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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30 References
Noncoherent OFDM-IM and Its Performance Analysis
- BusinessIEEE Transactions on Wireless Communications
- 2018
A closed-form expression is derived for the probability of index error when no transmit diversity is considered under frequency-selective Rayleigh fading and an upper-bound is derived when the transmit diversity scheme is employed.
An Introduction to Deep Learning for the Physical Layer
- Computer ScienceIEEE Transactions on Cognitive Communications and Networking
- 2017
A fundamental new way to think about communications system design as an end-to-end reconstruction task that seeks to jointly optimize transmitter and receiver components in a single process is developed.
Scaling Laws for Noncoherent Energy-Based Communications in the SIMO MAC
- Computer ScienceIEEE Transactions on Information Theory
- 2016
It is shown that, for general channel fading statistics, the performance of the considered one-shot multiuser noncoherent scheme is the same, in a scaling law sense, as that of the optimal coherent scheme exploiting perfect channel knowledge and coding across time.
Deep learning in neural networks: An overview
- Computer ScienceNeural Networks
- 2015
Deep Learning-Based Detector for OFDM-IM
- Computer ScienceIEEE Wireless Communications Letters
- 2019
A novel DL-based detector termed as DeepIM is proposed, which employs a deep neural network with fully connected layers to recover data bits in an OFDM-IM system, which can achieve a near-optimal BER with a lower runtime than existing hand-crafted detectors.
Performance of ED-Based Non-Coherent Massive SIMO Systems in Correlated Rayleigh Fading
- Computer ScienceIEEE Access
- 2019
The analytical results demonstrate the adverse impact of channel correlation on the error probability, which can be attributed to the fact that channel correlation reduces the degrees of freedom.
Spread OFDM-IM With Precoding Matrix and Low-Complexity Detection Designs
- Computer ScienceIEEE Transactions on Vehicular Technology
- 2018
A new spread orthogonal frequency division multiplexing with index modulation (S-OFDM-IM), which employs precoding matrices such as Walsh-Hadamard and Zadoff-Chu matrices to increase the transmit diversity, and derive the bit error probability (BEP) to provide an insight into the diversity and coding gains.
Unsupervised Deep Learning for MU-SIMO Joint Transmitter and Noncoherent Receiver Design
- Computer ScienceIEEE Wireless Communications Letters
- 2019
This letter aims to handle the joint transmitter and noncoherent receiver optimization for multiuser single-input multiple-output (MU-SIMO) communications through unsupervised deep learning. It is…
Optimal ASK Levels for Channel Magnitude Based Diversity Reception in Rayleigh Fading
- Computer ScienceIEEE Transactions on Communications
- 2018
Analytical results on the optimization of the transmit symbol amplitude levels to minimize the SEP subject to a total energy constraint for high SNR and large number of receive diversity branches for both the ED and the WENVD receivers are presented.
Channel Agnostic End-to-End Learning Based Communication Systems with Conditional GAN
- Computer Science2018 IEEE Globecom Workshops (GC Wkshps)
- 2018
An end-to-end wireless communication system in which DNNs are employed for all signal-related functionalities, including encoding, decoding, modulation, and equalization is developed, in which accurate instantaneous channel transfer function is necessary to compute the gradient of the DNN representing.