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Analysis of Optimized Threshold with SLM based Blanking Non-Linearity for Impulsive Noise Reduction in Power Line Communication Systems

机译:基于SLM的消隐非线性的优化阈值分析,用于电力线通信系统脉冲降噪

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High amplitude impulsive noise (IN) occurrence over power line channels severely degrades the performance of Orthogonal Frequency Division Multiplexing (OFDM) systems. One of the simplest methods to reduce IN is to precede the OFDM demodulator with a blanking non-linearity processor. In this respect, Selective Mapping (SLM) applied to an OFDM signal before the transmitter does not only reduce Peak-to-Average Power Ratio (PAPR) but also increases the resulting Signal-to-Noise Ratio (SNR) when blanking nonlinearity is applied at the receiver. This paper highlights another advantage of SLM based IN reduction, which is the reduced dependency on threshold used for blanking nonlinearity. The simulation results show that the optimal threshold to achieve maximum SNR is found to be constant for phase vectors greater than or equal to 64 in the SLM scheme. If the optimized threshold calculation method is used, the output SNR with SLM OFDM will result in SNR gains of up to 8.6dB compared to the unmodified system, i.e. without implementing SLM. Moreover, by using SLM, we not only get the advantage of low peak power, but also the need to calculate optimized threshold is eliminated, thereby reducing the additional computation.
机译:电力线路通道的高幅度脉冲噪声(IN)发生严重降低正交频分复用(OFDM)系统的性能。减少的最简单方法之一是使用消隐非线性处理器之前的OFDM解调器。在这方面,在发射机之前应用于OFDM信号的选择性映射(SLM)不仅降低了峰值平均功率比(PAPR),而且在施加冲击非线性时也增加了产生的信噪比(SNR)在接收器。本文突出了基于减少SLM的另一个优点,这是对用于消隐非线性的阈值的依赖性降低。仿真结果表明,在SLM方案中,发现最大SNR实现最大SNR的最佳阈值对于大于或等于64的相位向量。如果使用优化的阈值计算方法,则与SLM OFDM的输出SNR将导致与未修改的系统相比最高8.6dB的SNR增益,即,不实现SLM。此外,通过使用SLM,我们不仅可以获得低峰值功率的优势,而且还消除了计算优化阈值的需要,从而减少了附加计算。

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