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Normalized p-norm Blind Equalization Algorithm with Adaptive Momentum under Impulsive Noise Environment

机译:脉冲噪声环境下具有自适应动量的归一化P常态盲均衡算法

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Hereby a normalized p-norm blind equalization algorithm with adaptive momentum was proposed. Normalized p-norm LMS-CMA can obtain robust convergence performance under impulsive noise environment, however, the convergence rate is slow. To further improve the performance of the normalized p-norm LMS-CMA, adaptive momentum according to the instantaneous error is designed. If the instantaneous error based on CMA criterion and DD criterion has the same sign, the momentum factor remains unchanged. Otherwise, the momentum factor is set to 0. The simulation results show that, the proposed algorithm has faster convergence rate than the normalized p-norm blind equalization algorithm, furthermore, it has robust convergence performance under impulsive noise environment.
机译:因此,提出了一种具有自适应动量的归一化的P常态盲均衡算法。归一化的P-NARM LMS-CMA可以在脉冲噪声环境下获得鲁棒的收敛性能,但是收敛速度慢。为了进一步提高归一化P-NARM LMS-CMA的性能,设计了根据瞬时误差的自适应动量。如果基于CMA标准和DD标准的瞬时误差具有相同的符号,则动量因子保持不变。否则,动量因子被设置为0.仿真结果表明,该算法的收敛速率比归一化的P-NOM盲均衡算法更快,而且在脉冲噪声环境下它具有鲁棒的收敛性能。

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