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Anomaly Detection of Spectrum in Wireless Communication via Deep Autoencoder

机译:通过深度自动化器无线通信频谱的异常检测

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Anomaly detection has been a typical task in many fields, as well as spectrum monitoring in wireless communication. In this paper, we apply a deep-structure autoencoder neural network to spectrum anomaly detection, and the time-frequency diagram is used as the feature of the learning model. In order to evaluate the performance of the model, the accuracy of the output is considered. We compare the performance of both our proposed model and conventional one-layer autoencoder. The results of numerical experiments illustrate that our model outperforms the one-layer autoencoder based method.
机译:异常检测在许多领域是一个典型的任务,以及无线通信中的频谱监视。在本文中,我们将深度结构的AutoEncoder神经网络应用于频谱异常检测,并且时间频率图用作学习模型的特征。为了评估模型的性能,考虑了输出的准确性。我们比较我们所提出的模型和传统的单层AutoEncoder的性能。数值实验的结果说明我们的模型优于基于单层自动化器的方法。

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