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Constrained Least Mean M-Estimation Adaptive Filtering Algorithm

机译:约束最小值的M估计自适应滤波算法

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摘要

In many applications, the constrained adaptive filtering algorithm has been widely studied. The classical constrained LMS algorithm is widely used because of its low computational complexity. However, the performance of constrained LMS algorithm will degrade under correlated input or non-Gaussian noise. In order to overcome this defect, this brief proposes a constrained least mean M-estimation (CLMM) algorithm, which uses the M-estimation cost function for the constrained adaptive filter. Compared with the previous algorithms for non-Gaussian noise, such as constrained maximum correntropy criterion (CMCC) algorithm and constrained minimum error entropy (CMEE) algorithm, the proposed CLMM algorithm has lower computational complexity and better steady-state performance. In addition, the step-size range is determined by analyzing the mean square stability, which ensures the stability of the proposed CLMM algorithm. Simulation results illustrate that the proposed CLMM algorithm has better steady-state performance than previous algorithms in non-Gaussian noises with multi-peak distribution.
机译:在许多应用中,受约束的自适应滤波算法已被广泛研究。由于其低计算复杂性,经典约束LMS算法被广泛使用。然而,受约束的LMS算法的性能将在相关输入或非高斯噪声下降低。为了克服这种缺陷,本简要提出了一个约束最小值的M估计(CLMM)算法,它使用受约束的自适应滤波器的M估计成本函数。与以前的非高斯噪声算法相比,例如约束的最大控制标准(CMCC)算法和约束的最小误差熵(CMEE)算法,所提出的CLMM算法具有较低的计算复杂性和更好的稳态性能。另外,通过分析均方稳定性来确定梯度尺寸范围,这确保了所提出的CLMM算法的稳定性。仿真结果表明,所提出的CLMM算法具有比以前的多峰值分布的非高斯噪声中的先前算法具有更好的稳态性能。

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