1. Improved functional link artificial neural network via convex combination for nonlinear active noise control.
- Author
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Zhao, Haiquan, Zeng, Xiangping, He, Zhengyou, Yu, Shujian, and Chen, Badong
- Subjects
ARTIFICIAL neural networks ,ACTIVE noise control ,MEAN square algorithms ,ALGORITHMS ,NONLINEAR systems - Abstract
A method relying on the convex combination of two normalized filtered-s least mean square algorithms (CNFSLMS) is presented for nonlinear active noise control (ANC) systems with a linear secondary path (LSP) and nonlinear secondary path (NSP) in this paper. The proposed CNFSLMS algorithm-based functional link artificial neural network (FLANN) filter, aiming to overcome the compromise between convergence speed and steady state mean square error of the NFSLMS algorithm, offers both fast convergence rate and low steady state error. Furthermore, by replacing the sigmoid function with the modified Versorial function, the modified CNFSLMS (MCNFSLMS) algorithm with low computational complexity is also presented. Experimental results illustrate that the combination scheme can behave as well as the best component and even better. Moreover, the MCNFSLMS algorithm requires less computational complexity than the CNFSLMS while keeping the same filtering performance. [ABSTRACT FROM AUTHOR]
- Published
- 2016
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