Deep-Learning-Aided Cross-Layer Resource Allocation of OFDMA/NOMA Video Communication Systems

In previous study, deep learning and autoencoder have been applied for data detection of NOMA systems, rather than the resource allocation of OFDMA/NOMA systems. In previous work, we proposed the use of non-deep-learning-based cross-layer resource allocation for OFDMA/NOMA video communication system...

Full description

Bibliographic Details
Main Authors: Shu-Ming Tseng, Yung-Fang Chen, Cheng-Shun Tsai, Wen-Da Tsai
Format: Article
Language:English
Published: IEEE 2019-01-01
Series:IEEE Access
Subjects:
Online Access:https://ieeexplore.ieee.org/document/8886366/
id doaj-2d67b220f8074547849b0eeb6e715b1d
record_format Article
spelling doaj-2d67b220f8074547849b0eeb6e715b1d2021-03-30T00:20:08ZengIEEEIEEE Access2169-35362019-01-01715773015774010.1109/ACCESS.2019.29501278886366Deep-Learning-Aided Cross-Layer Resource Allocation of OFDMA/NOMA Video Communication SystemsShu-Ming Tseng0https://orcid.org/0000-0002-5017-3159Yung-Fang Chen1https://orcid.org/0000-0002-4519-5169Cheng-Shun Tsai2Wen-Da Tsai3Department of Electronic Engineering, National Taipei University of Technology, Taipei, TaiwanDepartment of Communication Engineering, National Central University, Taoyuan, TaiwanDepartment of Electronic Engineering, National Taipei University of Technology, Taipei, TaiwanCompal Electronics, Inc., Taipei, TaiwanIn previous study, deep learning and autoencoder have been applied for data detection of NOMA systems, rather than the resource allocation of OFDMA/NOMA systems. In previous work, we proposed the use of non-deep-learning-based cross-layer resource allocation for OFDMA/NOMA video communication systems. In this paper, we apply a deep neural network and supervised learning to an OFDMA subcarrier assignment and NOMA user grouping problem in downlink video communication systems. The resource allocation results from our previous work are used as training data at the training stage. At the testing stage, we propose a conversion algorithm to map the result of the sigmoid activation function (values between [0,1]) of the output layer of the DNN to either zero (unassigned) or one (assigned), in order to meet two hard constraints. The PSNR performance is very close (within 0.2dB) to that but has lower complexity, due to the non-iterative approach used in the testing stage of the DNN.https://ieeexplore.ieee.org/document/8886366/Deep neural networksupervised learningmulti-label classificationapplication layerphysical layerOFDMA
collection DOAJ
language English
format Article
sources DOAJ
author Shu-Ming Tseng
Yung-Fang Chen
Cheng-Shun Tsai
Wen-Da Tsai
spellingShingle Shu-Ming Tseng
Yung-Fang Chen
Cheng-Shun Tsai
Wen-Da Tsai
Deep-Learning-Aided Cross-Layer Resource Allocation of OFDMA/NOMA Video Communication Systems
IEEE Access
Deep neural network
supervised learning
multi-label classification
application layer
physical layer
OFDMA
author_facet Shu-Ming Tseng
Yung-Fang Chen
Cheng-Shun Tsai
Wen-Da Tsai
author_sort Shu-Ming Tseng
title Deep-Learning-Aided Cross-Layer Resource Allocation of OFDMA/NOMA Video Communication Systems
title_short Deep-Learning-Aided Cross-Layer Resource Allocation of OFDMA/NOMA Video Communication Systems
title_full Deep-Learning-Aided Cross-Layer Resource Allocation of OFDMA/NOMA Video Communication Systems
title_fullStr Deep-Learning-Aided Cross-Layer Resource Allocation of OFDMA/NOMA Video Communication Systems
title_full_unstemmed Deep-Learning-Aided Cross-Layer Resource Allocation of OFDMA/NOMA Video Communication Systems
title_sort deep-learning-aided cross-layer resource allocation of ofdma/noma video communication systems
publisher IEEE
series IEEE Access
issn 2169-3536
publishDate 2019-01-01
description In previous study, deep learning and autoencoder have been applied for data detection of NOMA systems, rather than the resource allocation of OFDMA/NOMA systems. In previous work, we proposed the use of non-deep-learning-based cross-layer resource allocation for OFDMA/NOMA video communication systems. In this paper, we apply a deep neural network and supervised learning to an OFDMA subcarrier assignment and NOMA user grouping problem in downlink video communication systems. The resource allocation results from our previous work are used as training data at the training stage. At the testing stage, we propose a conversion algorithm to map the result of the sigmoid activation function (values between [0,1]) of the output layer of the DNN to either zero (unassigned) or one (assigned), in order to meet two hard constraints. The PSNR performance is very close (within 0.2dB) to that but has lower complexity, due to the non-iterative approach used in the testing stage of the DNN.
topic Deep neural network
supervised learning
multi-label classification
application layer
physical layer
OFDMA
url https://ieeexplore.ieee.org/document/8886366/
work_keys_str_mv AT shumingtseng deeplearningaidedcrosslayerresourceallocationofofdmanomavideocommunicationsystems
AT yungfangchen deeplearningaidedcrosslayerresourceallocationofofdmanomavideocommunicationsystems
AT chengshuntsai deeplearningaidedcrosslayerresourceallocationofofdmanomavideocommunicationsystems
AT wendatsai deeplearningaidedcrosslayerresourceallocationofofdmanomavideocommunicationsystems
_version_ 1724188421833883648