首页> 外文会议>2010 Future Network and Mobile Summit >BeFEMTO's self-organized and docitive femtocells
【24h】

BeFEMTO's self-organized and docitive femtocells

机译:BeFEMTO的自组织和权威性毫微微小区

获取原文

摘要

In this paper we use the emerging paradigm of docition for self-organized femtocell networks which are central to the ICT-BeFEMTO project. We consider that the femtocells are intelligent devices implementing a learning process through which they make decisions without the guidance of a centralized entity. In distributed settings, however, the learning may be complex and slow due to coupled decision making processes resulting in non-stationarities. The docitive paradigm proposes a timely solution based on knowledge sharing, which allows femtocells to develop new capacities for selecting appropriate actions. We demonstrate that this improves the femtocells' learning ability and accuracy, and gives them strategies for action selection in unvis-ited states. We evaluate the docitive paradigms in the context of a 3GPP compliant OFDMA (Orthogonal Frequency Division Multiple Access) based femtocell network modeled as a multi-agent system, where the agents implement a real-time multi-agent reinforcement learning technique known as decentralized Q-learning. Our goal is to solve the well known coexistence problem between macro and femto systems by controlling the aggregated interference generated by multiple femtocells at the macrocell receiver. We propose different docitive algorithms and we show their superiority to the well know paradigm of independent learning in terms of speed of convergence and precision.
机译:在本文中,我们将新兴的docition范式用于自组织的femtocell网络,这是ICT-BeFEMTO项目的核心。我们认为,毫微微小区是实现学习过程的智能设备,通过这些过程,他们可以在没有集中式实体指导的情况下做出决策。但是,在分布式环境中,由于耦合的决策过程导致不稳定,因此学习可能很复杂且很慢。直观的范式提出了一种基于知识共享的及时解决方案,该方案允许毫微微小区发展新的能力来选择适当的行动。我们证明,这提高了毫微微小区的学习能力和准确性,并为他们提供了在未访问状态下进行动作选择的策略。我们在以3GPP兼容OFDMA(正交频分多址)为基础的毫微微小区网络建模为多智能体系统的情况下,评估了该模式,其中智能体实施了实时多智能体强化学习技术,称为分散Q-学习。我们的目标是通过控制宏小区接收机处多个毫微微小区产生的聚集干扰来解决宏系统与毫微微系统之间众所周知的共存问题。我们提出了不同的听觉算法,并且在收敛速度和精确度方面,我们展示了它们优于独立学习的范例。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号