Abstract
The formulation of the exponentially weighted least M-estimate has shown significant promise in addressing acoustic system identification amidst non-Gaussian noise. A common approach to this formulation is the recursive least M-estimate algorithm. However, due to its derivation from nonlinear normal equations, resulting in a slow approximate solution, this algorithm tends to exhibit poor convergence performance. In this paper, we present a Newton-Raphson solution, where the cost function is expanded using the second-order Taylor series to establish the adaptive algorithm. This approach bypasses the nonlinear normal equations, yielding a robust solution that more dynamically reflects changes in the cost function, ultimately leading to improved convergence and tracking performance.
Original language | English |
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Article number | 110460 |
Journal | Applied Acoustics |
Volume | 231 |
DOIs | |
State | Published - 1 Mar 2025 |
Keywords
- Acoustic system identification
- Adaptive filter
- Newton-Raphson algorithm
- Robustness