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Hauptverfasser: Karakoca, Erhan, Çevik, Hüseyin, Hökelek, İbrahim, Görçin, Ali
Format: Preprint
Veröffentlicht: 2025
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2503.20500
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author Karakoca, Erhan
Çevik, Hüseyin
Hökelek, İbrahim
Görçin, Ali
author_facet Karakoca, Erhan
Çevik, Hüseyin
Hökelek, İbrahim
Görçin, Ali
contents Neural receivers have recently become a popular topic, where the received signals can be directly decoded by data driven mechanisms such as machine learning and deep learning. In this paper, we propose two novel neural network based orthogonal frequency division multiplexing (OFDM) receivers performing channel estimation and equalization tasks and directly predicting log likelihood ratios (LLRs) from the received in phase and quadrature phase (IQ) signals. The first network, the Dual Attention Transformer (DAT), employs a state of the art (SOTA) transformer architecture with an attention mechanism. The second network, the Residual Dual Non Local Attention Network (RDNLA), utilizes a parallel residual architecture with a non local attention block. The bit error rate (BER) and block error rate (BLER) performance of various SOTA neural receiver architectures is compared with our proposed methods across different signal to noise ratio (SNR) levels. The simulation results show that DAT and RDNLA outperform both traditional communication systems and existing neural receiver models.
format Preprint
id arxiv_https___arxiv_org_abs_2503_20500
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Novel Deep Neural OFDM Receiver Architectures for LLR Estimation
Karakoca, Erhan
Çevik, Hüseyin
Hökelek, İbrahim
Görçin, Ali
Signal Processing
Artificial Intelligence
Neural receivers have recently become a popular topic, where the received signals can be directly decoded by data driven mechanisms such as machine learning and deep learning. In this paper, we propose two novel neural network based orthogonal frequency division multiplexing (OFDM) receivers performing channel estimation and equalization tasks and directly predicting log likelihood ratios (LLRs) from the received in phase and quadrature phase (IQ) signals. The first network, the Dual Attention Transformer (DAT), employs a state of the art (SOTA) transformer architecture with an attention mechanism. The second network, the Residual Dual Non Local Attention Network (RDNLA), utilizes a parallel residual architecture with a non local attention block. The bit error rate (BER) and block error rate (BLER) performance of various SOTA neural receiver architectures is compared with our proposed methods across different signal to noise ratio (SNR) levels. The simulation results show that DAT and RDNLA outperform both traditional communication systems and existing neural receiver models.
title Novel Deep Neural OFDM Receiver Architectures for LLR Estimation
topic Signal Processing
Artificial Intelligence
url https://arxiv.org/abs/2503.20500