4.7 Article

Scalable Cell-Free Massive MIMO Systems

Journal

IEEE TRANSACTIONS ON COMMUNICATIONS
Volume 68, Issue 7, Pages 4247-4261

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TCOMM.2020.2987311

Keywords

MIMO communication; Correlation; Channel estimation; Heuristic algorithms; Power control; Antennas; Interference; Cell-free massive MIMO; scalable implementation; centralized and distributed algorithms; dynamic cooperation clustering; user-centric networking; uplink-downlink duality

Funding

  1. ELLIIT
  2. Wallenberg AI, Autonomous Systems and Software Program (WASP)
  3. University of Pisa under the PRA 2018-2019 Research Project CONCEPT
  4. Italian Ministry of Education and Research (MIUR)

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Imagine a coverage area with many wireless access points that cooperate to jointly serve the users, instead of creating autonomous cells. Such a cell-free network operation can potentially resolve many of the interference issues that appear in current cellular networks. This ambition was previously called Network MIMO (multiple-input multiple-output) and has recently reappeared under the name Cell-Free Massive MIMO. 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 large networks with many users. We propose a new framework for scalable Cell-Free Massive MIMO systems by exploiting the dynamic cooperation cluster concept from the Network MIMO literature. We provide a novel algorithm for joint initial access, pilot assignment, and cluster formation that is proved to be scalable. Moreover, we adapt the standard channel estimation, precoding, and combining methods to become scalable. A new uplink and downlink duality is proved and used to heuristically design the precoding vectors on the basis of the combining vectors. Interestingly, the proposed scalable precoding and combining outperform conventional maximum ratio (MR) processing and also performs closely to the best unscalable alternatives.

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