Applied Sciences (Jun 2024)

Dynamic Matching of Reconstruction and Anti-Aliasing Filters in Adaptive Active Noise Control

  • Fangjie Zhang,
  • Yanqin Wu,
  • Yifan Wang,
  • Xiaodong Li

DOI
https://doi.org/10.3390/app14114810
Journal volume & issue
Vol. 14, no. 11
p. 4810

Abstract

Read online

Constrained by the computing power, adaptive active noise control systems often have a low sampling rate. Therefore, reconstruction filters and anti-aliasing filters with fixed parameters are generally adopted to eliminate the mirror noise and aliasing noise, respectively; however, they may boost the group delay of the system. A dynamic matching method based on dual sampling rates is proposed to dynamically adjust the parameters of the reconstruction and anti-aliasing filters, according to the characteristics of the primary sound source, for a compromise between high-frequency noise and group delay. In digital high-sampling-rate regions, data that include high-frequency information are analyzed regularly, following which the parameters of the reconstruction filters and those of the anti-aliasing filters are dynamically matched. In digital low-sampling-rate regions, the estimation of the secondary path transfer function is updated. The results of laboratory experiments show that the proposed method not only can suppress the mirror and aliasing noise for primary sound sources with different spectra, but can also effectively reduce the group delay and improve the noise reduction performance of a system.

Keywords