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Partial learning-based iterative detection of MIMO systems

Partial learning-based iterative detection of MIMO systems
Partial learning-based iterative detection of MIMO systems
One of the major challenges in multiple input multiple output (MIMO) system design is the salient trade-off between performance and computational complexity. For instance, the maximum likelihood (Max-L) detection is capable of achieving optimal performance based on exhaustive search, but its exponential computational complexity renders it impractical. By contrast, zero-forcing detection has low computational complexity, while having significantly worse performance compared to that of the Max-L. The recent developments in deep learning (DL) based detection techniques relying on back propagation neural networks (BPNN) constitute promising candidates for the open challenge of the MIMO detection performance versus complexity trade-off. Against this background, in this paper, we propose a novel partial learning (PL) model for MIMO detection with soft-bit decisions that can be incorporated into channel-coded communication systems. More explicitly, the proposed PL model consists of two parts: first, a subset of the transmitted MIMO symbols is detected by the data-driven DL technique and then the detected symbols are removed from the received MIMO signals for the sake of interference cancellation. Afterwards, the classic model-based zero-forcing detector is invoked to detect the remaining symbols at a linear complexity. As a result, near-optimal MIMO performance can be achieved with substantially reduced computational complexity compared to Max-L and BPNN. The proposed solution is adapted to both accept and produce soft information, so that iterative detection can be performed, where the iteration gain is analyzed by extrinsic information transfer (EXIT) charts. Our simulation results demonstrate that the proposed partial learning-based iterative detection is capable of attaining near-Max-L performance while attaining a flexible performance versus complexity trade-off.
2644-1330
Babulghum, Abdulaziz
deebfb34-3693-43e1-a881-e0486b7c3ce2
Xu, Chao
5710a067-6320-4f5a-8689-7881f6c46252
Ng, Soon Xin
e19a63b0-0f12-4591-ab5f-554820d5f78c
El-Hajjar, Mohammed
3a829028-a427-4123-b885-2bab81a44b6f
Babulghum, Abdulaziz
deebfb34-3693-43e1-a881-e0486b7c3ce2
Xu, Chao
5710a067-6320-4f5a-8689-7881f6c46252
Ng, Soon Xin
e19a63b0-0f12-4591-ab5f-554820d5f78c
El-Hajjar, Mohammed
3a829028-a427-4123-b885-2bab81a44b6f

Babulghum, Abdulaziz, Xu, Chao, Ng, Soon Xin and El-Hajjar, Mohammed (2024) Partial learning-based iterative detection of MIMO systems. IEEE Open Journal of Vehicular Technology, 5. (doi:10.1109/OJVT.2024.3482008).

Record type: Article

Abstract

One of the major challenges in multiple input multiple output (MIMO) system design is the salient trade-off between performance and computational complexity. For instance, the maximum likelihood (Max-L) detection is capable of achieving optimal performance based on exhaustive search, but its exponential computational complexity renders it impractical. By contrast, zero-forcing detection has low computational complexity, while having significantly worse performance compared to that of the Max-L. The recent developments in deep learning (DL) based detection techniques relying on back propagation neural networks (BPNN) constitute promising candidates for the open challenge of the MIMO detection performance versus complexity trade-off. Against this background, in this paper, we propose a novel partial learning (PL) model for MIMO detection with soft-bit decisions that can be incorporated into channel-coded communication systems. More explicitly, the proposed PL model consists of two parts: first, a subset of the transmitted MIMO symbols is detected by the data-driven DL technique and then the detected symbols are removed from the received MIMO signals for the sake of interference cancellation. Afterwards, the classic model-based zero-forcing detector is invoked to detect the remaining symbols at a linear complexity. As a result, near-optimal MIMO performance can be achieved with substantially reduced computational complexity compared to Max-L and BPNN. The proposed solution is adapted to both accept and produce soft information, so that iterative detection can be performed, where the iteration gain is analyzed by extrinsic information transfer (EXIT) charts. Our simulation results demonstrate that the proposed partial learning-based iterative detection is capable of attaining near-Max-L performance while attaining a flexible performance versus complexity trade-off.

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More information

Accepted/In Press date: 12 October 2024
Published date: 16 October 2024

Identifiers

Local EPrints ID: 495577
URI: http://eprints.soton.ac.uk/id/eprint/495577
ISSN: 2644-1330
PURE UUID: fb19ef0e-65d5-4829-bdb4-c1d8ef66d2a2
ORCID for Chao Xu: ORCID iD orcid.org/0000-0002-8423-0342
ORCID for Soon Xin Ng: ORCID iD orcid.org/0000-0002-0930-7194
ORCID for Mohammed El-Hajjar: ORCID iD orcid.org/0000-0002-7987-1401

Catalogue record

Date deposited: 18 Nov 2024 17:45
Last modified: 19 Nov 2024 02:44

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Contributors

Author: Abdulaziz Babulghum
Author: Chao Xu ORCID iD
Author: Soon Xin Ng ORCID iD
Author: Mohammed El-Hajjar ORCID iD

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