ANN Model Identification: A BB-BC Optimization Algorithm Based Approach

Authors

  • Kalra A Research Scholar, Punjab Technical University, Kapurthla, Punjab, India
  • Kumar S Baddi University Emerging Sciences & Technology, Baddi(HP) India
  • Walia SS IKG Punjab Technical University, Jalandhar, Punjab

DOI:

https://doi.org/10.26438/ijcse/v6i12.264271

Keywords:

Model Identification, ANN (Artificial Neural Network), Optimization

Abstract

This paper proposes a new soft computing approach to artificial neural network (ANN) model identification. The new approach is based upon big bang big crunch (BB-BC) optimization algorithm .To test our approach we have identified two models one from control field namely rapid battery charger and second a rating system for institutes of higher learning. With about 20% of the total data being used for training the proposed approach was able to identify models successfully. In order to validate our proposed approach, we implemented the approach in the MATLAB and compared its training performance with 6 other well known classical training approaches namely LevenbergMarquardt algorithm (LM), error back propagation(EBP), Resilent prop(RPROP), particle swarm optimization (PSO), ant colony optimization(ACO) and artificial bee colony(ABC). It was observed that BB-BC has faster convergence speed and produced better results than the other approaches.

References

[1] G. Zhang (2000), “Neural networks for classification: a survey,” IEEE Transactions on Systems, Man, and Cybernetics-Part C: Applications and Reviews, vol. 30, no. 4, pp. 451–462.

[2] Bishop Chris M., “Neural Networks and their applications”, June 1994, Review of Scientific Instruments, Vol. 65, No. 6, pp. 1803-1832.

[3] Shakti Kumar, Nitika Ohri, Savita Wadhvan (2004),“ANN based design of rapid battery charger”, Trends Of Computational Techniques In Engineering Oct 15-16, , SLIET, Longowal Punjab pp 129-132.

[4] Khosla, A., Kumar, S. and Aggarwal, K. K. (2003), “ Identification of fuzzy controller for rapid nickel cadmium batteries charger through fuzzy c–means clustering algorithm”, Proceedings of 22nd International Conference of the North American Fuzzy Information Processing Society, Chicago, Illinois, USA, July 24–26, pp. 536–539.

[5] S. Kumar, S.S Walia, A. Kalra.(2015) “ANN Training: A Review of Soft Computing Approaches”, International Journal of Electrical & Electronics Engineering, Vol. 2, Spl. Issue 2, pp. 193-205.

[6] A. Kalra, S. Kumar, S.S Walia.(2016) “ANN Training: A Survey of classical and Soft Computing Approaches”, International Journal of Control Theory and Applications, Vol. 9, pp. 715-736.

[7] C.L. Karr, 1991, “Design of an adaptive fuzzy logic controller using a genetic algorithm,” Proc. 4th Int.Conf. Genetic Algorithms, pp. 450-457.

[8] Surmann, H. 1996. Genetic optimization of a fuzzy system for charging batteries. IEEE Transactions on Industrial Electronics. 43(5) : 541-548.

[9] C.L. Karr and E.J. Gentry, 1993, “Fuzzy Control of pH using genetic algorithms,” IEEE Transactions on Fuzzy Systems, Vol. 1, No. 1, pp.46-53.

[10] Eghbal G. Mansoori, M.J. Zolghadri and S.D. Katebi, Aug. 2008 “SGERD: A steady-state genetic algorithm for extracting fuzzy classification rules from data,” IEEE Transactions on Fuzzy Systems, Vol.16, No.4, pp. 1061-1071.

[11] Simon D. December 2008, “Biogeography-Based Optimization,” IEEE Trans. on Evolutionary Computation, vol. 12, no. 6, pp. 702-713.

[12] Simon, D., Ergezer, M. and Du, D. 2009. Population distributions in biogeography-based optimization algorithms with elitism. Proceedings of the 2009 IEEE International Conference on Systems, Man, and Cybernetics, San Antonio, TX, USA, pp. 991–996.

[13] Simon, D., Ergezer, M., Du,D. and Rarick, R. 2011. Markov models for biogeography–based optimization. IEEE Transactions on Systems, Man, and Cybernetics - Part B: Cybernetics.41 (1): 299– 306.

