Abstract:
Two-stage beamforming is a transmit strategy that uses two types of beamformers to reduce the feedback overhead of frequency-division-duplexing massive multiple-input mul...Show MoreMetadata
Abstract:
Two-stage beamforming is a transmit strategy that uses two types of beamformers to reduce the feedback overhead of frequency-division-duplexing massive multiple-input multiple-output systems that are spatially correlated. In this paper, we present large system analysis of two-stage beamforming when a transmitter has limited channel information from feedback and when regularized-zero-forcing (RZF) is used as a second-stage beamformer. We consider two random-vector-quantization-based feedback schemes that can be respectively applied when users have perfect channel information or perfect effective channel information. For each feedback method, we analyze both expected signal-to-interference-plus-noise ratio (SINR) and expected rate loss and then characterize their bounds as a function of the number of feedback bits. From the characterization, we reveal that the sum rate of two-stage beamforming is very sensitive to the regularization parameter of RZF, especially when the number of feedback bits is limited. Motivated by this, we derive the optimal regularization parameter that maximizes the SINR of two-stage beamforming with limited feedback. Using simulations, we verify the tightness of the characterized bounds and quantify how the use of the optimal regularization parameter improves the sum rate of two-stage beamforming.
Published in: IEEE Transactions on Vehicular Technology ( Volume: 67, Issue: 6, June 2018)
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- IEEE Keywords
- Index Terms
- Massive Multiple-input Multiple-output ,
- Massive Multiple-input Multiple-output Systems ,
- Limited Feedback ,
- Frequency Division Duplex ,
- Two-stage Beamforming ,
- Regularization Parameter ,
- Channel Information ,
- Effective Channel ,
- Sum Rate ,
- Perfect Information ,
- Signal-to-interference-plus-noise Ratio ,
- Feedback Method ,
- Optimal Regularization Parameter ,
- Quantum ,
- Covariance Matrix ,
- User Groups ,
- Additive Noise ,
- Gaussian Model ,
- Parameters In Group ,
- Random Vector ,
- Quantization Error ,
- Deterministic Equations ,
- User Channel ,
- Result Of Proposition ,
- Channel Components ,
- Downlink Channel ,
- Real Error ,
- Characterization Results ,
- Antenna Array ,
- Azimuth Angle
- Author Keywords
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Massive Multiple-input Multiple-output ,
- Massive Multiple-input Multiple-output Systems ,
- Limited Feedback ,
- Frequency Division Duplex ,
- Two-stage Beamforming ,
- Regularization Parameter ,
- Channel Information ,
- Effective Channel ,
- Sum Rate ,
- Perfect Information ,
- Signal-to-interference-plus-noise Ratio ,
- Feedback Method ,
- Optimal Regularization Parameter ,
- Quantum ,
- Covariance Matrix ,
- User Groups ,
- Additive Noise ,
- Gaussian Model ,
- Parameters In Group ,
- Random Vector ,
- Quantization Error ,
- Deterministic Equations ,
- User Channel ,
- Result Of Proposition ,
- Channel Components ,
- Downlink Channel ,
- Real Error ,
- Characterization Results ,
- Antenna Array ,
- Azimuth Angle
- Author Keywords