Robust Multitask Diffusion Normalized M-estimate Subband Adaptive Filtering Algorithm Over Adaptive Networks
Wenjing Xu, Haiquan Zhao, Shaohui Lv

TL;DR
This paper introduces a robust multitask diffusion subband adaptive filtering algorithm that effectively handles correlated inputs and impulsive noise, improving convergence speed and steady-state accuracy in distributed networks.
Contribution
It proposes the MD-NMSAF algorithm integrating subband filtering and M-estimation, reducing complexity and enhancing robustness over existing methods.
Findings
Significant reduction in computational complexity compared to previous algorithms.
Enhanced robustness to impulsive noise and correlated inputs.
Faster convergence and improved steady-state accuracy in simulations.
Abstract
In recent years, the multitask diffusion least mean square (MD-LMS) algorithm has been extensively applied in the distributed parameter estimation and target tracking of multitask network. However, its performance is mainly limited by two aspects, i.e, the correlated input signal and impulsive noise interference. To overcome these two limitations simultaneously, this paper firstly introduces the subband adaptive filter (SAF) into the multitask network. Then, a robust multitask diffusion normalized M-estimate subband adaptive filtering (MD-NMSAF) algorithm is proposed by solving the modified Huber function based global network optimization problem in a distributed manner, which endows the multitask network strong decorrelation ability for correlated inputs and robustness to impulsive noise interference, and accelerates the convergence of the algorithm significantly. Compared with the…
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Taxonomy
TopicsAdvanced Adaptive Filtering Techniques · Direction-of-Arrival Estimation Techniques · Image and Signal Denoising Methods
MethodsDiffusion
