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Load Balancing for Ultradense Networks: A Deep Reinforcement Learning-Based Approach

机译:用于超阵网络的负载平衡:基于深度的加强学习方法

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摘要

In this article, we propose a deep reinforcement learning (DRL)-based mobility load balancing (MLB) algorithm along with a two-layer architecture to solve the large-scale load balancing problem for ultradense networks (UDNs). Our contribution is threefold. First, this article proposes a two-layer architecture to solve the large-scale load balancing problem in a self-organized manner. The proposed architecture can alleviate the global traffic variations by dynamically grouping small cells into self-organized clusters according to their historical loads, and further adapt to local traffic variations through intracluster load balancing afterwards. Second, for the intracluster load balancing, this article proposes an off-policy DRL-based MLB algorithm to autonomously learn the optimal MLB policy under an asynchronous parallel learning framework, without any prior knowledge assumed over the underlying UDN environments. Moreover, the algorithm enables joint exploration with multiple behavior policies, such that the traditional MLB methods can be used to guide the learning process thereby improving the learning efficiency and stability. Third, this article proposes an offline-evaluation-based safeguard mechanism to ensure that the online system can always operate with the optimal and well-trained MLB policy, which not only stabilizes the online performance but also enables the exploration beyond current policies to make full use of machine learning in a safe way. Empirical results verify that the proposed framework outperforms the existing MLB methods in general UDN environments featured with irregular network topologies, coupled interferences, and random user movements, in terms of the load balancing performance.
机译:在本文中,我们提出了一种深度加强学习(DRL)基础的移动性负载平衡(MLB)算法以及双层架构,以解决超短网络(UDN)的大规模负载平衡问题。我们的贡献是三倍。首先,本文提出了一种双层架构,以以自组织方式解决大规模负载平衡问题。通过根据其历史载荷将小型电池动态分组到自组织的群集中,该架构可以通过将小块进行动态分组,并进一步通过后面的负载平衡来缓解全局流量变化。其次,对于内部载荷负载平衡,本文提出了一个基于策略的DRL的MLB算法,在异步并行学习框架下自主学习最佳MLB策略,而无需在基础UDN环境中假设的任何先前知识。此外,该算法使得具有多种行为策略的联合探索,使得传统的MLB方法可用于指导学习过程,从而提高学习效率和稳定性。第三,本文提出了基于离线评估的保障机制,以确保在线系统始终与最佳且训练有素的MLB政策运行,这不仅稳定了在线性能,而且还使探索超出当前策略以满足以安全的方式使用机器学习。经验结果验证了所提出的框架在载有不规则的网络拓扑,耦合干扰和随机用户移动中的一般UDN环境中的现有MLB方法。

著录项

  • 来源
    《Internet of Things Journal, IEEE》 |2019年第6期|9399-9412|共14页
  • 作者单位

    Beijing Univ Posts & Telecommun Key Lab Universal Wireless Commun Minist Educ Beijing 100876 Peoples R China;

    Beijing Univ Posts & Telecommun Key Lab Universal Wireless Commun Minist Educ Beijing 100876 Peoples R China;

    Beijing Univ Posts & Telecommun State Key Lab Networking & Switching Technol Beijing 100876 Peoples R China;

    Beijing Univ Posts & Telecommun Key Lab Universal Wireless Commun Minist Educ Beijing 100876 Peoples R China;

    Chinese Univ Hong Kong Shenzhen Res Inst Big Data Shenzhen 518172 Guangdong Peoples R China|Chinese Univ Hong Kong Sch Sci & Engn Shenzhen 518172 Guangdong Peoples R China|Univ Calif Davis Dept Elect & Comp Engn Davis CA 95616 USA;

  • 收录信息
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    Deep reinforcement learning (DRL); load balancing; self-organizing networks (SONs); ultradense networks (UDNs);

    机译:深度加强学习(DRL);负载平衡;自组织网络(儿子);超声网络(UDN);

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