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Impulsive Noise Mitigation in Powerline Communications Using Sparse Bayesian Learning

机译:使用稀疏贝叶斯学习的电力线通信中的脉冲噪声缓解

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Asynchronous impulsive noise and periodic impulsive noises limit communication performance in OFDM powerline communication systems. Conventional OFDM receivers that assume additive white Gaussian noise experience degradation in communication performance in impulsive noise. Alternate designs assume a statistical noise model and use the model parameters in mitigating impulsive noise. These receivers require training overhead for parameter estimation, and degrade due to model and parameter mismatch. To mitigate asynchronous impulsive noise, we exploit its sparsity in the time domain, and apply sparse Bayesian learning methods to estimate and subtract the noise impulses. We propose three iterative algorithms with different complexity vs. performance trade-offs: (1) we utilize the noise projection onto null and pilot tones; (2) we add the information in the date tones to perform joint noise estimation and symbol detection; (3) we use decision feedback from the decoder to further enhance the accuracy of noise estimation. These algorithms are also embedded in a time-domain block interleaving OFDM system to mitigate periodic impulsive noise. Compared to conventional OFDM receivers, the proposed methods achieve SNR gains of up to 9 dB in coded and 10 dB in uncoded systems in asynchronous impulsive noise, and up to 6 dB in coded systems in periodic impulsive noise.
机译:异步脉冲噪声和周期性脉冲噪声限制了OFDM电力线通信系统中的通信性能。假定加性高斯白噪声的传统OFDM接收机在脉冲噪声中会降低通信性能。替代设计采用统计噪声模型,并使用模型参数来减轻脉冲噪声。这些接收机需要训练开销进行参数估计,并且由于模型和参数不匹配而降低性能。为了减轻异步脉冲噪声,我们在时域中利用其稀疏性,并应用稀疏贝叶斯学习方法来估计和减去噪声脉冲。我们提出了三种具有不同复杂度与性能折衷的迭代算法:(1)我们将噪声投影到零和导频音上; (2)在日期音中添加信息,以进行联合噪声估计和符号检测; (3)我们使用来自解码器的决策反馈来进一步提高噪声估计的准确性。这些算法还嵌入时域块交织OFDM系统中,以减轻周期性脉冲噪声。与传统的OFDM接收机相比,在异步脉冲噪声中,所提出的方法在编码系统中的SNR增益高达9 dB,在未编码系统中的SNR增益高达10 dB,在周期性脉冲噪声的编码系统中,SNR增益高达6 dB。

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