학술논문

Scalable User-Centric Distributed Massive MIMO Systems with Limited Processing Capacity
Document Type
Conference
Source
ICC 2023 - IEEE International Conference on Communications Communications, ICC 2023 - IEEE International Conference on. :4298-4304 May, 2023
Subject
Communication, Networking and Broadcast Technologies
Degradation
Spectral efficiency
Simulation
Precoding
Process control
Channel estimation
Massive MIMO
AP selection
cell-free networks
computational complexity
distributed massive MIMO
user-centric approach
Language
ISSN
1938-1883
Abstract
This paper investigates the performance of scalable user-centric (UC) distributed massive multiple-input multiple-output (D-mMIMO) systems, widely known in the literature as cell-free mMIMO, with limited processing capacity. Specifically, it is assumed that the computational complexity (CC) of performing channel estimation and precoding signals does not increase with the number of access points (APs). In this regard, it is considered that each user equipment (UE) can only be associated with a finite number of APs. Moreover, a method is proposed for adjusting the AP clusters according to the network implementation, i.e., centralized or distributed. We compare the proposed approaches with a scalable UC system that does not perform AP cluster adjustment and does not prevent the processing demands from growing with the number of APs. Simulation results reveal that UC systems can keep the spectral efficiency (SE) under minor degradation even if the processing capacity is limited, reducing the CC by up to 96%. Besides, the proposed method for adjusting the AP cluster leads to further reductions in CC.