Statistical Learning Based Joint Antenna Selection and User Scheduling for Single-Cell Massive MIMO Systems

@article{Guo2021StatisticalLB,
  title={Statistical Learning Based Joint Antenna Selection and User Scheduling for Single-Cell Massive MIMO Systems},
  author={Mangqing Guo and Mustafa Cenk Gursoy},
  journal={IEEE Transactions on Green Communications and Networking},
  year={2021},
  volume={5},
  pages={471-483}
}
  • Mangqing Guo, M. C. Gursoy
  • Published 26 October 2020
  • Computer Science, Mathematics
  • IEEE Transactions on Green Communications and Networking
Large number of antennas and radio frequency (RF) chains at the base stations (BSs) lead to high energy consumption in massive MIMO systems. Thus, how to improve the energy efficiency (EE) with a computationally efficient approach is a significant challenge in the design of massive MIMO systems. With this motivation, a learning-based stochastic gradient descent algorithm is proposed in this article to obtain the optimal joint uplink and downlink EE with joint antenna selection and user… Expand
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