Artificial Neural Networks

  • D. T. Pham
  • M. S. Packianather
  • A. A. Afify

Preview

Unable to display preview. Download preview PDF.

Unable to display preview. Download preview PDF.

References

  1. Albus J S, (1975a), “A new approach to manipulator control: cerebellar model articulation control (CMAC)”, Trans. ASME, J. of Dynamics Syst., Meas. and Contr., 97, 220–227.MATHGoogle Scholar
  2. Albus J S, (1975b), “Data storage in the cerebellar model articulation controller (CMAC)”, Trans. ASME, J. of Dynamics Syst., Meas. and Contr., 97, 228–233.MATHGoogle Scholar
  3. Albus J S, (1979a), “A model of the brain for robot control”, Byte, 54–95.Google Scholar
  4. Albus J S, (1979b), “Mechanisms of planning and problem solving in the brain”, Math. Biosci., 45, 247–293.CrossRefGoogle Scholar
  5. An P E, Brown M, Harris C J, Lawrence A J and Moore C J, (1994), “Associative memory neural networks: adaptive modelling theory, software implementations and graphical user”, Engng. Appli. Artif. Intell., 7 (1), 1–21.CrossRefGoogle Scholar
  6. Bohte S M, La Poutre H and Kok J N, (2002a), “Unsupervised clustering with spiking neurons by sparse temporal coding and multilayer RBF networks”, IEEE Trans. on Neural Networks, 13 (2), 415–425.CrossRefGoogle Scholar
  7. Bohte S M, La Poutre H and Kok J N, (2002b), “Error-back propagation in temporally encoded networks of spiking neurons”, Neuro Computing, 17–37.Google Scholar
  8. Broomhead D S and Lowe D, (1988), “Multivariable functional interpolation and adaptive networks”, Complex Systems, 2, 321–355.MATHMathSciNetGoogle Scholar
  9. Carpenter G A and Grossberg S, (1987), “ART2: Self-organisation of stable category recognition codes for analog input patterns”, Appl. Optics,26 (23), 4919–4930.CrossRefGoogle Scholar
  10. Carpenter G A and Grossberg S, (1988), “The ART of adaptive pattern recognition by a self-organising neural network”, Computer, 77–88.Google Scholar
  11. Cichocki A and Unbahauen R, (1993), Neural Networks for Optimisation and Signal Processing, Chichester: Wiley.Google Scholar
  12. Elman J L, (1990), “Finding structure in time”, Cognitive Science, 14, 179–211.CrossRefGoogle Scholar
  13. Gerstner W and Kistler W M, (2002), Spiking Neuron Models: Single Neurons, Populations and Plasticity, Cambridge University Press, UK.Google Scholar
  14. Goldberg D, (1989), Genetic Algorithms in Search, Optimisation and Machine Learning, Reading, MA: Addison-Wesley.Google Scholar
  15. Hassoun M H, (1995), Fundamentals of Artificial Neural Networks, MIT Press, Cambridge, MA.MATHGoogle Scholar
  16. Haykin S, (1999), Neural Networks: A Comprehensive Foundation, 2nd Edition, Upper Saddle River, NJ: Prentice Hall.MATHGoogle Scholar
  17. Hecht-Nielsen R, (1990), Neurocomputing, Reading, MA: Addison-Wesley.Google Scholar
  18. Holland J H, (1975), Adaptation in Natural and Artificial Systems, Ann Arbor, MI: University of Michigan Press.Google Scholar
  19. Hopfield J J, (1982), “Neural networks and physical systems with emergent collective computational abilities”, Proc. National Academy of Sciences, 79, 2554–2558.CrossRefMathSciNetGoogle Scholar
  20. Iannella N and Back A D, (2001), Spiking neural network architecture for nonlinear function approximation, Neural Networks, Special Issue, 14(6), 922–931.Google Scholar
  21. Jordan M I, (1986), “Attractor dynamics and parallelism in a connectionist sequential machines”, Proc. 8th Annual Conf. of the Cognitive Science Society, 531–546.Google Scholar
  22. Karaboga D, (1994), Design of Fuzzy Logic Controllers Using Genetic Algorithms, PhD thesis, University of Wales, Cardiff, UK.Google Scholar
  23. Kohonen T, (1989), Self-Organising and Associative Memory (3rd ed.), Berlin: Springer-Verlag.Google Scholar
  24. Lannella N and Back A D, (2001), Spiking neural network architecture for nonlinear function approximation, Neural Networks, Special Issue, 14(16), 922-931Google Scholar
  25. Maass W, (1997), “Networks of spiking neurons: The third generation of neural network models”, Neural Networks, 10, 1659–1671.CrossRefGoogle Scholar
  26. Maass W and Bishop C M, (1998), Pulsed Neural Networks, Cambridge: MIT Press.MATHGoogle Scholar
  27. Moody J and Darken C J, (1989), “Fast learning in networks of locally-tuned processing units”, Neural Computation, 1 (2), 281–294.Google Scholar
  28. Natschläger T and Ruf B, (1998), “Spatial and temporal pattern analysis via spiking neurons”, Network: Computation in Neural systems, 9 (3), 319–332.MATHCrossRefGoogle Scholar
  29. Pham D T and Chan A J, (1998), “Control chart pattern recognition using a new type of self-organising neural network”, Proc. of the Institution of Mechanical Engineers, 212 (Part I), 115–127.Google Scholar
  30. Pham D T and Chan A J, (2001), “Unsupervised adaptive resonance theory neural networks for control chart pattern recognition”, Proc. of the Institution of Mechanical Engineers, 215 (Part B), 59–67.Google Scholar
  31. Pham D T and Karaboga D, (1993), “Dynamic system identification using recurrent neural networks and genetic algorithms”, Proc. 9th Int. Conf. on Mathematical and Computer Modelling, San Francisco.Google Scholar
  32. Pham D T and Liu X, (1992), “Dynamic system modelling using partially recurrent neural networks”, Journal of Systems Engineering, 2 (2), 90–97.Google Scholar
  33. Pham D T and Liu X, (1994), “Modelling and prediction using GMDH networks of Adalines with nonlinear preprocessors”, Int. J. Systems Science, 25 (11), 1743–1759.MATHGoogle Scholar
  34. Pham D T and Oh S J, (1992), “A recurrent backpropagation neural network for dynamic system identification”, Journal of Systems Engineering, 2 (4), 213–223.Google Scholar
  35. Pham D T and Oztemel E, (1994), “Control chart pattern recognition using learning vector quatization networks”, Int. J. Production Research, 32 (3), 721–729.MATHGoogle Scholar
  36. Rumelhart D and McClelland J, (1986), Parallel distributed processing: exploitations in the micro-structure of cognition, volumes 1 and 2, Cambridge: MIT Press.Google Scholar
  37. Widrow B and Hoff M E, (1960), “Adaptive switching circuits”, Proc. 1960 IRE WESCON Convention Record, Part 4, IRE, New York, 96–104.Google Scholar

Copyright information

© Springer 2007

Authors and Affiliations

  • D. T. Pham
    • 1
  • M. S. Packianather
    • 1
  • A. A. Afify
    • 1
  1. 1.Manufacturing Engineering CentreCardiff UniversityCardiff CF24 3AAUnited Kingdom

Personalised recommendations