Federated Transfer Learning Based Cooperative Wideband Spectrum Sensing with Model Pruning

Jibin Jia, Peihao Dong, Fuhui Zhou, Qihui Wu
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Abstract

For ultra-wideband and high-rate wireless communication systems, wideband spectrum sensing (WSS) is critical, since it empowers secondary users (SUs) to capture the spectrum holes for opportunistic transmission. However, WSS encounters challenges such as excessive costs of hardware and computation due to the high sampling rate, as well as robustness issues arising from scenario mismatch. In this paper, a WSS neural network (WSSNet) is proposed by exploiting multicoset preprocessing to enable the sub-Nyquist sampling, with the two dimensional convolution design specifically tailored to work with the preprocessed samples. A federated transfer learning (FTL) based framework mobilizing multiple SUs is further developed to achieve a robust model adaptable to various scenarios, which is paved by the selective weight pruning for the fast model adaptation and inference. Simulation results demonstrate that the proposed FTL-WSSNet achieves the fairly good performance in different target scenarios even without local adaptation samples.
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基于联合迁移学习的合作式宽带频谱传感与模型剪枝
对于超宽带和高速率无线通信系统来说,宽带频谱感知(WSS)至关重要,因为它能使次级用户(SU)捕捉频谱空穴,进行机会性传输。然而,WSS 面临着硬件和计算成本过高、采样率过高以及场景不匹配带来的鲁棒性问题等挑战。本文提出了一种 WSS 神经网络(WSSNet),它利用多集预处理来实现亚奈奎斯特采样,并采用专门针对预处理样本的二维卷积设计。进一步开发了基于联合迁移学习(FTL)的框架,调动多个 SU 来实现适应各种场景的稳健模型,并通过选择性权重剪枝来实现快速模型适应和推理。仿真结果表明,即使没有局部适应样本,所提出的 FTL-WSSNet 也能在不同目标场景下实现相当好的性能。
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