Uplink Channel Estimation and Data Transmission in Millimeter-Wave CRAN with Lens Antenna Arrays
Reuben George Stephen, Rui Zhang

TL;DR
This paper introduces a novel mmWave CRAN architecture utilizing lens antenna arrays to reduce fronthaul load, improve channel estimation, and enhance throughput in next-generation wireless networks.
Contribution
The paper proposes a new mmWave CRAN design with lens antenna arrays, including a low-complexity quantization scheme and channel estimation method exploiting energy focusing.
Findings
Significant throughput gains over conventional arrays.
Reduced fronthaul rate due to angular sparsity exploitation.
Lower complexity in signal processing and channel estimation.
Abstract
Millimeter-wave (mmWave) communication and network densification hold great promise for achieving high-rate communication in next-generation wireless networks. Cloud radio access network (CRAN), in which low-complexity remote radio heads (RRHs) coordinated by a central unit (CU) are deployed to serve users in a distributed manner, is a cost-effective solution to achieve network densification. However, when operating over a large bandwidth in the mmWave frequencies, the digital fronthaul links in a CRAN would be easily saturated by the large amount of sampled and quantized signals to be transferred between RRHs and the CU. To tackle this challenge, we propose in this paper a new architecture for mmWave-based CRAN with advanced lens antenna arrays at the RRHs. Due to the energy focusing property, lens antenna arrays are effective in exploiting the angular sparsity of mmWave channels, and…
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