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Hybrid Beamforming and Deep-Learning-Enabled Precoding for O-RAN mmWave Massive MIMO
Ngo Hoang Tu
, Minhyun Kim
,
Kyungchun Lee
Dept. of Electrical and Information Engineering
Seoul National University of Science and Technology (SNUST)
Electronics and Telecommunications Research Institute
Research output
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peer-review
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Engineering
Deep Learning Method
100%
Millimeter Wave
100%
Beamforming
100%
Radio Access Network
100%
Spectral Efficiency
40%
Execution Time
40%
Beamformer
40%
Service Requirement
20%
Quality of Service
20%
Limitations
20%
Computational Complexity
20%
Output System
20%
Optimization Approach
20%
Inherent Characteristic
20%
Computer Science
Deep Learning Method
100%
MIMO Systems
100%
Spectral Efficiency
40%
Execution Time
40%
Service Requirement
20%
Quality of Service
20%
Superior Performance
20%
Network Architecture
20%
Wireless Network
20%
Computational Complexity
20%
Approximation (Algorithm)
20%
Information Theory
20%