Multi-channel Kalman filters for active noise control
Author(s) -
Sjoerd van Ophem,
Arthur P. Berkhoff
Publication year - 2013
Publication title -
the journal of the acoustical society of america
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.619
H-Index - 187
eISSN - 1520-8524
pISSN - 0001-4966
DOI - 10.1121/1.4792646
Subject(s) - kalman filter , control theory (sociology) , computer science , noise (video) , extended kalman filter , filter (signal processing) , path (computing) , tracking (education) , invariant extended kalman filter , convergence (economics) , recursive least squares filter , algorithm , alpha beta filter , rate of convergence , least mean squares filter , channel (broadcasting) , adaptive filter , control (management) , telecommunications , artificial intelligence , psychology , pedagogy , moving horizon estimation , economics , image (mathematics) , computer vision , programming language , economic growth
By formulating the feed-forward broadband active noise control problem as a state estimation problem it is possible to achieve a faster rate of convergence than the filtered reference least mean squares algorithm and possibly also a better tracking performance. A multiple input/multiple output Kalman algorithm is derived to perform this state estimation. To make the algorithm more suitable for real-time applications, the Kalman filter is written in a fast array form and the secondary path state matrices are implemented in output normal form. The resulting filter implementation is tested in simulations and in real-time experiments. It was found that for a constant primary path the filter has a fast rate of convergence and is able to track changes in the frequency spectrum. For a forgetting factor equal to unity the system is robust but the filter is unable to track rapid changes in the primary path. A forgetting factor lower than 1 gives a significantly improved tracking performance but leads to a numerical instability for the fast array form of the algorithm.
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