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Machine learning assisted adaptive LDPC coded system design and analysis

Machine learning assisted adaptive LDPC coded system design and analysis
Machine learning assisted adaptive LDPC coded system design and analysis
In this paper, we propose a novel machine learning (ML) assisted low-latency low density parity check (LDPC) coded adaptive modulation (AM) system, where short block-length LDPC codes are used. Conventional adaptive modulation and coding (AMC) system includes fixed look-up table method, which is also called inner loop link adaptation (ILLA) and outer loop link adaptation (OLLA). For ILLA, the adaptive capability is achieved by switching the modulation and coding modes based on a look-up table using signal-to-noise ratio (SNR) thresholds at the target bit error rate (BER), while OLLA builds upon the ILLA method by dynamically adjusting the SNR thresholds to further optimize the system performance. Although both improve the system overall throughput by switching between different transmission modes, there is still a gap to optimal performance as the BER is comparatively far away from the target BER. Machine learning (ML) is a promising solution in solving various classification problems. In
this work, the supervised learning based k-nearest neighbours (KNN) algorithm is invoked for choosing the optimum transmission mode based on the training data and the instantaneous SNR. This work focuses on the low-latency communications scenarios, where short block-length LDPC codes are utilized. On the other hand, given the short block-length constraint, we propose to
artificially generate the training data to train our ML assisted AMC scheme. The simulation results show that the proposed MLLDPC-AMC scheme can achieve a higher throughput than the ILLA system while maintaining the target BER. Compared with OLLA, the proposed scheme can maintain the target BER while the OLLA fails to maintain the target BER when the block length is short. In addition, when considering the channel estimation errors, the performance of the proposed ML-LDPC-AMC maintains the target BER, while the ILLA system’s BER performance can be higher than the target BER.
1751-8644
Xie, Cong
27acdc82-e3fb-48bd-9096-42958485baea
El-Hajjar, Mohammed
3a829028-a427-4123-b885-2bab81a44b6f
Ng, Soon Xin
e19a63b0-0f12-4591-ab5f-554820d5f78c
Xie, Cong
27acdc82-e3fb-48bd-9096-42958485baea
El-Hajjar, Mohammed
3a829028-a427-4123-b885-2bab81a44b6f
Ng, Soon Xin
e19a63b0-0f12-4591-ab5f-554820d5f78c

Xie, Cong, El-Hajjar, Mohammed and Ng, Soon Xin (2023) Machine learning assisted adaptive LDPC coded system design and analysis. IET Control Theory and Applications. (In Press)

Record type: Article

Abstract

In this paper, we propose a novel machine learning (ML) assisted low-latency low density parity check (LDPC) coded adaptive modulation (AM) system, where short block-length LDPC codes are used. Conventional adaptive modulation and coding (AMC) system includes fixed look-up table method, which is also called inner loop link adaptation (ILLA) and outer loop link adaptation (OLLA). For ILLA, the adaptive capability is achieved by switching the modulation and coding modes based on a look-up table using signal-to-noise ratio (SNR) thresholds at the target bit error rate (BER), while OLLA builds upon the ILLA method by dynamically adjusting the SNR thresholds to further optimize the system performance. Although both improve the system overall throughput by switching between different transmission modes, there is still a gap to optimal performance as the BER is comparatively far away from the target BER. Machine learning (ML) is a promising solution in solving various classification problems. In
this work, the supervised learning based k-nearest neighbours (KNN) algorithm is invoked for choosing the optimum transmission mode based on the training data and the instantaneous SNR. This work focuses on the low-latency communications scenarios, where short block-length LDPC codes are utilized. On the other hand, given the short block-length constraint, we propose to
artificially generate the training data to train our ML assisted AMC scheme. The simulation results show that the proposed MLLDPC-AMC scheme can achieve a higher throughput than the ILLA system while maintaining the target BER. Compared with OLLA, the proposed scheme can maintain the target BER while the OLLA fails to maintain the target BER when the block length is short. In addition, when considering the channel estimation errors, the performance of the proposed ML-LDPC-AMC maintains the target BER, while the ILLA system’s BER performance can be higher than the target BER.

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Accepted/In Press date: 11 December 2023

Identifiers

Local EPrints ID: 485589
URI: http://eprints.soton.ac.uk/id/eprint/485589
ISSN: 1751-8644
PURE UUID: 6cb022bf-2430-4c6b-8429-78d27662db5c
ORCID for Mohammed El-Hajjar: ORCID iD orcid.org/0000-0002-7987-1401
ORCID for Soon Xin Ng: ORCID iD orcid.org/0000-0002-0930-7194

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Date deposited: 12 Dec 2023 17:30
Last modified: 18 Mar 2024 03:22

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Contributors

Author: Cong Xie
Author: Mohammed El-Hajjar ORCID iD
Author: Soon Xin Ng ORCID iD

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