SICNN: Soft Interference Cancellation Inspired Neural Network Equalizers
- URL: http://arxiv.org/abs/2308.12591v2
- Date: Mon, 11 Mar 2024 10:02:49 GMT
- Title: SICNN: Soft Interference Cancellation Inspired Neural Network Equalizers
- Authors: Stefan Baumgartner and Oliver Lang and Mario Huemer
- Abstract summary: We propose a novel neural network (NN)-based approach, referred to as SICNN.
SICNN is designed by deep unfolding a model-based iterative soft interference cancellation (SIC) method.
We compare the bit error ratio performance of the proposed NN-based equalizers with state-of-the-art model-based and NN-based approaches.
- Score: 1.6451639748812472
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In recent years data-driven machine learning approaches have been extensively
studied to replace or enhance traditionally model-based processing in digital
communication systems. In this work, we focus on equalization and propose a
novel neural network (NN-)based approach, referred to as SICNN. SICNN is
designed by deep unfolding a model-based iterative soft interference
cancellation (SIC) method. It eliminates the main disadvantages of its
model-based counterpart, which suffers from high computational complexity and
performance degradation due to required approximations. We present different
variants of SICNN. SICNNv1 is specifically tailored to single carrier frequency
domain equalization (SC-FDE) systems, the communication system mainly regarded
in this work. SICNNv2 is more universal and is applicable as an equalizer in
any communication system with a block-based data transmission scheme. Moreover,
for both SICNNv1 and SICNNv2, we present versions with highly reduced numbers
of learnable parameters. Another contribution of this work is a novel approach
for generating training datasets for NN-based equalizers, which significantly
improves their performance at high signal-to-noise ratios. We compare the bit
error ratio performance of the proposed NN-based equalizers with
state-of-the-art model-based and NN-based approaches, highlighting the
superiority of SICNNv1 over all other methods for SC-FDE. Exemplarily, to
emphasize its universality, SICNNv2 is additionally applied to a unique word
orthogonal frequency division multiplexing (UW-OFDM) system, where it achieves
state-of-the-art performance. Furthermore, we present a thorough complexity
analysis of the proposed NN-based equalization approaches, and we investigate
the influence of the training set size on the performance of NN-based
equalizers.
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