High-speed ultra-energy-efficient memristor-based massive MIMO SIC detector circuit with hybrid analog-digital computing architecture
High-speed ultra-energy-efficient memristor-based massive MIMO SIC detector circuit with hybrid analog-digital computing architecture
The emerging memristor crossbar array based computing circuits exhibit computing speeds and energy efficiency far surpassing those of traditional digital processors. This type of circuits can complete high-dimensional matrix operations in an extremely short time through analog computing, making it naturally applicable to linear detection and maximum likelihood detection in massive multiple-input multiple-output (MIMO) systems. However, the challenge of employing memristor crossbar arrays to efficiently implement other nonlinear detection algorithms, such as the successive interference cancellation (SIC) algorithm, remains unresolved. In this paper we propose a memristor-based circuit design for massive MIMO SIC detector. The proposed circuit comprises several judiciously designed analog matrix computing modules and hybrid analog-digital slicers, which enables the proposed circuit to perform the SIC algorithm with a hybrid analog-digital computing architecture. We show that the computing speed and the computational energyefficiency of the proposed detector circuit are 43 times faster and 110 times higher, respectively, than those of a traditional 8- core digital signal processor (DSP), and also advantageous over the benchmark high-performance field programmable gate array (FPGA) and graphics processing unit (GPU).
Analog matrix computing, in-memory computing, massive MIMO, memristor crossbar array, successive interference cancellation
11495-11500
Bi, Jia-Hui
97a5186b-ef45-4db0-981e-85563c99e6a1
Yang, Shaoshi
23650ec4-bcc8-4a2c-b1e7-a30893f52e52
Chen, Sheng
9310a111-f79a-48b8-98c7-383ca93cbb80
Zhang, Ping
2def4374-679d-41d1-bf3a-483028a73275
19 July 2025
Bi, Jia-Hui
97a5186b-ef45-4db0-981e-85563c99e6a1
Yang, Shaoshi
23650ec4-bcc8-4a2c-b1e7-a30893f52e52
Chen, Sheng
9310a111-f79a-48b8-98c7-383ca93cbb80
Zhang, Ping
2def4374-679d-41d1-bf3a-483028a73275
Bi, Jia-Hui, Yang, Shaoshi, Chen, Sheng and Zhang, Ping
(2025)
High-speed ultra-energy-efficient memristor-based massive MIMO SIC detector circuit with hybrid analog-digital computing architecture.
IEEE Transactions on Vehicular Technology, 74 (7), .
(doi:10.1109/TVT.2025.3544093).
Abstract
The emerging memristor crossbar array based computing circuits exhibit computing speeds and energy efficiency far surpassing those of traditional digital processors. This type of circuits can complete high-dimensional matrix operations in an extremely short time through analog computing, making it naturally applicable to linear detection and maximum likelihood detection in massive multiple-input multiple-output (MIMO) systems. However, the challenge of employing memristor crossbar arrays to efficiently implement other nonlinear detection algorithms, such as the successive interference cancellation (SIC) algorithm, remains unresolved. In this paper we propose a memristor-based circuit design for massive MIMO SIC detector. The proposed circuit comprises several judiciously designed analog matrix computing modules and hybrid analog-digital slicers, which enables the proposed circuit to perform the SIC algorithm with a hybrid analog-digital computing architecture. We show that the computing speed and the computational energyefficiency of the proposed detector circuit are 43 times faster and 110 times higher, respectively, than those of a traditional 8- core digital signal processor (DSP), and also advantageous over the benchmark high-performance field programmable gate array (FPGA) and graphics processing unit (GPU).
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BJH_SIC_20250218
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Accepted/In Press date: 13 February 2025
e-pub ahead of print date: 29 May 2025
Published date: 19 July 2025
Keywords:
Analog matrix computing, in-memory computing, massive MIMO, memristor crossbar array, successive interference cancellation
Identifiers
Local EPrints ID: 499201
URI: http://eprints.soton.ac.uk/id/eprint/499201
ISSN: 0018-9545
PURE UUID: 42fb997d-b4ab-444a-8828-556825bffbcb
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Date deposited: 12 Mar 2025 17:30
Last modified: 29 Jul 2025 16:30
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Contributors
Author:
Jia-Hui Bi
Author:
Shaoshi Yang
Author:
Sheng Chen
Author:
Ping Zhang
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