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Unsupervised Wireless Spectrum Anomaly Detection With Interpretable Features

机译:具有可解释功能的无监督无线频谱异常检测

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Detecting anomalous behavior in wireless spectrum is a demanding task due to the sheer complexity of the electromagnetic spectrum use. Wireless spectrum anomalies can take a wide range of forms from the presence of an unwanted signal in a licensed band to the absence of an expected signal, which makes manual labeling of anomalies difficult and suboptimal. We present, spectrum anomaly detector with interpretable features (SAIFE), an adversarial autoencoder (AAE)-based anomaly detector for wireless spectrum anomaly detection using power spectral density (PSD) data. This model achieves an average anomaly detection accuracy above 80% at a constant false alarm rate of 1% along with anomaly localization in an unsupervised setting. In addition, we investigate the model’s capabilities to learn interpretable features, such as signal bandwidth, class, and center frequency in a semi-supervised fashion. Along with anomaly detection the model exhibits promising results for lossy PSD data compression up to
机译:由于电磁频谱使用的绝对复杂性,检测无线频谱中的异常行为是一项艰巨的任务。无线频谱异常可以采取多种形式,从许可频段中存在不想要的信号到不存在预期信号,这使得手动标记异常变得困难且次优。我们提出了一种具有可解释特征(SAIFE)的频谱异常检测器,它是一种基于对抗自编码器(AAE)的异常检测器,用于使用功率谱密度(PSD)数据进行无线频谱异常检测。该模型以1%的恒定误报率以及在无人监督的情况下的异常定位实现了80%以上的平均异常检测精度。此外,我们研究了该模型以半监督方式学习可解释特征的能力,例如信号带宽,等级和中心频率。除异常检测外,该模型还显示出有希望的结果,可将有损PSD数据压缩至

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