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Journal of Sound and Vibration
Volume 296, Issues 4-5, 10 October 2006, Pages 935-948
 
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doi:10.1016/j.jsv.2006.03.020    How to Cite or Link Using DOI (Opens New Window)
Copyright © 2006 Elsevier Ltd All rights reserved.

Adaptive recurrent fuzzy neural networks for active noise control

Qi-Zhi Zhanga, Corresponding Author Contact Information, E-mail The Corresponding Author, Woon-Seng Ganb and Ya-li Zhoua

aDepartment of Computer Science and Automation, Beijing Institute of Machinery, P. O. Box 2865, Beijing 100085, People's Republic of China bSchool of Electrical and Electronic Engineering, Nanyang Technological University, Singapore

Received 26 February 2004; 
revised 3 November 2005; 
accepted 17 March 2006. 
Available online 2 June 2006.

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Abstract

This paper discussed nonlinear active noise control (ANC). Some adaptive nonlinear noise control approaches using recurrent fuzzy neural networks (RFNNs) were derived. The proposed RFNNs were feed-forward fuzzy neural networks (NNs) with different local feedback connections that are used to construct dynamic fuzzy rules. Different recurrent connection strategies, diagonal recurrent and full connected recurrent ones, were considered. In addition, different fuzzy operation strategies, product (multiply) inference and “summation” (addition) inference, were proposed. Because RFNN-based ANC systems can capture the dynamic behavior of a system through the feedback links, the exact lag of the input variables need not be known in advance. Online dynamic back-propagation learning algorithms based on the error gradient descent method were proposed, and the local convergence of a closed-loop system was proven using the discrete Lyapunov function. A nonlinear simulation example showed that an adaptive ANC system based on an RFNN with summation inference is superior to a system based on other fuzzy NNs.

Article Outline

1. Introduction
2. System descriptions
3. Structures of RFNNs
4. The adaptive control approach using RFNNS
5. The convergence of the ANC system
6. Simulation results
7. Conclusions
Acknowledgements
References











 
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