[14] Carmona, P. and J. L. Castro, 2005, “Using ant colony optimization for learning maximal structure fuzzy rules,” Proc. IEEE Int. Conf. Fuzzy Systems, pp.999-999.

[15] Chia-Feng J., H.J. Huang and C.M. Lu, 2007, “Fuzzy controller design by ant colony optimization,” IEEE Proc. on Fuzzy Systems.

[16] Dorigo M and L.M. Gambardella (1997), Ant colony system: a cooperative learning approach to the traveling salesman problem, IEEE Transaction on Evolutionary Computation 1, pp. 53-66.

[17] Dorigo, M., Maniezzo, V. and Colorni, A. 1996. The Ant System: Optimization by a colony of cooperating agents. IEEE Transactions on Systems, Man, and Cybernetics–Part B. 26(1) : 1-13.

[18] Chen, C.C. 2006. Design of PSO-based fuzzy classification systems.,Tamkang journal of science and engineering, vol. 9, no.1, 63-70.Khosla, A., Kumar, S. and Aggarwal, K. K. 2005. A framework for identification of fuzzy models through particle swarm optimization algorithm. In Proceedings of IEEE Indicon 2005 Conference, Chennai, India, 11-13 (Dec. 2005), 388-391.

[19] He Z., Wei C., Yang L., Gao X., Yao S., Eberhart R. C., Shi Y., 1998, "Extracting Rules from Fuzzy Neural Network by Particle Swarm Optimization", IEEE International Conference on Evolutionary Computation, Anchorage, Alaska, USA.

[20] Khosla, A., Kumar, S. and Aggarwal,K. K. 2005. A framework for identification of fuzzy models through particle swarm optimization algorithm. IEEE Indicon 2005 Conference, Chennai, India, Dec. 11-13. pp. 388-391.

[21] Shakti Kumar, Parvinder Bhalla, AP Singh, January 2011 “Fuzzy Rulebase Generation from Numerical Data using Big Bang-Big Crunch Optimization”, IE(I)Journal -ET, Volume 91, pp 1-8.

[22] Kumbasar, T, E Yesil, I Eksin and M Guzelkaya., 2008,“Inverse Fuzzy Model Control with Online Adaptation via Big Bang-Big Crunch Optimization”ISCCSP 2008, Malta, March 12-14, pp. 697.

[23] Shakti Kumar, Sukhbir Singh Walia, A Kalanidhi Nov 2013 b “Fuzzy Model Identification: A New Parallel BB-BC Optimization Based Approach” International Journal of Electronics and Communication Engineering. Vol 2, Issue 5, pp 167-178.

[24] Shakti Kumar , S S Walia, S S Bhatti (2013) “Performance Evaluation of Institutes of Higher Learning: A hierarchical Fuzzy System Approach” IRACST – Engineering Science and Technology: An International Journal (ESTIJ), ISSN: 2250-3498,Vol.3, No.4.

[25] Ashima Kalra, Shakti Kumar, Sukhbir Singh Walia, “ANN Model identification: Two Soft Computing Based Approaches”, International Journal of Research and Analytical Reviews, Vol. 4 , issue 2, June 2017, pp 79-86.

[26] Shakti Kumar, Nitika Ohri, Savita Wadhvan (2004) a,“ANN based design of rapid battery charger”, Trends Of Computational Techniques In Engineering Oct 15-16, , SLIET, Longowal Punjab pp 129-132.

[27] Erol O. K., Eksin I., 2006, A new optimization method: Big Bang-Big Crunch, Advances in Engineering Software, vol 37, 106-111.

Downloads

Published

2018-12-31
CITATION
DOI: 10.26438/ijcse/v6i12.264271
Published: 2018-12-31

How to Cite

[1]
A. Kalra, S. Kumar, and S. S. Walia, “ANN Model Identification: A BB-BC Optimization Algorithm Based Approach”, Int. J. Comp. Sci. Eng., vol. 6, no. 12, pp. 264–271, Dec. 2018.

Issue

Section

Research Article