A Real-Time Deep Learning OFDM Receiver

Author:

Brennsteiner Stefan1ORCID,Arslan Tughrul1ORCID,Thompson John1ORCID,McCormick Andrew2ORCID

Affiliation:

1. University of Edinburgh, Edinburgh, UK

2. Alpha Data Parallel Systems Ltd., Edinburgh, UK

Abstract

Machine learning in the physical layer of communication systems holds the potential to improve performance and simplify design methodology. Many algorithms have been proposed; however, the model complexity is often unfeasible for real-time deployment. The real-time processing capability of these systems has not been proven yet. In this work, we propose a novel, less complex, fully connected neural network to perform channel estimation and signal detection in an orthogonal frequency division multiplexing system. The memory requirement, which is often the bottleneck for fully connected neural networks, is reduced by ≈ 27 times by applying known compression techniques in a three-step training process. Extensive experiments were performed for pruning and quantizing the weights of the neural network detector. Additionally, Huffman encoding was used on the weights to further reduce memory requirements. Based on this approach, we propose the first field-programmable gate array based, real-time capable neural network accelerator, specifically designed to accelerate the orthogonal frequency division multiplexing detector workload. The accelerator is synthesized for a Xilinx RFSoC field-programmable gate array, uses small-batch processing to increase throughput, efficiently supports branching neural networks, and implements superscalar Huffman decoders.

Funder

Engineering and Physical Sciences Research Council of the United Kingdom and Alpha Data Parallel Systems Ltd.

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science

Reference53 articles.

1. GitHub. n.d. google-research/google-research. Retrieved November 8 2021 from https://github.com/google-research/google-research.

2. IEEE Wireless Communications Letters 2018 Unsupervised deep learning for MU-SIMO joint transmitter and noncoherent receiver design

3. IEEE. 2019. 754-2019—IEEE Standard for Floating-Point Arithmetic . IEEE Los Alamitos CA. https://doi.org/10.1109/IEEESTD.2019.8766229

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