Massive MIMO in Real Propagation Environments: Do All Antennas Contribute Equally?
July 21, 2015 Β· Declared Dead Β· π IEEE Transactions on Communications
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Authors
Xiang Gao, Ove Edfors, Fredrik Tufvesson, Erik G. Larsson
arXiv ID
1507.05994
Category
cs.IT: Information Theory
Citations
259
Venue
IEEE Transactions on Communications
Last Checked
3 months ago
Abstract
Massive MIMO can greatly increase both spectral and transmit-energy efficiency. This is achieved by allowing the number of antennas and RF chains to grow very large. However, the challenges include high system complexity and hardware energy consumption. Here we investigate the possibilities to reduce the required number of RF chains, by performing antenna selection. While this approach is not a very effective strategy for theoretical independent Rayleigh fading channels, a substantial reduction in the number of RF chains can be achieved for real massive MIMO channels, without significant performance loss. We evaluate antenna selection performance on measured channels at 2.6 GHz, using a linear and a cylindrical array, both having 128 elements. Sum-rate maximization is used as the criterion for antenna selection. A selection scheme based on convex optimization is nearly optimal and used as a benchmark. The achieved sum-rate is compared with that of a very simple scheme that selects the antennas with the highest received power. The power-based scheme gives performance close to the convex optimization scheme, for the measured channels. This observation indicates a potential for significant reductions of massive MIMO implementation complexity, by reducing the number of RF chains and performing antenna selection using simple algorithms.
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