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Optimum design of ship design system using neural network method in initial design of hull plate

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Abstract

Manufacturing of complex surface plates in stern and stem is a major factor in cost of a preliminary ship design by computing process. If these hull plate parts are effectively classified, it helps to compute the processing cost and find the way to cut-down the processing cost. This paper presents a new method to classify surface plates effectively in the preliminary ship design using neural network. A neural-network-based ship hull plate classification program was developed and tested for the automatic classification of ship design. The input variables are regarded as Gaussian curvature distributions on the plate. Various applicable rules of network topology are applied in the ship design. In automation of hull plate classification, two different numbers of input variables are used. By observing the results of the proposed method, the effectiveness of the proposed method is discussed. As a result, high prediction rate was achieved in the ship design. Accordingly, to the initial design stage, the ship hull plate classification program can be used to predict the ship production cost. And the proposed method will contribute to reduce the production cost of ship.

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References

  • Choi, B. K., 1991, “Surface Modeling for CAD/CAM,” ELSEVIER, Amsterdam-Oxford- New York-Tokyo.

    Google Scholar 

  • Freeman, A. and Skapura, M., 1991, “Neural Networks (Algorithms, Applications, and Programming Techniques),”Addison-Wesley Publishing Company, Califonia.

  • Hwangbo, S. M. and Shin, H. J., 2000, “Statistical Prediction of Wake Fields on Propeller Plane by Neural Network using Back-Propagation,”Journal of Ship and Ocean Technology, Vol.4, No. 3, pp. 1–2.

    Google Scholar 

  • Kim, W. D., 1991, “Direct Fairing for Geometric Modeling of Hull Surface,”Journal of Ship and Ocean Technology, Vol. 28, No. 1, pp. 1–11.

    Google Scholar 

  • Laurene Fausett, 1994, “Fundamentals of Neural Networks : Architectures, Algorithms, and Applications,”Prentice-Hall, Inc..

  • Mamdani, E. H. and Assilian, S., 1975, “An Experiment in Linguistic Synthesis with a Fuzzy Logic Controller,”International Journal of Man-Machine Studies, Vol. 7, No. 1, pp. 1–13.

    Article  Google Scholar 

  • Marenn, A. J. Jones, D. and Franklin, S., 1990, “Configuring and Optimizing the Back-Propagation Network : Handbook of Neural Computing Applications,” Academic Press.

  • Rogers, D. F. and Adams, J. A., 1990, “Mathematical Elements for Computer Graphics,”McGraw-Hill Publishing Company, International Edition.

  • Rosenblatt, F., 1958, “The Perceptron: A Probabilistic Model for Information Storage and Organization in the Brain,”Psychological Review, Vol. 65, pp. 386–408.

    Article  Google Scholar 

  • Shar, S. and Palmieri, F., 1990, “MEKA-a Fast, Local Algorithm for Training Feed Forward Neural Networks,” In Proc. of International Joint Conference on Neural Networks, pages III 41–46.

  • Stuart Russell, Peter Norvig, 1995, “Artificial Intelligence — A Modern Approach,” Prentice Hall, Inc..

  • Valluru, B. Rao and Hayagriva, V. Rao, 1993, “C + + Neural Networks and Fuzzy Logic,”Management Information Source, Inc., pp. 103–147.

  • Ye, X., 1994, “Construction and Verification of Smooth Free-Form Surfaces Generated by Compatible Interpolation of Arbitrary Meshes,” The Technical University of Berlin.

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Correspondence to Byung-Young Moon.

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Kim, SY., Moon, BY. & Kim, DE. Optimum design of ship design system using neural network method in initial design of hull plate. KSME International Journal 18, 1923–1931 (2004). https://doi.org/10.1007/BF02990434

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  • DOI: https://doi.org/10.1007/BF02990434

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