Title :
Nonlinear Active Noise Control With NARX Models
Author :
Napoli, Roberto ; Piroddi, Luigi
Author_Institution :
Esion, Monte Marenzo, Italy
Abstract :
The extension of active noise control (ANC) techniques to deal with nonlinear effects such as distortion and saturation requires the introduction of suitable nonlinear model classes and adaptive algorithms. Large sized models are typically used, resulting in an increased computational load, delayed convergence (and sometimes even algorithm instability), and other unwanted dynamical effects due to overparametrization. This paper discusses the usage of polynomial nonlinear autoregressive models with exogenous variables (NARX) models and model selection techniques to reduce the model size and increase its robustness, for more efficient and reliable ANC. An offline procedure is devised to identify the controller model structure, and the controller parameters are successively updated with an adaptive algorithm based on the error gradient and on the residual noise. Simulation experiments show the effectiveness of the proposed approach. A brief analysis of the involved computational complexity is also provided.
Keywords :
active noise control; computational complexity; gradient methods; adaptive algorithms; computational complexity; computational load; controller model structure; delayed convergence; error gradient; nonlinear active noise control; nonlinear model classes; polynomial nonlinear autoregressive models with exogenous variables model; residual noise; Active noise control (ANC); Nonlinear AutoRegressive models with eXogenous variables (NARX); nonlinear adaptive filters; nonlinear model selection; signal saturation;
Journal_Title :
Audio, Speech, and Language Processing, IEEE Transactions on
DOI :
10.1109/TASL.2009.2025798