数据中心软件定义网络中的智能负载平衡

IF 2.5 4区 计算机科学 Q3 TELECOMMUNICATIONS Transactions on Emerging Telecommunications Technologies Pub Date : 2024-04-15 DOI:10.1002/ett.4967
Ezekia Gilliard, Jinshuo Liu, Ahmed Abubakar Aliyu, Deng Juan, Huang Jing, Meng Wang
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引用次数: 0

摘要

为满足数据中心网络(DCN)对高效资源利用日益增长的需求,开发智能负载平衡算法变得至关重要。本文介绍了专为数据中心内软件定义网络(SDN)环境设计的双倍深度 Q 网络(DDQN)算法。通过利用深度强化学习,DDQN 解决了动态流量模式、多样化流量需求以及大象流和小鼠流共存所带来的挑战。我们的算法采用全面的 SDN 方法,通过分析交换机负载和带宽利用率来评估网络状态。我们的算法针对 DCN 中的大象流和小鼠流使用卷积神经网络,可根据大象流的特定需求进行自适应学习和训练。DDQN 采用双深度 Q 网络架构(DDQN),可独立优化大象流和小鼠流的路径。实时适应机制基于 DDQN 的强大学习能力做出路由决策,根据当前网络状态和流量模式生成最佳转发路径,从而提高网络利用率并减少数据包丢失。在以 RYU 为控制器的 Mininet 环境中,利用胖树数据中心拓扑进行了仿真,验证了 DDQN 的功效。结果表明,与等成本多路径和 Hedera 等传统算法相比,DDQN 能有效实现更高的吞吐量、更低的延迟和出色的负载平衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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Intelligent load balancing in data center software-defined networks

In response to the increasing demand for efficient resource utilization in data center networks (DCNs), the development of intelligent load-balancing algorithms has become crucial. This article introduces the dual double deep Q network (DDQN) algorithm, designed for software-defined networking (SDN) environments within data centers. By leveraging deep reinforcement learning, DDQN addresses the challenges posed by dynamic traffic patterns, diverse flow requirements, and the coexistence of elephant and mice flows. Our algorithm adopts a comprehensive SDN approach, evaluating the network's status by analyzing switch load and bandwidth utilization. Using convolutional neural networks for elephant and mice flows in DCN, our algorithm enables adaptive learning and training tailored to the specific demands of elephant flows. Employing a double deep Q network architecture (DDQN), DDQN optimizes paths for both elephant and mice flows independently. Real-time adaptation mechanisms make routing decisions based on the robust learning capabilities of DDQN, enhancing network utilization and reducing packet loss by generating optimal forwarding paths according to the current network state and traffic patterns. Simulations conducted in a Mininet environment with RYU as the controller, utilizing a fat-tree data center topology, validate the efficacy of DDQN. The results demonstrate its effectiveness in achieving higher throughput, lower latency, and superior load balancing compared to traditional algorithms like equal-cost multipath and Hedera.

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来源期刊
CiteScore
8.90
自引率
13.90%
发文量
249
期刊介绍: ransactions on Emerging Telecommunications Technologies (ETT), formerly known as European Transactions on Telecommunications (ETT), has the following aims: - to attract cutting-edge publications from leading researchers and research groups around the world - to become a highly cited source of timely research findings in emerging fields of telecommunications - to limit revision and publication cycles to a few months and thus significantly increase attractiveness to publish - to become the leading journal for publishing the latest developments in telecommunications
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