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Bibliographic Details
Main Authors: Wang, Jiazhao, Jiang, Wenchao
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2507.17106
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author Wang, Jiazhao
Jiang, Wenchao
author_facet Wang, Jiazhao
Jiang, Wenchao
contents Spectrum multiplexer enables simultaneous transmission of multiple narrow-band IoT signals through gateway devices, thereby enhancing overall spectrum utilization. We propose a novel solution based on filter banks that offer increased efficiency and minimal distortion compared with conventional methods. We follow a model-driven approach to integrate the neural networks into the filter bank design by interpreting the neural network models as filter banks. The proposed NN-based filter banks can leverage advanced learning capabilities to achieve distortionless multiplexing and harness hardware acceleration for high efficiency. Then, we evaluate the performance of the spectrum multiplexer implemented by NN-based filter banks for various types of signals and environmental conditions. The results show that it can achieve a low distortion level down to $-39$dB normalized mean squared error. Furthermore, it achieves up to $35$ times execution efficiency gain and $10$dB SNR gain compared with the conventional methods. The field applications show that it can handle both the heterogeneous and homogeneous IoT networks, resulting in high packet reception ratio at the standard receivers up to $98\%$.
format Preprint
id arxiv_https___arxiv_org_abs_2507_17106
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Efficient and Distortion-less Spectrum Multiplexer via Neural Network-based Filter Banks
Wang, Jiazhao
Jiang, Wenchao
Signal Processing
Spectrum multiplexer enables simultaneous transmission of multiple narrow-band IoT signals through gateway devices, thereby enhancing overall spectrum utilization. We propose a novel solution based on filter banks that offer increased efficiency and minimal distortion compared with conventional methods. We follow a model-driven approach to integrate the neural networks into the filter bank design by interpreting the neural network models as filter banks. The proposed NN-based filter banks can leverage advanced learning capabilities to achieve distortionless multiplexing and harness hardware acceleration for high efficiency. Then, we evaluate the performance of the spectrum multiplexer implemented by NN-based filter banks for various types of signals and environmental conditions. The results show that it can achieve a low distortion level down to $-39$dB normalized mean squared error. Furthermore, it achieves up to $35$ times execution efficiency gain and $10$dB SNR gain compared with the conventional methods. The field applications show that it can handle both the heterogeneous and homogeneous IoT networks, resulting in high packet reception ratio at the standard receivers up to $98\%$.
title Efficient and Distortion-less Spectrum Multiplexer via Neural Network-based Filter Banks
topic Signal Processing
url https://arxiv.org/abs/2507.17106