首页> 外文会议>International Workshop on Signal Processing Advances in Wireless Communications >Cell-edge Interferometry: Reliable Detection of Unknown Cell-edge Users via Canonical Correlation Analysis
【24h】

Cell-edge Interferometry: Reliable Detection of Unknown Cell-edge Users via Canonical Correlation Analysis

机译:细胞边缘干涉测量法:通过典范相关分析可靠地检测未知细胞边缘用户

获取原文

摘要

A key challenge in 4G and emerging 5G systems is that of reliably detecting the uplink transmissions of users close to the edge between cells. These users are subject to significant signal attenuation due to path loss, and frequent hand-off from one cell to the other, making channel estimation very challenging. Even multiuser detection using base station cooperation often fails to detect such users, due to channel estimation errors and the sensitivity of multiuser detection to near-far power imbalance. Is it even possible to reliably decode the cell-edge users' signals under these circumstances? This paper shows, perhaps surprisingly, that with a suitable base station `interferometry' strategy, the cell-edge users' signals can be reliably decoded at low SNR under mild conditions. Exploiting the fact that cell-edge users' signals are weak but common to both base stations, while users close to a base station are unique to that base station, reliable detection is enabled by Canonical Correlation Analysis (CCA) - a machine learning technique that reliably estimates a common subspace, even in the presence of strong individual interference. Free from cell-center interference, the resulting mixture of cell-edge signals can then be unraveled using well-known algebraic signal processing techniques. Simulations demonstrate that the proposed detector achieves order of magnitude BER improvement compared to an `oracle' zero-forcing with successive interference cancellation that assumes perfect knowledge of all channels. The paper also includes proof of common subspace identifiability for the assumed generative model, which was curiously missing from the machine learning / CCA literature.
机译:4G和新兴的5G系统中的关键挑战在于,如何可靠地检测靠近小区之间边缘的用户的上行链路传输。这些用户由于路径损耗以及从一个小区到另一个小区的频繁切换而遭受明显的信号衰减,这使得信道估计非常具有挑战性。由于信道估计错误以及多用户检测对近距离功率不平衡的敏感性,甚至使用基站协作的多用户检测也常常无法检测到此类用户。在这种情况下,甚至可以可靠地解码小区边缘用户的信号吗?本文可能令人惊讶地表明,采用合适的基站“干涉测量”策略,可以在温和条件下以低SNR可靠地解码小区边缘用户的信号。利用小区边缘用户的信号微弱但对两个基站都通用的事实,而靠近基站的用户对该基站是唯一的,可靠的检测可通过规范相关分析(CCA)进行,这是一种机器学习技术,即使存在强烈的个人干扰,也可以可靠地估计一个公共子空间。不受单元中心干扰的影响,然后可以使用众所周知的代数信号处理技术来分解得到的单元边缘信号的混合。仿真表明,与假设连续所有干扰消除且具有连续干扰消除功能的“ oracle”零强制相比,所提出的检测器可实现BER数量级的改善。本文还包括了假设的生成模型的通用子空间可识别性的证明,这在机器学习/ CCA文献中却被奇怪地遗漏了。

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