Circuit-Aware Design of Energy- Efficient Massive MIMO Systems Emil Björnson ‡*, Michail Matthaiou ‡§, and Mérouane Debbah ‡ ‡ Alcatel-Lucent Chair on.

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Presentation transcript:

Circuit-Aware Design of Energy- Efficient Massive MIMO Systems Emil Björnson ‡*, Michail Matthaiou ‡§, and Mérouane Debbah ‡ ‡ Alcatel-Lucent Chair on Flexible Radio, Supélec, France * Dept. Signal Processing, KTH, and Linköping University, Sweden § ECIT, Queen’s University Belfast, U.K., and S2, Chalmers, Sweden 1

A Conjecture for Massive MIMO ”Massive MIMO can be built with inexpensive, low-power components.” “Massive MIMO reduces the constraints on accuracy and linearity of each individual amplifier and RF chain.” “Massive MIMO for next generation wireless systems,” by E. G. Larsson, O. Edfors, F. Tufvesson and T. L. Marzetta, in IEEE Communications Magazine, Circuit-Aware Design of Energy-Efficient Massive MIMO Systems, E. Björnson (Supélec, KTH)2 Is this true? There are some indicative results in the literature [3],[7] In this paper we provide a more comprehensive answer! Is this true? There are some indicative results in the literature [3],[7] In this paper we provide a more comprehensive answer!

Circuit-Aware Design of Energy-Efficient Massive MIMO Systems, E. Björnson (Supélec, KTH)3 Introduction

Introduction: Massive MIMO Circuit-Aware Design of Energy-Efficient Massive MIMO Systems, E. Björnson (Supélec, KTH)4

What is New with Massive MIMO? Circuit-Aware Design of Energy-Efficient Massive MIMO Systems, E. Björnson (Supélec, KTH)5 3 sectors, 4 vertical arrays/sector, 20 antennas/array Image source: gigaom.com

Hardware-Constrained Base Stations Circuit-Aware Design of Energy-Efficient Massive MIMO Systems, E. Björnson (Supélec, KTH)6 Partial answers given in this paper Noise amplification Quantization noise Phase noise Modeling of Imperfections Essential to understand impact of low-quality low-power components! Modeling of Imperfections Essential to understand impact of low-quality low-power components!

Circuit-Aware Design of Energy-Efficient Massive MIMO Systems, E. Björnson (Supélec, KTH)7 System Model

Basic Assumptions Circuit-Aware Design of Energy-Efficient Massive MIMO Systems, E. Björnson (Supélec, KTH)8

Conventional and New Uplink Model Circuit-Aware Design of Energy-Efficient Massive MIMO Systems, E. Björnson (Supélec, KTH)9 Phase Drift Rotates phases by Wiener process: Phase Drift Rotates phases by Wiener process: Distortion Noise Proportional to received signal: Distortion Noise Proportional to received signal: Receiver Noise

Characterization: Hardware Imperfections Circuit-Aware Design of Energy-Efficient Massive MIMO Systems, E. Björnson (Supélec, KTH)10

Circuit-Aware Design of Energy-Efficient Massive MIMO Systems, E. Björnson (Supélec, KTH)11 Overview of Analytic Contributions

Channel Estimator and Predictor Circuit-Aware Design of Energy-Efficient Massive MIMO Systems, E. Björnson (Supélec, KTH)12 Need new estimator/ predictor

Achievable User Rates Circuit-Aware Design of Energy-Efficient Massive MIMO Systems, E. Björnson (Supélec, KTH)13 Receiver Noise Signal Power Distortion NoiseInter-User Interference Lemma 2 Closed form expressions for all expectations for (maximum ratio combining (MRC)) Lemma 2 Closed form expressions for all expectations for (maximum ratio combining (MRC))

Asymptotic Limit and Scaling Law Circuit-Aware Design of Energy-Efficient Massive MIMO Systems, E. Björnson (Supélec, KTH)14 Example: Rates with MRC and SLOs Inner product of pilot sequences

Interpretation of Scaling Law Circuit-Aware Design of Energy-Efficient Massive MIMO Systems, E. Björnson (Supélec, KTH)15 Additive distortions Multiplicative distortions Massive MIMO Systems with Hardware-Constrained Base Stations, E. Björnson (Supélec, KTH)15

Circuit-Aware Design of Energy-Efficient Massive MIMO Systems, E. Björnson (Supélec, KTH)16 Numerical Example

Simulation Scenario Circuit-Aware Design of Energy-Efficient Massive MIMO Systems, E. Björnson (Supélec, KTH)17

Area Sum Rates Circuit-Aware Design of Energy-Efficient Massive MIMO Systems, E. Björnson (Supélec, KTH)18 Observations Manageable impact if scaling laws are fulfilled Otherwise: Drastic reduction Observations Manageable impact if scaling laws are fulfilled Otherwise: Drastic reduction Separate Oscillators Can tolerate much more phase noise! Separate Oscillators Can tolerate much more phase noise!

Circuit-Aware Design of Energy-Efficient Massive MIMO Systems, E. Björnson (Supélec, KTH)19 Conclusions

Circuit-Aware Design of Energy-Efficient Massive MIMO Systems, E. Björnson (Supélec, KTH)20

Thank You for Listening! Questions? Also check out: E. Björnson, M. Matthaiou, M. Debbah, “Massive MIMO Systems with Hardware-Constrained Base Stations,” Proceedings of ICASSP, Florence, Italy, May