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Impulsive Noise Detection in OFDM-based Systems: A Deep Learning Perspective

机译:基于DM的系统中的脉冲噪声检测:深度学习视角

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Efficient removal of impulsive noise (IN) from received signal is essential in many communication applications. In this paper, we propose a two stage IN mitigation approach for orthogonal frequency-division multiplexing (OFDM)-based communication systems. In the first stage, a deep neural network (DNN) is used to detect the instances of impulsivity. Then, the detected IN is blanked in the suppression stage to alleviate the harmful effects of outliers. Simulation results demonstrate the superior bit error rate (BER) performance of this approach relative to classic approaches such as blanking and clipping that use threshold to detect the IN. We demonstrate the robustness of the DNN-based approach under (i) mismatch between IN models considered for training and testing, and (ii) bursty impulsive environment when the receiver is empowered with interleaving techniques.
机译:在许多通信应用中有效地移除来自接收信号的脉冲噪声(IN)至关重要。在本文中,我们提出了一种用于基于正交频分复用(OFDM)的通信系统的缓解方法的两个阶段。在第一阶段,深神经网络(DNN)用于检测冲动的情况。然后,在抑制阶段中被检测到的中被消隐,以减轻异常值的有害影响。仿真结果展示了这种方法相对于经典方法的高误码率(BER)性能,例如使用阈值来检测IN的传统方法。我们展示了基于DNN的方法的稳健性(i)在考虑进行训练和测试的模型之间的错配,并且当接收器被赋予交错技术时突出冲动环境。

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