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首页> 外文期刊>IEEE Transactions on Signal Processing >Training Design for Channel Estimation in Uplink Cloud Radio Access Networks
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Training Design for Channel Estimation in Uplink Cloud Radio Access Networks

机译:上行云无线电接入网中信道估计的培训设计

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In this paper, a training design and channel estimation scheme is considered for uplink cloud radio access networks (C-RANs) consisting of multiple user equipments (UEs), remote radio heads (RRHs), and a centralized baseband unit (BBU) pool. Since most signal processing functions in C-RANs are moved from RRHs to the BBU pool, the individual channels over the links between UEs and RRHs and the links between RRHs and the BBU pool cannot be estimated directly. To address this issue, segment training based individual channel estimation for C-RANs is proposed in this paper, in which channel state information acquisition is performed through two consecutive segments. By using the Kalman filter, the sequential minimum mean-square-error (SMMSE) estimator is developed to efficiently estimate the individual channel states through prior knowledge of long-term channel correlation statistics and the latest radio channel state. A training structure design subject to a power constraint is obtained by minimizing the mean-square-error (MSE) of the SMMSE estimator. Since the MSE is insufficient to fully evaluate the overall performance of C-RANs, the uplink ergodic capacity is derived to exploit the impact of channel estimation on the data transmission by taking the estimation errors into consideration, and the tradeoff between the lengths of two segment training sequences is optimized by maximizing the corresponding spectral efficiency. Furthermore, the Cramér-Rao bound is used to evaluate the proposed SMMSE estimator’s performance. Simulation results show that the SMMSE estimator and the corresponding training design can effectively decrease MSE and significantly increase the quality and efficiency of data transmission in C-RANs.
机译:本文针对由多个用户设备(UE),远程无线头(RRH)和集中式基带单元(BBU)池组成的上行链路云无线接入网(C-RAN)考虑了一种训练设计和信道估计方案。由于C-RAN中的大多数信号处理功能已从RRH移至BBU池,因此无法直接估计UE与RRH之间的链路上的单个信道以及RRH与BBU池之间的链路。为了解决这个问题,本文提出了基于分段训练的C-RANs个体信道估计,其中信道状态信息的获取是通过两个连续的分段进行的。通过使用卡尔曼滤波器,开发了顺序最小均方误差(SMMSE)估计器,以通过对长期信道相关性统计数据的最新了解和最新的无线电信道状态,有效地估计各个信道状态。通过最小化SMMSE估计器的均方误差(MSE),可以获得受功率约束的训练结构设计。由于MSE不足以完全评估C-RAN的整体性能,因此通过考虑估计误差以及两个段的长度之间的权衡,得出上行链路遍历容量以利用信道估计对数据传输的影响。通过最大化相应的频谱效率来优化训练序列。此外,Cramér-Rao边界用于评估建议的SMMSE估算器的性能。仿真结果表明,SMMSE估计器和相应的训练设计可以有效降低MSE,并显着提高C-RAN中数据传输的质量和效率。

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