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A genetic‐based neuro‐fuzzy controller for blind equalization of time‐varying channels
Authors:Siba Prasada Panigrahi  Santanu Kumar Nayak  Sasmita Kumari Padhy
Affiliation:1. EAST, Bhubaneswar, India;2. Assistant Professor.;3. Department of Electronics, Berhampur University, Berhampur, Orissa, India;4. Department of Computer Science, Berhampur University, Berhampur, Orissa, India
Abstract:This paper presents a neuro‐fuzzy network (NFN) where all its parameters can be tuned simultaneously using genetic algorithms (GAs). The approach combines the merits of fuzzy logic theory, neural networks and GAs. The proposed NFN does not require a priori knowledge about the system and eliminates the need for complicated design steps such as manual tuning of input–output membership functions, and selection of fuzzy rule base. Although, only conventional GAs have been used, convergence results are very encouraging. A well‐known numerical example derived from literature is used to evaluate and compare the performance of the network with other equalizing approaches. Simulation results show that the proposed neuro‐fuzzy controller, all parameters of which have been tuned simultaneously using GAs, offers advantages over existing equalizers and has improved performance. From the perspective of application and implementation, this paper is very interesting as it provides a new method for performing blind equalization. The main contribution of this paper is the use of learning algorithms to train a feed‐forward neural network for M‐ary QAM and PSK signals. This paper also provides a platform for researchers of the area for further development. Copyright © 2008 John Wiley & Sons, Ltd.
Keywords:neuro‐fuzzy filter  fuzzy logic  blind equalizer  neural networks  genetic algorithms
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