DOI QR코드

DOI QR Code

Neural-based Blind Modeling of Mini-mill ASC Crown

  • Lee, Gang-Hwa (School EECS, Yeungnam University) ;
  • Lee, Dong-Il (School EECS, Yeungnam University) ;
  • Lee, Seung-Joon (School EECS, Yeungnam University) ;
  • Lee, Suk-Gyu (School EECS, Yeungnam University) ;
  • Kim, Shin-Il (POSCO Technical Research Lab., Instrument and Control Research Group) ;
  • Park, Hae-Doo (POSCO Technical Research Lab., Instrument and Control Research Group) ;
  • Park, Seung-Gap (POSCO Technical Research Lab., Instrument and Control Research Group)
  • Published : 2002.12.01

Abstract

Neural network can be trained to approximate an arbitrary nonlinear function of multivariate data like the mini-mill crown values in Automatic Shape Control. The trained weights of neural network can evaluate or generalize the process data outside the training vectors. Sometimes, the blind modeling of the process data is necessary to compare with the scattered analytical model of mini-mill process in isolated electro-mechanical forms. To come up with a viable model, we propose the blind neural-based range-division domain-clustering piecewise-linear modeling scheme. The basic ideas are: 1) dividing the range of target data, 2) clustering the corresponding input space vectors, 3)training the neural network with clustered prototypes to smooth out the convergence and 4) solving the resulting matrix equations with a pseudo-inverse to alleviate the ill-conditioning problem. The simulation results support the effectiveness of the proposed scheme and it opens a new way to the data analysis technique. By the comparison with the statistical regression, it is evident that the proposed scheme obtains better modeling error uniformity and reduces the magnitudes of errors considerably. Approximatly 10-fold better performance results.

Keywords

References

  1. Neural Networks v.11 no.1 Universal Approximation Using Feedforward Neural Networks: A Survey of Some Existing Methods, and Some New Results F. Scarselli;A. C. Tsoi https://doi.org/10.1016/S0893-6080(97)00097-X
  2. Neural Networks for Pattern Recognition C. M. Bishop
  3. Personal communications POSCO Technical Research Lab.
  4. Computational Statistics Handbook with MATLAB W. L. Martinez;A. R. Martinez
  5. Journal of Approx. Theory v.70 Approximation by Ridge Functions and Neural Networks with One Hidden Layer C. K. Chui;X. Li https://doi.org/10.1016/0021-9045(92)90081-X
  6. Neural Networks v.10 no.8 Efficient Partition of Learning Data Sets for Neural Network Training I. V. Tetko;A. E. P. Villa https://doi.org/10.1016/S0893-6080(97)00005-1
  7. Computational Statistics & Data Analysis v.29 A Procedure for the detection of multivariate outliers A. S. Kosinski https://doi.org/10.1016/S0167-9473(98)00073-5
  8. Computational Statistics & Data Analysis v.32 Multivariate data analysis and modeling through classification and regression trees R. Siciliano;F. Mola https://doi.org/10.1016/S0167-9473(99)00082-1
  9. The 10th IEEE International Fuzzy Systems Conference v.2 Majority-Voting FCM Algorithm in the Vague Fuzzy Classification GangHwa Lee;YoonChul Lee;SoonHak Kwon;SukGyu Lee
  10. IEEE Trans. PAMI v.13 no.8 A Validity Measure for Fuzzy Clustering X. L. Xie;G. Beni https://doi.org/10.1109/34.85677