Coding for the Gaussian Channel in the Finite Blocklength Regime Using a
CNN-Autoencoder
- URL: http://arxiv.org/abs/2306.09258v1
- Date: Thu, 25 May 2023 19:13:31 GMT
- Title: Coding for the Gaussian Channel in the Finite Blocklength Regime Using a
CNN-Autoencoder
- Authors: Nourhan Hesham, Mohamed Bouzid, Ahmad Abdel-Qader, and Anas Chaaban
- Abstract summary: Supporting low latency communications requires the use of short codes, while attaining vanishing frame error probability (FEP) requires long codes.
This paper investigates the potential of Convolutional Neural Networks autoencoders (CNN-AE) in approaching the theoretical maximum achievable rate.
Numerical results show that the CNN-AE outperforms benchmark schemes and approaches the theoretical maximum rate.
- Score: 13.276758337527038
- License: http://creativecommons.org/publicdomain/zero/1.0/
- Abstract: The development of delay-sensitive applications that require ultra high
reliability created an additional challenge for wireless networks. This led to
Ultra-Reliable Low-Latency Communications, as a use case that 5G and beyond 5G
systems must support. However, supporting low latency communications requires
the use of short codes, while attaining vanishing frame error probability (FEP)
requires long codes. Thus, developing codes for the finite blocklength regime
(FBR) achieving certain reliability requirements is necessary. This paper
investigates the potential of Convolutional Neural Networks autoencoders
(CNN-AE) in approaching the theoretical maximum achievable rate over a Gaussian
channel for a range of signal-to-noise ratios at a fixed blocklength and target
FEP, which is a different perspective compared to existing works that explore
the use of CNNs from bit-error and symbol-error rate perspectives. We explain
the studied CNN-AE architecture, evaluate it numerically, and compare it to the
theoretical maximum achievable rate and the achievable rates of polar coded
quadrature amplitude modulation (QAM), Reed-Muller coded QAM, multilevel polar
coded modulation, and a TurboAE-MOD scheme from the literature. Numerical
results show that the CNN-AE outperforms these benchmark schemes and approaches
the theoretical maximum rate, demonstrating the capability of CNN-AEs in
learning good codes for delay-constrained applications.
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