Optimization of Neural Network Identification of a Non-Stationary Object Based On Spline Functions

identification non-stationary object spline function neural network optimization recognition forecasting

Authors

  • Jumanov Isroil Ibragimovich
    Ibragimovich@gmail.co
    Doctor of Technical Sciences, Professor, Department of Information Technologies, Samarkand State University, Samarkand, Uzbekistan
  • Djuraev Botir Abdusalyamovich Graduate student, Department of Information Technologies, Samarkand State University, Samarkand, Uzbekistan
February 16, 2022

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A technique for smoothing a dynamic process based on basis-spline functions and calculating information recovery coefficients has been developed, which helps to optimize the training of a neural network data processing system by reducing the errors of the training subset. Methods and algorithms for modeling the processes of smoothing, processing, and restoring data of non-stationary processes based on cubic spline functions are studied.

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