Curve Fitting for Coarse Data Using Artificial Neural Network

نویسندگان

  • C. Balasubramanyam
  • M. S. Ajay
  • K. R. Spandana
چکیده

This paper demonstrates the capability of curve fitting using Artificial Neural Network (ANN), not only for a moderate set of input data but also for a coarse set of input. When appropriate number of neurons is chosen for the training purpose, accurate graphs can be obtained, despite having a coarse data. The effect of number of neurons used for curve fitting and the accuracy obtained is also studied. This aspect of ANN has been illustrated through 2 examples, Weibull distribution and another complex sinusoidal system. This curve fitting technique has been applied to a real world problem i.e. mechanism of a deep drawing press, for both slider displacement and slider velocity. Key–Words: curve fitting, ANN, accurate, coarse data, best fit, neurons

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تاریخ انتشار 2014