Foundations of User-Centric Cell-Free Massive MIMO
TL;DR: In this article, the fundamental tradeoffs between communication performance, computational complexity, and fronthaul signaling requirements are thoroughly analyzed, while open problems related to these and other resource allocation problems are reviewed.
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Abstract: Imagine a coverage area where each mobile device is communicating with a preferred set of wireless access points (among many) that are selected based on its needs and cooperate to jointly serve it, instead of creating autonomous cells. This effectively leads to a user-centric post-cellular network architecture, which can resolve many of the interference issues and service-quality variations that appear in cellular networks. This concept is called User-centric Cell-free Massive MIMO (multiple-input multiple-output) and has its roots in the intersection between three technology components: Massive MIMO, coordinated multipoint processing, and ultra-dense networks. The main challenge is to achieve the benefits of cell-free operation in a practically feasible way, with computational complexity and fronthaul requirements that are scalable to enable massively large networks with many mobile devices. This monograph covers the foundations of User-centric Cell-free Massive MIMO, starting from the motivation and mathematical definition. It continues by describing the state-of-the-art signal processing algorithms for channel estimation, uplink data reception, and downlink data transmission with either centralized or distributed implementation. The achievable spectral efficiency is mathematically derived and evaluated numerically using a running example that exposes the impact of various system parameters and algorithmic choices. The fundamental tradeoffs between communication performance, computational complexity, and fronthaul signaling requirements are thoroughly analyzed. Finally, the basic algorithms for pilot assignment, dynamic cooperation cluster formation, and power optimization are provided, while open problems related to these and other resource allocation problems are reviewed. All the numerical examples can be reproduced using the accompanying Matlab code.
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Citations
Characterization of the Weak Pareto Boundary of Resource Allocation Problems in Wireless Networks – Implications to Cell-Less Systems
Renato L. G. Cavalcante,Lorenzo Miretti,Sławomir Stańczak +2 more
- 28 May 2023
TL;DR: The weak Pareto boundary of resource allocation problems in wireless networks is characterized by configurations attaining equality in the monotone norm constraint and satisfying a fairness criterion based on power vectors.
Dynamic Scheduling and Power Allocation with Random Arrival Rates in Dense User-Centric Scalable Cell-Free MIMO Networks
Kyung-Ho Shin,Jin-Woo Kim,Sang-Wook Park,Ji-Hee Yu,Seong-Gyun Choi,Hyoung-Do Kim,Young-Hwan You,Hyoung-Kyu Song +7 more
TL;DR: Dynamic scheduling and power allocation with random arrival rates in dense user-centric scalable cell-free MIMO networks achieve queue stabilization and maximize throughput and fairness. Dynamic V method and semi-orthogonal user selection (SUS) algorithm are introduced to adapt to traffic conditions and achieve optimal performance.
Fairness Scheduling in Dense User-Centric Cell-Free Massive MIMO Networks
31 Oct 2022
TL;DR: In this article , the authors considered a user-centric scalable cell-free massive MIMO network with a total of $K> \frac{LM}{2}$ UEs simultaneously.
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