Deep Energy Autoencoder for Noncoherent Multicarrier MU-SIMO Systems

@article{vanLuong2020DeepEA,
  title={Deep Energy Autoencoder for Noncoherent Multicarrier MU-SIMO Systems},
  author={Thien van Luong and Youngwook Ko and Ngo Anh Vien and Michail Matthaiou and Hien Quoc Ngo},
  journal={IEEE Transactions on Wireless Communications},
  year={2020},
  volume={19},
  pages={3952-3962}
}
We propose a novel deep energy autoencoder (EA) for noncoherent multicarrier multiuser single-input multiple-output (MU-SIMO) systems under fading channels. In particular, a single-user noncoherent EA-based (NC-EA) system, based on the multicarrier SIMO framework, is first proposed, where both the transmitter and receiver are represented by deep neural networks (DNNs), known as the encoder and decoder of an EA. Unlike existing systems, the decoder of the NC-EA is fed only with the energy… 

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