Quantization Design and Channel Estimation for Massive MIMO Systems with One-Bit ADCs
Feiyu Wang, Jun Fang, Hongbin Li, Shaoqian Li

TL;DR
This paper proposes adaptive and random quantization schemes for one-bit massive MIMO systems, significantly improving channel estimation accuracy and reducing training overhead by optimally designing quantization thresholds.
Contribution
It introduces adaptive and random quantization methods that optimize thresholds for one-bit ADCs, approaching ideal estimation performance with less training.
Findings
Adaptive quantization converges to optimal thresholds.
Proposed schemes outperform fixed-threshold methods.
Achieves near-perfect CSI with moderate pilot symbols.
Abstract
We consider the problem of channel estimation for uplink multiuser massive MIMO systems, where, in order to significantly reduce the hardware cost and power consumption, one-bit analog-to-digital converters (ADCs) are used at the base station (BS) to quantize the received signal. Channel estimation for one-bit massive MIMO systems is challenging due to the severe distortion caused by the coarse quantization. It was shown in previous studies that an extremely long training sequence is required to attain an acceptable performance. In this paper, we study the problem of optimal one-bit quantization design for channel estimation in one-bit massive MIMO systems. Our analysis reveals that, if the quantization thresholds are optimally devised, using one-bit ADCs can achieve an estimation error close to (with an increase by a factor of ) that of an ideal estimator which has access to the…
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Taxonomy
TopicsAdvanced MIMO Systems Optimization · Cooperative Communication and Network Coding · Energy Harvesting in Wireless Networks
