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Recursive Inverse Adaptive Filtering Algorithm With Low Computational Complexity On Sparse System Identification

机译:循环系统识别低计算复杂性的递归逆自适应滤波算法

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This paper studies the performance of Recursive Inverse (RI) adaptive filtering for the identification of sparse systems. A new adaptive algorithm utilizing a modified autocorrelation matrix and a modified weight vector which are both reduced in size, is introduced. This algorithm is called Reduced Complexity Sparse RI (RCS-RI). The low computational complexity is the most significant feature of RCS-RI. Due to the low computational complexity, it performs better by doing faster computations compared with Recursive Inverse (RI) and Zero Attracting Recursive Inverse (ZA-RI) algorithms. Additionally, the convergence of the algorithm is faster compared with the RI algorithm with respect to the steady state Mean Square Error (MSE). The RCS-RI also outperforms the Zero Attracting Variable Step Size Least Mean Square (ZA-VSSLMS) in the steady state Mean Square Deviation (MSD). Its convergence rate and MSD performance in the steady state conditions are approximately equal to that of ZA-RI. Consequently, RCS-RI improves the performance of identifying the sparse system by faster and more efficient computations due to lower complexity and MSE. RCS_RI's steady state MSE is significantly reduced when compared to LMS-type system identification algorithms.
机译:本文研究了递归逆(RI)自适应滤波的性能,用于识别稀疏系统。介绍了利用修改的自相关矩阵的新的自适应算法和均匀尺寸减小的修改重量载体。该算法称为降低复杂性稀疏RI(RCS-RI)。低计算复杂性是RCS-RI最重要的特征。由于计算复杂性低,它通过与递归逆(RI)和零吸引递归逆(ZA-RI)算法进行更快的计算来执行更好的计算。另外,与相对于稳态均方误差(MSE)的RI算法相比,算法的收敛性更快。 RCS-RI在稳态均方偏差(MSD)中也优于零吸引变量步长度最小均方(ZA-VSSLMS)。其在稳态条件下的收敛速率和MSD性能大致等于ZA-RI的性能。因此,由于较低的复杂性和MSE,RCS-RI通过更快和更有效的计算提高了识别稀疏系统的性能。与LMS型系统识别算法相比,RCS_RI的稳态MSE显着降低。

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