JSIP  Vol.2 No.1 , February 2011
Evolutionary MPNN for Channel Equalization
Abstract: This paper proposes a novel equalizer, termed here as Evolutionary MPNN, where a complex modified probabilistic Neural Networks (MPNN) acts as a filter for the detected signal pattern. The neurons were embedded with optimization algorithms. We have considered two optimization algorithms, Bacteria Foraging Optimization (BFO) and Ant Colony Optimization (ACO). The proposed structure have the ability to process complex signals also can perform for slowly varying channels. Also, Simulation results prove the superior performance of the proposed equalizer over the existing MPNN equalizers.
Cite this paper: nullSarangi, A. , Ketan Panigrahi, B. and Prasada Panigrahi, S. (2011) Evolutionary MPNN for Channel Equalization. Journal of Signal and Information Processing, 2, 11-17. doi: 10.4236/jsip.2011.21002.

[1]   Elif Derya übeyli, Lyapunov Expoents/probabilistic neural networks for analysis of EEG signals, Expert Systems with Applications, Volume 37, Issue 2, March 2010, Pages 985-992.

[2]   Elif Derya übeyli, Recurrent neural networks employing Lyapunov Exponents for analysis of ECG signals, Expert Systems with Applications, Volume 37, Issue 2, March 2010, Pages 1192-1199.

[3]   Daw-Tung Lin, Judith E. Dayhoff, Pangs A. Ligomenides, Trajectory production with adaptive time-delay neural network, Neural Networks, Volume 8, Issue 3, 1995, Pages 447-461.

[4]   Ling Gao, Shouxin Ren, Combining orthogonal signal correction and wavelet pocket transform with radial basis function neural networks for multicomponent determination, Chemometrics and Intelligent Laboratory Systems, Volume 100, Issue 1, 15 January 2010, Pages 57-65

[5]   K.-L. Du, Clustering: A neural network approach, Neural Networks, Volume 23, Issue 1, January 2010, Pages 89- 107.

[6]   Haiquan Zhao, Xiangping Zeng, Jiashu Zhang, Adaptive reduced feedback FLNN filter for active control of noise processes, Signal Processing, Volume 90, Issue 3, March 2010, Pages 834-847

[7]   Chris Potter, Ganesh K. Venayagamoorthy, Kurt Kosbar, RNN based MIMO channel prediction, Signal Processing, Volume 90, Issue 2, February 2010, Pages 440-450

[8]   Jagdish C. Patra, Pramod K. Meher, Goutam Chakraborty, Nonlinear channel equalization for wireless communication systems using Legendre Neural networks, Signal Processing, Volume 89, Issue 11, November 2009, Pages 2251-2262

[9]   Siba Prasada Panigrahi, Santanu Kumar Nayak, Sasmita Kumari Padhy, Hybrid ANN reducing training time requirements and decision delay for equalization in presence of co-channel interference, Applied Soft Computing, Volume 8, Issue 4, September 2008, Pages 1536-1538

[10]   Ling Zhang, Xianda Zhang, MIMO Channel Estimation and equalization using threelayer neural network with feedback, Tsinghua Science & Technology, Volume 12, Issue 6, December 2007, Pages 658-662

[11]   Haiquan Zhao, Jiashu Zhang, Functional link neural network cascaded with Chevyshev orthogonal polynomial for nonlinear channel equalization, Signal Processing, Volume 88, Issue 8, August 2008, Pages 1946-1957

[12]   Haiquan Zhao, Jiashu Zhang, A novel nonlinear adaptive filter using a pipelined second-order Volterra recurrent neural network, Neural Networks, Volume 22, Issue 10, December 2009, Pages 1471-1483

[13]   Wan-De Weng, Che-Shih Yang, Rui-Chang Lin, A channel equalizer using reduced decision feedback Chebyshev functional link artificial neural networks, Information Sciences, Volume 177, Issue 13, 1 July 2007, Pages 2642- 2654

[14]   Wai Kit Wong, Heng Siong Lim, A robust and effective fuzzy adaptive equalizer for powerline communication channels, Neurocomputing, Volume 71, Issues 1-3, December 2007, Pages 311-322

