physical networks and servers by taking account of the combination(s) of objective functions and constraints for each metric defined for each VNF type, e.g., VNF placements and routes between the VNFs. The NFV control method should also be extendable for adding new metrics or changing the combination of metrics. One approach for NFV control to optimize allocations is to construct an algorithm that simultaneously solves the combined optimization problem. However, this approach is not extendable because the problem needs to be reformulated every time a new metric is added or a combination of metrics is changed. Another approach involves using an extendable network-control architecture that coordinates multiple control algorithms specified for individual metrics. However, to the best of our knowledge, no method has been developed that can optimize allocations through this kind of coordination. In this paper, we propose an extendable NFV-integrated control method by coordinating multiple control algorithms. We also propose an efficient coordination algorithm based on reinforcement learning. Finally, we evaluate the effectiveness of the proposed method through simulations.

  • Effective Flow Aggregation for Traffic Engineering

    Noriaki KAMIYAMA  Yousuke TAKAHASHI  Keisuke ISHIBASHI  Kohei SHIOMOTO  Tatsuya OTOSHI  Yuichi OHSITA  Masayuki MURATA  

     
    PAPER-Network

      Vol:
    E98-B No:10
      Page(s):
    2049-2059

    Although the use of software-defined networking (SDN) enables routes of packets to be controlled with finer granularity (down to the individual flow level) by using traffic engineering (TE) and thereby enables better balancing of the link loads, the corresponding increase in the number of states that need to be managed at routers and controller is problematic in large-scale networks. Aggregating flows into macro flows and assigning routes by macro flow should be an effective approach to solving this problem. However, when macro flows are constructed as TE targets, variations of traffic rates in each macro flow should be minimized to improve route stability. We propose two methods for generating macro flows: one is based on a greedy algorithm that minimizes the variation in rates, and the other clusters micro flows with similar traffic variation patterns into groups and optimizes the traffic ratio of extracted from each cluster to aggregate into each macro flow. Evaluation using traffic demand matrixes for 48 hours of Internet2 traffic demonstrated that the proposed methods can reduce the number of TE targets to about 1/50 ∼ 1/400 without degrading the link-load balancing effect of TE.

  • Traffic Engineering Based on Model Predictive Control

    Tatsuya OTOSHI  Yuichi OHSITA  Masayuki MURATA  Yousuke TAKAHASHI  Noriaki KAMIYAMA  Keisuke ISHIBASHI  Kohei SHIOMOTO  Tomoaki HASHIMOTO  

     
    PAPER-Network

      Vol:
    E98-B No:6
      Page(s):
    996-1007

    In recent years, the time variation of Internet traffic has increased due to the growth of streaming and cloud services. Backbone networks must accommodate such traffic without congestion. Traffic engineering with traffic prediction is one approach to stably accommodating time-varying traffic. In this approach, routes are calculated from predicted traffic to avoid congestion, but predictions may include errors that cause congestion. We propose prediction-based traffic engineering that is robust against prediction errors. To achieve robust control, our method uses model predictive control, a process control method based on prediction of system dynamics. Routes are calculated so that future congestion is avoided without sudden route changes. We apply calculated routes for the next time slot, and observe traffic. Using the newly observed traffic, we again predict traffic and re-calculate the routes. Repeating these steps mitigates the impact of prediction errors, because traffic predictions are corrected in each time slot. Through simulations using backbone network traffic traces, we demonstrate that our method can avoid the congestion that the other methods cannot.

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