基于多武装强盗的自组织无线网络认知管理

Tony Daher, S. B. Jemaa, L. Decreusefond
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引用次数: 8

摘要

当前移动网络中的许多任务都是通过自组织网络(SON)功能实现自动化的。实际实现包含在一个网络中,其中有几个独立部署和运行的SON功能。引入了基于策略的SON管理器(PBSM)来配置这些功能,使整个网络能够实现运营商的目标。考虑到大量可能的配置(对于网络中的每个SON函数实例),我们建议赋予PBSM学习能力。这种认知PBSM (C-PBSM)基于过去的经验和网络反馈,学习SON配置与运营商目标之间最合适的映射。所提出的学习算法是随机多臂强盗,即UCB1。我们在LTE-A模拟器上评估了所提出的C-PBSM的性能。我们表明,它能够学习到最优的SON配置,并快速适应客观变化。
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Cognitive management of self — Organized radio networks based on multi armed bandit
Many tasks in current mobile networks are automated through Self-Organizing Networks (SON) functions. The actual implementation consists in a network with several SON functions deployed and operating independently. A Policy Based SON Manager (PBSM) has been introduced to configure these functions in a manner that makes the overall network fulfill the operator objectives. Given the large number of possible configurations (for each SON function instance in the network), we propose to empower the PBSM with learning capability. This Cognitive PBSM (C-PBSM) learns the most appropriate mapping between SON configurations and operator objectives based on past experience and network feedback. The proposed learning algorithm is a stochastic multi-armed bandit, namely the UCB1. We evaluate the performances of the proposed C-PBSM on an LTE-A simulator. We show that it is able to learn the optimal SON configuration and quickly adapts to objective changes.
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