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Artificial neural networks for shape modeling of sea bottom

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Artificial neural networks are applied for approximation and interpolation of function with multiple variables. Because of concurrent processing of data by neurons, fhis approach can be seen as promising alternate for standard algorithms. From these reasons, the analysis of capabilities for some models of neural networks has been carried out in the purpose for modeling the shape of sea bottom. The feed-forward multi-layer networks with different transfer functions have been tested. These networks have been trained by backpropagation algorithm and its versions with some improvements. Moreover, the gradient optimization technique by Levenberg-Marquardt has been applied. Finally, for determination of the depth in a point of the water area the two-layer network with the hidden layer of the radial neurons has been proposed.
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1--8
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Bibliogr. 12 poz., rys.
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Bibliografia
  • [1] J.Balicki, Z.Kitowski, A.Stateczny, Neural techniques for linear multiobjective optimization problems with continuous variables, Proceedings of the Third Conference „Neural Networks and Their Applications”, Kule, 1997, pp. 505-510.
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  • [5] H. Demuth, M. Beale, Matlab Neural Network Toolbox. User’s Guide, The MathWorks, Inc., 2003.
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  • [7] J. Hertz, A. Krogh, R. Palmer, Introduction to the Theory of Neural Computation, Massachusetts: Addison-Wesley Publishing Company, Inc. Reading, 1991.
  • [8] T. Kujanpää, J. Roos, Efficient Initialization of Artificial Neural Network Weights for Electrical Component Models, Book of Abstracts of SCEE 2006, Sinaia, Romania, 2006, pp. 47-48.
  • [9] M. Mokhari, Classification by the Random Neural Network, Tenth International Conference on Mathematical and Computer Modelling and Scientific Computing, Boston, USA, 1995.
  • [10] S. Priddy, P. E. Keller, Artificial Neural Networks: An Introduction, SPIE Press, New York 2005.
  • [11] A.J.C. Sharkey, G.O. Chandroth, N.E. Sharkey, Acoustic Emisssion, Cylinder Pressure and Vibration: A Multisensor Approach to Robust Fault Diagnosis. In Proceedings of IJCNN2000, Como, Italy, 2000.
  • [12] L. M. Silva, L. A. Alexandre, J. Marques de Sá, New developments of the z-edm algorithm, In 6th International Conference on Intelligent Systems Design and Applications (ISDA'06), volume 1, pages 1067-1072, Jinan, China, October 2006
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bwmeta1.element.baztech-article-BWM8-0037-0001
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