基于模糊q学习的无线网络移动鲁棒性优化

A. Klein, Nandish P. Kuruvatti, Jörg Schneider, H. Schotten
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引用次数: 19

摘要

智能手机和移动个人电脑的高度普及,预计到2020年无线数据流量将增加1000倍。然而,移动网络运营商(MNO)的现状是,由于收入下降和成本基础增加,利润率压力越来越大。自优化功能,例如机动性鲁棒性优化(MRO),是减少运营支出(OPEX)的重要手段。特别是移动用户群体或高速移动网络带来的挑战,可能会严重降低网络性能和用户体验。本文提出的基于模糊q -学习的方法旨在为实现自优化和自修复网络操作提供通用基础。所设计的概念包括以下关键组件:模糊推理系统(FIS)、启发式探索/开发策略(EEP)和Q-Learning (QL)。将其在参考场景中的性能与[2]中提出的基于趋势的切换(HO)优化方案和基于速度估计分配触发时间(TTT)值的方案进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fuzzy Q-Learning for Mobility Robustness Optimization in wireless networks
The high popularity of smartphones and mobile PCs is expected to increase wireless data traffic in the order of 1000 times by 2020 [1]. However, the current situation of Mobile Network Operator (MNO)s is characterized by increasing margin pressure due to declining revenues and an increasing cost base. Self-optimization functionalities, e.g. for Mobility Robustness Optimization (MRO), are essential means for reducing Operational Expenditure (OPEX). In particular, mobile user groups or moving networks at high speeds impose challenges and may severely degrade network performance as well as user experience. The Fuzzy Q-Learning-based approach presented in this paper aims at providing a generic basis for enabling self-optimizing and self-healing network operations. The designed concept consists of the following key components: Fuzzy Inference System (FIS), heuristic Exploration/Exploitation Policy (EEP), and Q-Learning (QL). Its performance in a reference scenario is compared with a trend-based handover (HO) optimization scheme presented in [2] and a scheme that assigns time-to-trigger (TTT) values based on velocity estimates.
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