基于卷积神经网络的认知无线电频谱感知

Dong Han, Gounou Charles Sobabe, Chenjie Zhang, Xuemei Bai, Zhijun Wang, Shuai Liu, Bin Guo
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引用次数: 45

摘要

针对频谱感知过程中在低信噪比环境下主用户(PU)信号检出率低的问题,提出了一种基于卷积神经网络(CNN)的频谱感知算法。CNN广泛应用于图像识别和语音识别,具有良好的分类性能。因此,使用CNN来解决频谱感知问题,这可以看作是一个二元假设检验问题。首先提取PU信号存在和仅存在噪声信号的特征,包括周期平稳特征和能量特征;然后对提取的特征进行预处理,作为CNN模型的训练输入。最后,将测试数据输入训练好的CNN模型,该模型旨在检测PU的存在。实验结果表明,该算法在−20dB范围内的检测概率比循环平稳特征检测(CFD)高0.5左右。
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Spectrum sensing for cognitive radio based on convolution neural network
The problem in the process of spectrum sensing that the detection rate of the the primary user (PU) signal is low in the environment of low signal-to-noise (SNR) is present, a novel spectrum sensing algorithm based on convolution neural network (CNN) is proposed. The CNN is widely used in image recognition and speech recognition, and has good classification performance. Therefore, the CNN is employed to solve spectrum sensing which can be viewed as a binary hypothesis-testing problem. Firstly, the feature of the presence of the PU signal and the presence of only the noise signal are extracted, including cyclostationary feature and energy feature. And then, the extracted features should be pre-processed, which are used as the training input of the CNN model. Finally, the test data is fed into the trained CNN model, which is aiming to detect the presence of the PU. Experiment results show that a reasonable CNN model is built and the proposed algorithm has higher detection probability than cyclostationary feature detection (CFD) about 0.5 in −20dB.
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