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A Proportionate Maximum Total Complex Correntropy Algorithm for Sparse Systems

Published: 16 June 2024 Publication History

Abstract

While the practical application of adaptive filters has indeed garnered substantial attention, two pressing issues persist that have a profound impact on their performance—system sparsity and the presence of contaminated Gaussian impulsive noise. In this research paper, we propose a novel approach to tackle both of these issues simultaneously by introducing the concept of a proportionate matrix. Specifically, we present a proportionate maximum total complex correntropy algorithm based on the errors-in-variables model. The paper presents a theoretical analysis of the steady-state weight error power under the influence of impulsive noise. Furthermore, it discusses the performance comparison in system identification and highlights the robustness of the proposed algorithm. To validate its effectiveness, a simulation involving stereophonic acoustic echo cancellation is conducted, and the results confirm the clear advantages of the proposed Proportionate Maximum Total Complex Correntropy algorithm.

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Information

Published In

cover image Circuits, Systems, and Signal Processing
Circuits, Systems, and Signal Processing  Volume 43, Issue 10
Oct 2024
673 pages

Publisher

Birkhauser Boston Inc.

United States

Publication History

Published: 16 June 2024
Accepted: 29 May 2024
Revision received: 27 May 2024
Received: 21 June 2023

Author Tags

  1. Sparse system
  2. Impulsive noise
  3. Proportionate matrix
  4. Errors-in-variables model
  5. Stereophonic acoustic echo cancellation

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