[15]   Jungsik Lee, Ravi Sankar, Theoretical derivation of minimum mean square error of RBF based equalizer, Signal Processing, Volume 87, Issue 7, July 2007, Pages 1613-1625

[16]   Haiquan Zhao, Jiashu Zhang, Nonlinear dynamic system identification using pipelined functional link artificial recurrent neural network, Neurocomputing, Volume 72, Issues 13-15, August 2009, Pages 3046-3054

[17]   Sasmita Kumari Padhy, Siba Prasada Panigrahi, Prasanta Kumar Patra, Santanu Kumar Nayak, Non-linear channel equalization using adaptive MPNN, Applied Soft Computing, Volume 9, Issue 3, June 2009, Pages 1016-1022

[18]   María Alejandra Guzmán, Alberto Delgado, Jonas De Carvalho, A novel multiobjective optimization algorithm based on Bacterial chemotaxis, Engineering Applications of Artificial Intelligence, Volume 23, Issue 3, April 2010, Pages 292-301

[19]   Babita Majhi, G. Panda, Development of efficient identification scheme for nonlinear dynamic systems using swarm intelligence techniques, Expert Systems with Applications, Volume 37, Issue 1, January 2010, Pages 556- 566

[20]   D. P. Acharya, G. Panda, Y. V. S. Lakshmi, Effects of finite register length on fast ICA, bacteria foraging optimization based ICA and constrained genetic algorithm based ICA algorithm, Digital Signal Processing, Available online 12 August 2009

[21]   B. K. Panigrahi, V. Ravikumar Pandi, Congestion management using adaptive Bacterial foraging Algorithm, Energy Conversion and Management, Volume 50, Issue 5, May 2009, Pages 1202-1209

[22]   Mehmet Korürek, Ali Nizam, Clustering MIT-BIH arrhythmias with Ant colony Optimization using time domain and PCA compressed wavelet coefficients, Digital Signal Processing, Available online 13 November 2009

[23]   Mehdi Hosseinzadeh Aghdam, Nasser Ghasem-Aghaee, Mohammad Ehsan Basiri, Text feature selection using ant colony optimization, Expert Systems with Applications, Volume 36, Issue 3, Part 2, April 2009, Pages 6843-6853

[24]   Sung-Shun Weng, Yuan-Hung Liu, Mining time series data for segmentation by using Ant colony Optimization, European Journal of Operational Research, Volume 173, Issue 3, 16 September 2006, Pages 921-937

[25]   Jing Tian, Weiyu Yu, Lihong Ma, Antshrink: Ant colony optimization for image shrinkage, Pattern Recognition Letters, Available online 7 January 2010.

[26]   W. Chen, N. Minh, and J. Litva, ‘On incorporating finite impulse response neural network with finite difference time domain method for simulating electromagnetic problems’, Antennas and Propagation Society International Symposium, 1996. AP-S. Digest, Volume: 3, 1996, pp 1678 -1681.

[27]   Y.-P. Liu, M.-G. Wu and J.-X. Qian, “Evolving neural networks using the hybrid of ant colony optimization and BP algorithms,” Lecture Notes in Computer Science, vol. 3971, 2006.

[28]   Dong Hwa Kim, Ajith Abraham, and Jae Hoon Cho, A hybrid genetic algorithm and bacterial foraging approach for global optimization, Information Sciences, Volume 177, Issue 18, 15 September 2007, Pages 3918-3937.

[29]   Arijit Biswas, Sambarta Dasgupta, Swagatam Das and Ajith Abraham, Synergy of PSO and Bacterial Foraging Optimization — A Comparative Study on Numerical Benchmarks, Innovations in Hybrid Intelligent Systems, Volume 44/2007, Pages 255-263.

[30]   Crina Grosan and Ajith Abraham, Hybrid Evolutionary Algorithms: Methodologies, Architectures, and Reviews, Hybrid Evolutionary Algorithms, Volume 75/2007, Pages 1-17.

[31]   Hanning Chen, Yunlong Zhu, Kunyuan Hu, Multi-colony bacteria foraging optimization with cell-to-cell communication for RFID network planning, Applied Soft Computing, Volume 10, Issue 2, March 2010, Pages 539-547.