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Massive MIMO: How many antennas do we need? (1107.1709v2)

Published 8 Jul 2011 in cs.IT and math.IT

Abstract: We consider a multicell MIMO uplink channel where each base station (BS) is equipped with a large number of antennas N. The BSs are assumed to estimate their channels based on pilot sequences sent by the user terminals (UTs). Recent work has shown that, as N grows infinitely large, (i) the simplest form of user detection, i.e., the matched filter (MF), becomes optimal, (ii) the transmit power per UT can be made arbitrarily small, (iii) the system performance is limited by pilot contamination. The aim of this paper is to assess to which extent the above conclusions hold true for large, but finite N. In particular, we derive how many antennas per UT are needed to achieve \eta % of the ultimate performance. We then study how much can be gained through more sophisticated minimum-mean-square-error (MMSE) detection and how many more antennas are needed with the MF to achieve the same performance. Our analysis relies on novel results from random matrix theory which allow us to derive tight approximations of achievable rates with a class of linear receivers.

Citations (285)

Summary

  • The paper demonstrates that as antenna numbers increase, simple techniques like matched filtering become nearly optimal for uplink detection.
  • It reveals that massive MIMO enables significant power efficiency, allowing transmit power per user to be reduced while maintaining performance.
  • The study identifies pilot contamination as a fundamental bottleneck that persists even with large-scale antenna arrays.

Massive MIMO: How Many Antennas Do We Need?

Summary: The paper critically evaluates the requirements of antenna numbers in massive multiple-input multiple-output (MIMO) configurations. It explores the shift from traditional MIMO to massive MIMO and analyzes the conditions necessary to utilize large-scale antenna arrays at base stations (BSs) effectively. Central to the discussion is the asymptotic analysis of uplink systems and how such systems are influenced by pilot contamination, which is shown to be a performance bottleneck.

Technical Contributions: The authors introduce a multi-cell MIMO uplink model where each BS is equipped with a large number of antennas. They establish the scenario where both the number of BS antennas (NN) and the number of user terminals (UTs) per cell (KK) grow infinitely while maintaining a finite ratio, exploring the implications for achievable rates with linear receivers. Employing results from random matrix theory, they provide deterministic equivalents of the signal-to-interference-plus-noise ratio (SINR) for both matched filter (MF) and minimum-mean-square-error (MMSE) linear detectors.

Key findings include:

  1. Optimality of Simple Detection Techniques: In the limit as NN \to \infty, simple detection techniques such as MF become optimal, resulting in vastly improved power efficiency.
  2. Power Efficiency: The theoretically derived results suggest that the transmit power per UT can be reduced arbitrarily without degrading system performance in a large antenna regime—a significant implication for energy-constrained systems.
  3. Pilot Contamination: The performance is fundamentally limited by pilot contamination, a hindrance arising from the reuse of pilot sequences across cells due to limited orthogonality. This contamination remains a constraint even as NN becomes very large.
  4. Effectiveness of Antenna Scaling: Numerical approximations presented indicate that increasing the antenna count can offset suboptimality in user detection, i.e., MF's performance can match MMSE with sufficient antennas.

Numerical Results and Implications: The derived approximations were validated against simulation results, illustrating agreement across various antenna configurations. The investigation into the relation between the number of degrees of freedom (DoF) per user and system performance highlights that augmenting the DoF per UT significantly influences achievable rates over MF or MMSE detection. For potential implementation, understanding how antenna correlation and scattering affect the system remains an open question, with implications for practical deployment in complex real-world environments.

Future Directions: Building on the findings, future research could further analyze massive MIMO in different channel models, incorporating realistic assumptions about antenna correlation and path loss. The techniques employed can be extended to address downlink scenarios, potentially unlocking new insights into the bidirectional applications of massive MIMO.

In summary, this paper provides a profound investigation into the scaling laws for antennas in massive MIMO setups, clarifying how these affect system performance. Through rigorous theoretical analysis and simulation validation, it lays down a framework for understanding the trade-offs and conditions necessary for achieving near-optimal performance in large-scale antenna systems.