Signal Detection Method for OTFS System Based on Adaptive Wavelet Convolutional Neural Network
You Wu, Mengyao Zhou

TL;DR
This paper introduces a new signal detection method for OTFS systems using an adaptive wavelet convolutional neural network to improve performance and efficiency.
Contribution
The novel approach replaces fixed convolution kernels with adaptive wavelet layers to better match OTFS signal characteristics.
Findings
The AWCNN model achieves faster convergence and better bit error rate performance at low signal-to-noise ratios.
Replacing the first CNN layer with an adaptive wavelet layer enhances sparse feature extraction from OTFS signals.
Incorporating message-passing algorithm estimates improves detection performance.
Abstract
In Orthogonal Time–Frequency Space (OTFS) systems, signal detection algorithms based on convolutional neural networks (CNNs) suffer from insufficient feature extraction and are limited by local mixing. Additionally, fixed convolution kernels struggle to match the sparsity and non-stationary characteristics of OTFS signals in the delay-Doppler domain, resulting in slow convergence and high training costs. We do not stop at simply integrating more features outside the existing CNN framework. Instead, we go deeper into the network and replace the fixed convolution kernels with wavelet convolution layers that have time–frequency-adaptive capabilities. This fundamental change allows the network to more intrinsically match the physical characteristics of OTFS signals in the delay-Doppler domain, thereby achieving excellent detection performance while also gaining faster convergence…
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Taxonomy
TopicsPAPR reduction in OFDM · Wireless Signal Modulation Classification · Advanced Photonic Communication Systems
